US20210383290A1 - Methods and systems for recommending agricultural activities - Google Patents
Methods and systems for recommending agricultural activities Download PDFInfo
- Publication number
- US20210383290A1 US20210383290A1 US17/409,615 US202117409615A US2021383290A1 US 20210383290 A1 US20210383290 A1 US 20210383290A1 US 202117409615 A US202117409615 A US 202117409615A US 2021383290 A1 US2021383290 A1 US 2021383290A1
- Authority
- US
- United States
- Prior art keywords
- data
- field
- agricultural
- seed
- computer system
- Prior art date
- Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
- Abandoned
Links
- 230000000694 effects Effects 0.000 title claims abstract description 122
- 238000000034 method Methods 0.000 title claims abstract description 80
- 238000004891 communication Methods 0.000 claims abstract description 17
- 239000002689 soil Substances 0.000 claims description 124
- 241000607479 Yersinia pestis Species 0.000 claims description 104
- 238000001556 precipitation Methods 0.000 claims description 96
- 230000007613 environmental effect Effects 0.000 claims description 71
- 201000010099 disease Diseases 0.000 claims description 69
- 208000037265 diseases, disorders, signs and symptoms Diseases 0.000 claims description 69
- 239000000575 pesticide Substances 0.000 claims description 64
- XLYOFNOQVPJJNP-UHFFFAOYSA-N water Substances O XLYOFNOQVPJJNP-UHFFFAOYSA-N 0.000 claims description 32
- 238000003860 storage Methods 0.000 claims description 30
- 208000035240 Disease Resistance Diseases 0.000 claims description 18
- 238000012502 risk assessment Methods 0.000 claims description 11
- 239000007921 spray Substances 0.000 claims description 8
- 239000003090 pesticide formulation Substances 0.000 claims description 5
- IJGRMHOSHXDMSA-UHFFFAOYSA-N Atomic nitrogen Chemical compound N#N IJGRMHOSHXDMSA-UHFFFAOYSA-N 0.000 description 240
- 229910052757 nitrogen Inorganic materials 0.000 description 120
- 238000003306 harvesting Methods 0.000 description 77
- 230000036541 health Effects 0.000 description 70
- 230000012010 growth Effects 0.000 description 55
- 230000008569 process Effects 0.000 description 29
- 240000008042 Zea mays Species 0.000 description 23
- 235000005824 Zea mays ssp. parviglumis Nutrition 0.000 description 23
- 235000002017 Zea mays subsp mays Nutrition 0.000 description 23
- 235000005822 corn Nutrition 0.000 description 23
- 238000007726 management method Methods 0.000 description 23
- 230000004044 response Effects 0.000 description 22
- 238000004458 analytical method Methods 0.000 description 20
- 238000003973 irrigation Methods 0.000 description 18
- 230000002262 irrigation Effects 0.000 description 18
- 238000004088 simulation Methods 0.000 description 17
- 241000196324 Embryophyta Species 0.000 description 15
- 238000009313 farming Methods 0.000 description 15
- 239000002028 Biomass Substances 0.000 description 12
- JEIPFZHSYJVQDO-UHFFFAOYSA-N iron(III) oxide Inorganic materials O=[Fe]O[Fe]=O JEIPFZHSYJVQDO-UHFFFAOYSA-N 0.000 description 12
- 230000035945 sensitivity Effects 0.000 description 12
- 239000000203 mixture Substances 0.000 description 11
- 239000005416 organic matter Substances 0.000 description 11
- 230000000875 corresponding effect Effects 0.000 description 10
- 230000000977 initiatory effect Effects 0.000 description 9
- 238000012545 processing Methods 0.000 description 9
- 238000003971 tillage Methods 0.000 description 9
- 238000005341 cation exchange Methods 0.000 description 8
- 230000000052 comparative effect Effects 0.000 description 8
- 238000010586 diagram Methods 0.000 description 8
- 230000005855 radiation Effects 0.000 description 8
- 230000000153 supplemental effect Effects 0.000 description 8
- 230000008901 benefit Effects 0.000 description 7
- 238000004519 manufacturing process Methods 0.000 description 7
- 238000012544 monitoring process Methods 0.000 description 7
- -1 pH levels) Substances 0.000 description 7
- UHPMCKVQTMMPCG-UHFFFAOYSA-N 5,8-dihydroxy-2-methoxy-6-methyl-7-(2-oxopropyl)naphthalene-1,4-dione Chemical compound CC1=C(CC(C)=O)C(O)=C2C(=O)C(OC)=CC(=O)C2=C1O UHPMCKVQTMMPCG-UHFFFAOYSA-N 0.000 description 6
- 241000935926 Diplodia Species 0.000 description 6
- 241000223218 Fusarium Species 0.000 description 6
- 241000700605 Viruses Species 0.000 description 6
- 238000004364 calculation method Methods 0.000 description 6
- 231100000518 lethal Toxicity 0.000 description 6
- 230000001665 lethal effect Effects 0.000 description 6
- 238000005259 measurement Methods 0.000 description 6
- 230000017074 necrotic cell death Effects 0.000 description 6
- 239000004016 soil organic matter Substances 0.000 description 6
- 238000005507 spraying Methods 0.000 description 6
- 230000009471 action Effects 0.000 description 5
- 230000000855 fungicidal effect Effects 0.000 description 5
- 239000000417 fungicide Substances 0.000 description 5
- 230000001850 reproductive effect Effects 0.000 description 5
- 238000004856 soil analysis Methods 0.000 description 5
- 206010017886 Gastroduodenal ulcer Diseases 0.000 description 4
- 229940100389 Sulfonylurea Drugs 0.000 description 4
- 230000009418 agronomic effect Effects 0.000 description 4
- 238000004590 computer program Methods 0.000 description 4
- 238000011161 development Methods 0.000 description 4
- 230000018109 developmental process Effects 0.000 description 4
- 230000024346 drought recovery Effects 0.000 description 4
- 239000003630 growth substance Substances 0.000 description 4
- 239000010903 husk Substances 0.000 description 4
- 230000008595 infiltration Effects 0.000 description 4
- 238000001764 infiltration Methods 0.000 description 4
- 239000003112 inhibitor Substances 0.000 description 4
- 238000002386 leaching Methods 0.000 description 4
- 239000000049 pigment Substances 0.000 description 4
- 238000002310 reflectometry Methods 0.000 description 4
- 238000011160 research Methods 0.000 description 4
- 238000012360 testing method Methods 0.000 description 4
- 230000017260 vegetative to reproductive phase transition of meristem Effects 0.000 description 4
- 230000005540 biological transmission Effects 0.000 description 3
- 230000007774 longterm Effects 0.000 description 3
- 238000013507 mapping Methods 0.000 description 3
- 230000010152 pollination Effects 0.000 description 3
- 238000012552 review Methods 0.000 description 3
- 230000003068 static effect Effects 0.000 description 3
- PAWQVTBBRAZDMG-UHFFFAOYSA-N 2-(3-bromo-2-fluorophenyl)acetic acid Chemical compound OC(=O)CC1=CC=CC(Br)=C1F PAWQVTBBRAZDMG-UHFFFAOYSA-N 0.000 description 2
- QGZKDVFQNNGYKY-UHFFFAOYSA-N Ammonia Chemical compound N QGZKDVFQNNGYKY-UHFFFAOYSA-N 0.000 description 2
- 241000952610 Aphis glycines Species 0.000 description 2
- 241001124201 Cerotoma trifurcata Species 0.000 description 2
- 241001147381 Helicoverpa armigera Species 0.000 description 2
- 241001477931 Mythimna unipuncta Species 0.000 description 2
- 241001147398 Ostrinia nubilalis Species 0.000 description 2
- 241000254101 Popillia japonica Species 0.000 description 2
- 241000098281 Scirpophaga innotata Species 0.000 description 2
- 241001454293 Tetranychus urticae Species 0.000 description 2
- XSQUKJJJFZCRTK-UHFFFAOYSA-N Urea Chemical compound NC(N)=O XSQUKJJJFZCRTK-UHFFFAOYSA-N 0.000 description 2
- YMHVBCADCUZNKP-UHFFFAOYSA-M [NH4+].[Ca+].[O-]S([O-])(=O)=O Chemical compound [NH4+].[Ca+].[O-]S([O-])(=O)=O YMHVBCADCUZNKP-UHFFFAOYSA-M 0.000 description 2
- 230000004931 aggregating effect Effects 0.000 description 2
- BFNBIHQBYMNNAN-UHFFFAOYSA-N ammonium sulfate Chemical compound N.N.OS(O)(=O)=O BFNBIHQBYMNNAN-UHFFFAOYSA-N 0.000 description 2
- 229910052921 ammonium sulfate Inorganic materials 0.000 description 2
- 235000011130 ammonium sulphate Nutrition 0.000 description 2
- 239000001166 ammonium sulphate Substances 0.000 description 2
- 238000013459 approach Methods 0.000 description 2
- CSGLCWIAEFNDIL-UHFFFAOYSA-O azanium;urea;nitrate Chemical compound [NH4+].NC(N)=O.[O-][N+]([O-])=O CSGLCWIAEFNDIL-UHFFFAOYSA-O 0.000 description 2
- 238000009529 body temperature measurement Methods 0.000 description 2
- 238000004422 calculation algorithm Methods 0.000 description 2
- 239000004202 carbamide Substances 0.000 description 2
- 230000002596 correlated effect Effects 0.000 description 2
- 238000005516 engineering process Methods 0.000 description 2
- 210000003608 fece Anatomy 0.000 description 2
- 230000004720 fertilization Effects 0.000 description 2
- 239000003337 fertilizer Substances 0.000 description 2
- 238000009472 formulation Methods 0.000 description 2
- 239000000446 fuel Substances 0.000 description 2
- 230000006870 function Effects 0.000 description 2
- 238000011835 investigation Methods 0.000 description 2
- 230000001418 larval effect Effects 0.000 description 2
- 239000010871 livestock manure Substances 0.000 description 2
- 230000009467 reduction Effects 0.000 description 2
- 230000001932 seasonal effect Effects 0.000 description 2
- 239000003381 stabilizer Substances 0.000 description 2
- 239000000126 substance Substances 0.000 description 2
- 238000001429 visible spectrum Methods 0.000 description 2
- 240000005020 Acaciella glauca Species 0.000 description 1
- 238000009825 accumulation Methods 0.000 description 1
- 238000012271 agricultural production Methods 0.000 description 1
- 230000001413 cellular effect Effects 0.000 description 1
- 238000003967 crop rotation Methods 0.000 description 1
- 238000007405 data analysis Methods 0.000 description 1
- 239000002837 defoliant Substances 0.000 description 1
- 239000002274 desiccant Substances 0.000 description 1
- 238000001514 detection method Methods 0.000 description 1
- 230000007717 exclusion Effects 0.000 description 1
- 239000012530 fluid Substances 0.000 description 1
- 230000008014 freezing Effects 0.000 description 1
- 238000007710 freezing Methods 0.000 description 1
- 239000011521 glass Substances 0.000 description 1
- 230000002363 herbicidal effect Effects 0.000 description 1
- 239000004009 herbicide Substances 0.000 description 1
- 230000003993 interaction Effects 0.000 description 1
- 239000004973 liquid crystal related substance Substances 0.000 description 1
- 230000007246 mechanism Effects 0.000 description 1
- 239000008267 milk Substances 0.000 description 1
- 210000004080 milk Anatomy 0.000 description 1
- 235000013336 milk Nutrition 0.000 description 1
- 238000010295 mobile communication Methods 0.000 description 1
- 230000001902 propagating effect Effects 0.000 description 1
- 235000003499 redwood Nutrition 0.000 description 1
- 238000005067 remediation Methods 0.000 description 1
- 239000007787 solid Substances 0.000 description 1
- 230000026676 system process Effects 0.000 description 1
- 238000012876 topography Methods 0.000 description 1
- 238000013518 transcription Methods 0.000 description 1
- 230000035897 transcription Effects 0.000 description 1
- 230000009105 vegetative growth Effects 0.000 description 1
Images
Classifications
-
- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06Q—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
- G06Q10/00—Administration; Management
- G06Q10/06—Resources, workflows, human or project management; Enterprise or organisation planning; Enterprise or organisation modelling
- G06Q10/063—Operations research, analysis or management
- G06Q10/0633—Workflow analysis
-
- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06Q—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
- G06Q10/00—Administration; Management
- G06Q10/04—Forecasting or optimisation specially adapted for administrative or management purposes, e.g. linear programming or "cutting stock problem"
-
- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06Q—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
- G06Q10/00—Administration; Management
- G06Q10/06—Resources, workflows, human or project management; Enterprise or organisation planning; Enterprise or organisation modelling
-
- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06Q—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
- G06Q50/00—Information and communication technology [ICT] specially adapted for implementation of business processes of specific business sectors, e.g. utilities or tourism
- G06Q50/02—Agriculture; Fishing; Forestry; Mining
-
- A—HUMAN NECESSITIES
- A01—AGRICULTURE; FORESTRY; ANIMAL HUSBANDRY; HUNTING; TRAPPING; FISHING
- A01B—SOIL WORKING IN AGRICULTURE OR FORESTRY; PARTS, DETAILS, OR ACCESSORIES OF AGRICULTURAL MACHINES OR IMPLEMENTS, IN GENERAL
- A01B79/00—Methods for working soil
- A01B79/005—Precision agriculture
Definitions
- the embodiments described herein relate generally to agricultural activities and, more particularly, systems and methods for managing and recommending agricultural activities at the field level based on crop-related data and field-condition data.
- Agricultural production requires significant strategy and analysis.
- agricultural growers e.g., farmers or others involved in agricultural cultivation
- growers are required to analyze a variety of data to make strategic decisions months in advance of the period of crop cultivation (i.e., growing season).
- growers must consider at least some of the following decision constraints: fuel and resource costs, historical and projected weather trends, soil conditions, projected risks posed by pests, disease and weather events, and projected market values of agricultural commodities (i.e., crops). Analyzing these decision constraints may help a grower to predict key agricultural outcomes including crop yield, energy usage, cost and resource utilization, and farm profitability.
- Such analysis may inform a grower's strategic decisions of determining crop cultivation types, methods, and timing.
- growers often must regularly make decisions during the growing season. Such decisions may include adjusting when to harvest, providing supplemental fertilizer, and how to mitigate risks posed by pests, disease, and weather. As a result, growers must continually monitor various aspects of their crops during the growing season including weather, soil, and crop conditions. Accurately monitoring all such aspects at a granular level is difficult and time consuming. Accordingly, methods and systems for analyzing crop-related data and providing field condition data and strategic recommendations for maximizing crop yield are desirable.
- a computer-implemented method for recommending agricultural activities is provided.
- the method is implemented by an agricultural intelligence computer system in communication with memory.
- the method includes receiving a plurality of field definition data, retrieving a plurality of input data from a plurality of data networks, determining a field region based on the field definition data, identifying a subset of the plurality of input data associated with the field region, determining a plurality of field condition data based on the subset of the plurality of input data, identifying a plurality of field activity options, determining a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data, and providing a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores.
- a networked agricultural intelligence system for recommending agricultural activities.
- the networked agricultural intelligence system includes a user device, a plurality of data networks computer systems, an agricultural intelligence computer system comprising a processor and a memory in communication with the processor.
- the processor is configured to receive a plurality of field definition data from the user device, retrieve a plurality of input data from a plurality of data networks, determine a field region based on the field definition data, identify a subset of the plurality of input data associated with the field region, determine a plurality of field condition data based on the subset of the plurality of input data, identify a plurality of field activity options, determine a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data, and provide a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores.
- computer-readable storage media for recommending agricultural activities.
- the computer-readable storage media has computer-executable instructions embodied thereon. When executed by at least one processor, the computer-executable instructions cause a processor to receive a plurality of field definition data from the user device, retrieve a plurality of input data from a plurality of data networks, determine a field region based on the field definition data, identify a subset of the plurality of input data associated with the field region, determine a plurality of field condition data based on the subset of the plurality of input data, identify a plurality of field activity options, determine a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data, and provide a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores.
- FIG. 1 is a diagram depicting an example agricultural environment including a plurality of fields that are monitored and managed with an agricultural intelligence computer system that is used to manage and recommend agricultural activities;
- FIG. 2 is a block diagram of a user computing device, used for managing and recommending agricultural activities, as shown in the agricultural environment of FIG. 1 ;
- FIG. 3 is a block diagram of a computing device, used for managing and recommending agricultural activities, as shown in the agricultural environment of FIG. 1 ;
- FIG. 4 is an example data flowchart of managing and recommending agricultural activities using the computing devices of FIGS. 1, 2, and 3 in the agricultural environment shown in FIG. 1 ;
- FIG. 5 is an example method for managing agricultural activities in the agricultural environment of FIG. 1 ;
- FIG. 6 is an example method for recommending agricultural activities in the agricultural environment of FIG. 1 ;
- FIG. 7 is a diagram of an example computing device used in the agricultural environment of FIG. 1 to recommend and manage agricultural activities.
- FIGS. 8-30 are example illustrations of information provided by the agricultural intelligence computer system of FIG. 3 to the user device of FIG. 2 to facilitate the management and recommendation of agricultural activities.
- a first embodiment of the methods and systems described herein includes (i) receiving a plurality of field definition data, (ii) retrieving a plurality of input data from a plurality of data networks, (iii) determining a field region based on the field definition data, (iv) identifying a subset of the plurality of input data associated with the field region, (v) determining a plurality of field condition data based on the subset of the plurality of input data, and (vi) providing the plurality of field condition data to the user device.
- a second embodiment of the methods and systems described herein includes (i) receiving a plurality of field definition data, (ii) retrieving a plurality of input data from a plurality of data networks, (iii) determining a field region based on the field definition data, (iv) identifying a subset of the plurality of input data associated with the field region, (v) determining a plurality of field condition data based on the subset of the plurality of input data, (vi) identifying a plurality of field activity options, (vii) determining a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data, and (viii) providing a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores.
- agricultural growers employ significant strategy and analysis to make decisions on agricultural cultivation.
- growers analyze a variety of data to make strategic decisions months in advance of the period of crop cultivation (i.e., growing season).
- growers must consider at least some of the following decision constraints: fuel and resource costs, historical and projected weather trends, soil conditions, projected risks posed by pests, disease and weather events, and projected market values of agricultural commodities (i.e., crops). Analyzing these decision constraints may help a grower to predict key agricultural outcomes including crop yield, energy usage, cost and resource utilization, and farm profitability.
- Such analysis may inform a grower's strategic decisions of determining crop cultivation types, methods, and timing.
- growers often must regularly make decisions during growing season. Such decisions may include adjusting when to harvest, providing supplemental fertilizer, and how to mitigate risks posed by pests, disease and weather. As a result, growers must continually monitor various aspects of their crops during the growing season including weather, soil, and crop conditions. Accurately monitoring all such aspects at a granular level is difficult and time consuming. Accordingly, methods and systems for analyzing crop-related data, and providing field condition data and strategic recommendations for maximizing crop yield are desirable. Accordingly, the systems and methods described herein facilitate the management and recommendation of agricultural activities to growers.
- the term “agricultural intelligence services” refers to a plurality of data providers used to aid a user (e.g., a farmer, agronomist or consultant) in managing agricultural services and to provide the user with recommendations of agricultural services.
- agricultural intelligence service “data network”, “data service”, “data provider”, and “data source” are used interchangeably herein unless otherwise specified.
- the agricultural intelligence service may be an external data network (e.g., a third-party system).
- data provided by any such “agricultural intelligence services” or “data networks” may be referred to as “input data”, or “source data.”
- the term “agricultural intelligence computer system” refers to a computer system configured to carry out the methods described herein.
- the agricultural intelligence computer system is in networked connectivity with a “user device” (e.g., desktop computer, laptop computer, smartphone, personal digital assistant, tablet or other computing device) and a plurality of data sources.
- the agricultural intelligence computer system provides the agricultural intelligence services using a cloud based software as a service (SaaS) model. Therefore, the agricultural intelligence computer system may be implemented using a variety of distinct computing devices.
- the user device may interact with the agricultural intelligence computer system using any suitable network.
- an agricultural machine e.g., combine, tractor, cultivator, plow, subsoiler, sprayer or other machinery used on a farm to help with farming
- a computing device (“agricultural machine computing device”) that interacts with the agricultural intelligence computer system in a similar manner as the user device.
- the agricultural machine computing device could be a planter monitor, planter controller or a yield monitor.
- the agricultural machine and agricultural machine computing device may provide the agricultural intelligence computer system with field definition data and field-specific data.
- field definition data refers to field identifiers, geographic identifiers, boundary identifiers, crop identifiers, and any other suitable data that may be used to identify farmland, such as a common land unit (CLU), lot and block number, a parcel number, geographic coordinates and boundaries, Farm Serial Number (FSN), farm number, tract number, field number, section, township, and/or range.
- CLU common land unit
- FSN Farm Serial Number
- a CLU is the smallest unit of land that has a permanent, contiguous boundary, a common land cover and land management, a common owner and a common producer in agricultural land associated with USDA farm programs.
- CLU boundaries are delineated from relatively permanent features such as fence lines, roads, and/or waterways.
- the USDA Farm Service Agency maintains a Geographic Information Systems (GIS) database containing CLUs for farms in the United States.
- GIS Geographic Information Systems
- the user may be prompted via one or more user interfaces on the user device (served by the agricultural intelligence computer system) to input such information.
- the user may identify field definition data by accessing a map on the user device (served by the agricultural intelligence computer system) and selecting specific CLUs that have been graphically shown on the map.
- the user may identify field definition data by accessing a map on the user device (served by the agricultural intelligence computer system) and drawing boundaries of the field over the map.
- Such CLU selection or map drawings represent geographic identifiers.
- the user may identify field definition data by accessing field definition data (provided as shape files or in a similar format) from the U.S. Department of Agriculture Farm Service Agency or other source via the user device and providing such field definition data to the agricultural intelligence computer system.
- the land identified by “field definition data” may be referred to as a “field” or “land tract.”
- the land farmed, or “land tract” is contained in a region that may be referred to as a “field region.”
- Such a “field region” may be coextensive with, for example, temperature grids or precipitation grids, as used and defined below.
- field-specific data refers to (a) field data (e.g., field name, soil type, acreage, tilling status, irrigation status), (b) harvest data (e.g., crop type, crop variety, crop rotation, whether the crop is grown organically, harvest date, Actual Production History (APH), expected yield, yield, crop price, crop revenue, grain moisture, tillage practice, weather information (e.g., temperature, rainfall) to the extent maintained or accessible by the user, previous growing season information), (c) soil composition (e.g., pH, organic matter (OM), cation exchange capacity (CEC)), (d) planting data (e.g., planting date, seed(s) type, relative maturity (RM) of planted seed(s), seed population), (e) nitrogen data (e.g., application date, amount, source), ( 0 pesticide data (e.g., pesticide, herbicide, fungicide, other substance or mixture of substances intended for use as a plant regulator, defoliant, or desiccant), (g) irrigation data
- field-specific data is not provided via one or more agricultural machines or agricultural machine devices that interact with the agricultural intelligence computer system in a similar manner as the user device, a user may provide such data via the user device to the agricultural intelligence computer system. In other words, the user accesses the agricultural intelligence computer system via the user device and provides the field-specific data.
- the agricultural intelligence computer system also utilizes environmental data to provide agricultural intelligence services.
- environmental data refers to environmental information related to farming activities such as weather information, vegetation and crop growth information, seed information, pest and disease information and soil information.
- Environmental data may be obtained from external data sources accessible by the agricultural intelligence computer system.
- Environmental data may also be obtained from internal data sources integrated within the agricultural intelligence computer system.
- Data sources for environmental data may include weather radar sources, satellite-based precipitation sources, meteorological data sources (e.g., weather stations), satellite imagery sources, aerial imagery sources (e.g., airplanes, unmanned aerial vehicles), terrestrial imagery sources (e.g., agricultural machine, unmanned terrestrial vehicle), soil sources and databases, seed databases, crop phenology sources and databases, and pest and disease reporting and prediction sources and databases.
- a soil database may relate soil types and soil locations to soil data including pH levels, organic matter makeups, and cation exchange capacities.
- the user may access data from data sources indirectly via the agricultural intelligence computer system, in other examples, the user may directly access the data sources via any suitable network connection.
- the agricultural intelligence computer system processes the plurality of field definition data, field-specific data and environmental data from a plurality of data sources to provide a user with the plurality of field condition data for the field or field region identified by the field definition data.
- field condition data refers to characteristics and conditions of a field that may be used by the agricultural intelligence computer system to manage and recommend agricultural activities. Field condition data may include, for example, and without limitation, field weather conditions, field workability conditions, growth stage conditions, soil moisture and precipitation conditions. Field condition data is presented to the user using the user device.
- the agricultural intelligence computer system also provides a user with a plurality of agricultural intelligence services for the land tract or field region identified by the field definition data.
- Such agricultural intelligence services may be used to recommend courses of action for the user to undertake.
- the recommendation services include a planting advisor, a nitrogen application advisor, a pest advisor, a field health advisor, a harvest advisor, and a revenue advisor. Each is discussed herein.
- the agricultural intelligence computer system may be implemented using a variety of distinct computing devices using any suitable network.
- the agricultural intelligence computer system uses a client-server architecture configured for exchanging data over a network (e.g., the Internet).
- a network e.g., the Internet.
- One or more user devices may communicate via a network with a user application or an application platform.
- the application platform represents an application available on user devices that may be used to communicate with the agricultural intelligence computer system.
- Other example embodiments may include other network architectures, such as a peer-to-peer or distributed network environment.
- the application platform may provide server-side functionality, via the network to one or more user devices. Accordingly, the application platform may include client side software stored locally at the user device as well as server side software stored at the agricultural intelligence computer system.
- the user device may access the application platform via a web client or a programmatic client.
- the user device may transmit data to, and receive data from, one or more front-end servers.
- the data may take the form of requests and user information input, such as field-specific data, into the user device.
- One or more front-end servers may process the user device requests and user information and determine whether the requests are service requests or content requests, among other things.
- Content requests may be transmitted to one or more content management servers for processing.
- Application requests may be transmitted to one or more application servers.
- application requests may take the form of a request to provide field condition data and/or agricultural intelligence services for one or more fields.
- the application platform may include one or more servers in communication with each other.
- the agricultural intelligence computer system may include front-end servers, application servers, content management servers, account servers, modeling servers, environmental data servers, and corresponding databases.
- environmental data may be obtained from external data sources accessible by the agricultural intelligence computer system or it may be obtained from internal data sources integrated within the agricultural intelligence computer system.
- external data sources may include third-party hosted servers that provide services to the agricultural intelligence computer system via Application Program Interface (API) requests and responses.
- API Application Program Interface
- the frequency at which the agricultural intelligence computer system may consume data published or made available by these third-party hosted servers may vary based on the type of data.
- a notification may be sent to the agricultural intelligence computer system when new data is available by a data source.
- the agricultural intelligence computer system may transmit an API call via the network to the agricultural intelligence computer system hosting the data and receive the new data in response to the call. To the extent needed, the agricultural intelligence computer system may process the data to enable components of the application platform to handle the data.
- processing data may involve extracting data from a stream or a data feed and mapping the data to a data structure, such as an XML data structure.
- Data received and/or processed by the agricultural intelligence computer system may be transmitted to the application platform and stored in an appropriate database.
- the one or more application servers communicate with the content management servers, account servers, modeling servers, environmental data servers, and corresponding databases.
- modeling servers may generate a predetermined number of simulations (e.g., 10 , 000 simulations) using, in part, field-specific data and environmental data for one or more fields identified based on field definition data and user information.
- the field-specific data and environmental data for one or more fields may be located in the content management servers, account servers, environmental data servers, the corresponding databases, and, in some instances, archived in the modeling servers and/or application servers.
- field condition data and/or agricultural intelligence services for one or more fields is provided to the application servers for transmission to the requesting user device via the network. More specifically, the user may use the user device to access a plurality of windows or displays showing field condition data and/or agricultural intelligence services, as described below.
- the agricultural intelligence computer system tracks field weather conditions for each field identified by the user.
- the agricultural intelligence computer system determines current weather conditions including field temperature, wind, humidity, and dew point.
- the agricultural intelligence computer system also determines forecasted weather conditions including field temperature, wind, humidity, and dew point for hourly projected intervals, daily projected intervals, or any interval specified by the user.
- the forecasted weather conditions are also used to forecast field precipitation, field workability, and field growth stage. Near-term forecasts are determined using a meteorological model (e.g., the Microcast model) while long-term projections are determined using historical analog simulations.
- the agricultural intelligence computer system uses grid temperatures to determine temperature values. Known research shows that using grid techniques provides more accurate temperature measurements than point-based temperature reporting. Temperature grids are typically square physical regions, typically 2.5 miles by 2.5 miles.
- the agricultural intelligence computer system associates the field with a temperature grid that contains the field.
- the agricultural intelligence computer system identifies a plurality of weather stations that are proximate to the temperature grid.
- the agricultural intelligence computer system receives temperature data from the plurality of weather stations.
- the temperatures reported by the plurality of weather stations are weighted based on their relative proximity to the grid such that more proximate weather stations have higher weights than less proximate weather stations. Further, the relative elevation of the temperature grid is compared to the elevation of the plurality of weather stations.
- Temperature values reported by the plurality of weather stations are adjusted in response to the relative difference in elevation.
- the temperature grid includes or is adjacent to a body of water. Bodies of water are known to cause a reduction in the temperature of an area. Accordingly, when a particular field is proximate to a body of water as compared to the weather station providing the temperature reading, the reported temperature for the field is adjusted downwards to account for the closer proximity to the body of water.
- Precipitation values are similarly determined using precipitation grids that utilize meteorological radar data. Precipitation grids have similar purposes and characteristics as temperature grids.
- the agricultural intelligence computer system uses available data sources such as the National Weather Service's NEXRAD Doppler radar data, rain gauge networks, and weather stations across the U.S. The agricultural intelligence computer system further validates and calibrates reported data with ground station and satellite data.
- the Doppler radar data is obtained for the precipitation grid.
- the Doppler radar data is used to determine an estimate of precipitation for the precipitation grid.
- the estimated precipitation is adjusted based on other data sources such as other weather radar sources, ground weather stations (e.g., rain gauges), satellite precipitation sources (e.g., the National Oceanic and Atmospheric Administration's Satellite Applications and Research), and meteorological sources.
- other weather radar sources e.g., ground weather stations (e.g., rain gauges), satellite precipitation sources (e.g., the National Oceanic and Atmospheric Administration's Satellite Applications and Research), and meteorological sources.
- ground weather stations e.g., rain gauges
- satellite precipitation sources e.g., the National Oceanic and Atmospheric Administration's Satellite Applications and Research
- meteorological sources e.g., meteorological sources.
- Current weather conditions and forecasted weather conditions are displayed on the user device graphically along with applicable information regarding the specific field, such as field name, crop, acreage, field precipitation, field workability, field growth stage, soil moisture, and any other field definition data or field-specific data that the user may specify.
- applicable information may be displayed on the user device in one or more combinations and level of detail as specified by the user.
- temperature can be displayed as high temperatures, average temperatures, and low temperatures over time. Temperature can be shown during a specific time and/or date range and/or harvest year and compared against prior times, years, including a 5 year average, a 15 year average, a 30 year average or as specified by the user.
- precipitation can be displayed as the amount of precipitation and/or accumulated precipitation over time. Precipitation can be shown during a specific time period and/or date range and/or harvest year and compared against prior times, years, including a 5 year average, a 15 year average, a 30 year average or as specified by the user. Precipitation can also be displayed as past and future radar data. In an example embodiment, past radar may be displayed over the last 1.5 hours or as specified by the user. Future radar may be displayed over the next 6 hours or as specified by the user. Radar may be displayed as an overlay of an aerial image map showing the user's one or more fields where the user has the ability to zoom in and out of the map.
- Radar can be displayed as static at intervals selected by the user or continuously over intervals selected by the user.
- the underlying radar data received and/or processed by the agricultural intelligence computer system may be in the form of Gridded Binary (GRIB) files that includes forecast reflectivity files, precipitation type, and precipitation-typed reflectivity values.
- GRIB Gridded Binary
- the agricultural intelligence computer system provides field workability conditions, which indicate the degree to which a field or section of a field (associated with the field definition data) may be worked for a given time of year using machinery or other implements.
- the agricultural intelligence computer system retrieves field historical precipitation data over a predetermined period of time, field predicted precipitation over a predetermined period of time, and field temperatures over a predetermined period of time. The retrieved data is used to determine one or more workability indexes.
- the workability index may be used to derive three values of workability for particular farm activities.
- the value of “Good” workability indicates high likelihood that field conditions are acceptable for use of machinery or a specified activity during an upcoming time interval.
- the value of “Check” workability indicates that field conditions may not be ideal for the use of machinery or a specified activity during an upcoming time interval.
- the value of “Stop” workability indicates that field conditions are not suitable for work or a specified activity during an upcoming time interval.
- Determined values of workability may vary depending upon the farm activity. For example, planting and tilling typically require a low level of muddiness and may require a higher workability index to achieve a value of “Good” than activities that allow for a higher level of muddiness.
- workability indices are distinctly calculated for each activity based on a distinct set of factors. For example, a workability index for planting may correlate to predicted temperature over the next 60 hours while a workability index for harvesting may be correlated to precipitation alone.
- user may be prompted at the user device to answer questions regarding field activities if such information has not already been provided to the agricultural intelligence computer system. For example, a user may be asked what field activities are currently in use.
- the agricultural intelligence computer system may adjust its calculations of the workability index because of the user's activities, thereby incorporating the feedback of the user into the calculation of the workability index.
- the agricultural intelligence computer system may adjust the recommendations made to the user for activities.
- the agricultural intelligence computer system may recommend that the user stop such activities based on the responses.
- the agricultural intelligence computer system provides field growth stage conditions (e.g., for corn, vegetative (VE-VT) and reproductive (R1-R6) growth stages) for the crops being grown in each listed field.
- Vegetative growth stages for corn typically are described as follows. The “VE” stage indicates emergence, the “V1” stage indicates a first fully expanded leaf with a leaf collar; the “V2” stage indicates a second fully expanded leaf with the leaf collar; the “V3” stage indicates a third fully expanded leaf with the leaf collar; any “V(n)” stage indicates an nth fully expanded leaf with the leaf collar; and the “VT” stage indicates that the tassel of the corn is fully emerged.
- R1 indicates a silking period in which pollination and fertilization processes take place
- the “R2” or blister stage indicates that the kernel of corn is visible and resembles a blister
- the “R3” or milk stage indicates that the kernel is yellow outside and contains milky white fluid
- the “R4” or dough stage indicates that the interior of the kernel has thickened to a dough-like consistency
- the “R5” or dent stage indicates that the kernels are indented at the top and beginning drydown
- the “R6” or physiological maturity stage indicates that kernels have reached maximum dry matter accumulation.
- Field growth stage conditions may be used to determine timing of key farming decisions.
- the agricultural intelligence computer system computes crop progression for each crop through stages of growth (agronomic stages) by tracking the impact of weather (both historical and forecasted) on the phenomenological development of the crop from planting through harvest.
- the agricultural intelligence computer system uses the planting date entered by the user device to determine field growth stage conditions.
- the user may enter the planting date into the user device, which communicates the planting date to the agricultural intelligence computer system.
- the agricultural intelligence computer system may estimate the planting date using a system algorithm.
- the planting date may be estimated based on agronomic stage data and planting practices in the region associated with the field definition data.
- the planting practices may be received from a data service such as a university data network that monitors typical planting techniques for a region.
- the agricultural intelligence computer system further uses data regarding the user's farming practices within the current season and for historical seasons, thereby facilitating historical analysis.
- the agricultural intelligence computer system is configured to use historical practices of each particular grower on a subject field or to alternately use historical practices for the corresponding region to predict the planting date of a crop when the actual planting date is not provided by the grower.
- the agricultural intelligence computer system determines a relative maturity value of the crops based on expected heat units over the growing season in light of the planting date, the user's farming practices, and field-specific data. As heat is a proxy for energy received by crops, the agricultural intelligence computer system calculates expected heat units for crops and determines a development of maturity of the crops. In the example embodiment, maximum temperatures and low temperatures are used to estimate heat units.
- the agricultural intelligence computer system determines and provides soil moisture data via a display showing a client application on the user device.
- Soil moisture indicates the percent of total water capacity available to the crop that is present in the soil of the field.
- Soil moisture values are initialized at the beginning of the growing season based on environmental data in the agricultural intelligence computer system at that time, such as data from the North American Land Data Assimilation System, and field-specific data.
- a soil analysis computing device may analyze soil samples from a plurality of fields for a grower wherein the plurality of fields includes a selected field. Once analyzed, the results may be directly provided from the soil analysis computing device to the agricultural intelligence computer system so that the soil analysis results may be provided to the grower. Further, data from the soil analysis may be inputted into the agricultural intelligence computer system for use in determining field condition data and agricultural intelligence services.
- Soil moisture values are then adjusted, at least daily, during the growing season by tracking moisture entering the soil via precipitation and moisture leaving the soil via evapotranspiration (ET).
- ET evapotranspiration
- a gross and net precipitation value is calculated.
- Gross precipitation indicates a total precipitation value.
- Net precipitation excludes a calculated amount of water that never enters the soil because it is lost as runoff.
- a runoff value is determined based on the precipitation amount over time and a curve determined by the USDA classification of soil type. The systems account for a user's specific field-specific data related to soil to determine runoff and the runoff curve for the specific field. Soil input data, described above, may alternately be provided via the soil analysis computing device.
- Lighter, sandier soils allow greater precipitation water infiltration and experience less runoff during heavy precipitation events than heavier, more compact soils. Heavier or denser soil types have lower precipitation infiltration rates and lose more precipitation to runoff on days with large precipitation events.
- Daily evapotranspiration associated with a user's specific field is calculated based on a version of the standard Penman-Monteith ET model.
- the total amount of water that is calculated as leaving the soil through evapotranspiration on a given day is based on the following:
- the agricultural intelligence computer system is additionally configured to provide alerts based on weather and field-related information.
- the user may define a plurality of thresholds for each of a plurality of alert categories. When field condition data indicates that the thresholds have been exceeded, the user device will receive alerts. Alerts may be provided via the application (e.g., notification upon login, push notification), email, text messages, or any other suitable method. Alerts may be defined for crop cultivation monitoring, for example, hail size, rainfall, overall precipitation, soil moisture, crop scouting, wind conditions, field image, pest reports or disease reports. Alternately, alerts may be provided for crop growth strategy. For example, alerts may be provided based on commodity prices, grain prices, workability indexes, growth stages, and crop moisture content.
- an alert may indicate a recommended course of action.
- the alert may recommend that field activities (e.g., planting, nitrogen application, pest and disease treatment, irrigation application, scouting, or harvesting) occur within a particular period of time.
- the agricultural intelligence computer system is also configured to receive information on farming activities from, for example, the user device, an agricultural machine and/or agricultural machine computing device, or any other source. Accordingly, alerts may also be provided based on logged farm activity such as planting, nitrogen application, spraying, irrigation, scouting, or harvesting. In some examples, alerts may be provided regardless of thresholds to indicate certain field conditions. In one example, a daily precipitation, growth stage, field image or temperature alert may be provided to the user device.
- the agricultural intelligence computer system is further configured to generate a plurality of reports based on field condition data. Such reports may be used by the user to improve strategy and decision-making in farming.
- the reports may include reports on crop growth stage, temperature, humidity, soil moisture, precipitation, workability, pest risk, and disease risk.
- the reports may also include one or more field definition data, environmental data, field-specific data, scouting and logging events, field condition data, summary of agricultural intelligence services or FSA Form 578.
- the agricultural intelligence computer system is also configured to receive supplemental information from the user device.
- a user may provide logging or scouting events regarding the fields associated with the field definition data.
- the user may access a logging application at the user device and update the agricultural intelligence computer system.
- the user accesses the agricultural intelligence computer system via a user device while being physically located in a field to enter field-specific data.
- the agricultural intelligence computer system might automatically display and transmit the date and time and field definition data associated with the field-specific data, such as geographic coordinates and boundaries.
- the user may provide general data for activities including field, location, date, time, crop, images, and notes.
- the user may also provide data specific to particular activities such as planting, nitrogen application, pesticide application, harvesting, scouting, and current weather observations.
- Such supplemental information may be associated with the other data networks and used by the user for analysis.
- the agricultural intelligence computer system is additionally configured to display scouting and logging events related to the receipt of field-specific data from the user via one or more agricultural machines or agricultural machine devices that interacts with the agricultural intelligence computer system or via the user device.
- Such information can be displayed as specified by the user.
- the information is displayed on a calendar on the user device, wherein the user can obtain further details regarding the information as necessary.
- the information is displayed in a table on the user device, wherein the user can select the specific categories of information that the user would like displayed.
- the agricultural intelligence computer system also includes (or is in data communication with) a plurality of modules configured to analyze field condition data and other data available to the agricultural intelligence computer system and to recommend certain agricultural actions (or activities) to be performed relative to the fields being analyzed in order to maximize yield and/or revenue for the particular fields.
- modules review field condition data and other data to recommend how to effectively enhance output and performance of the particular fields.
- the modules may be variously referred to as agricultural intelligence modules or, alternately as recommendation advisor components or agricultural intelligence services.
- such agricultural intelligence modules may include, but are not limited to a) planting advisor module, b) nitrogen application advisor module, c) pest advisor module, d) field health advisor module, e) harvest advisor module, and f) revenue advisor module.
- the agricultural intelligence computer system is additionally configured to provide agricultural intelligence services related to planting.
- a planting advisor module provides planting date recommendations. The recommendations are specific to the location of the field and adapt to the current field condition data, along with weather predicted to be experienced by the specific fields.
- the planting advisor module receives one or more of the following data points for each field identified by the user (as determined from field definition data) in order to determine and provide such planting date recommendations:
- a first set of data points is seed characteristic data.
- Seed characteristic data may include any relevant information related to seeds that are planted or will be planted.
- Seed characteristic data may include, for example, seed company data, seed cost data, seed population data, seed hybrid data, seed maturity level data, seed disease resistance data, and any other suitable seed data.
- Seed company data may refer to the manufacturer or provider of seeds.
- Seed cost data may refer to the price of seeds for a given quantity, weight, or volume of seeds.
- Seed population data may include the amount of seeds planted (or intended to be planted) or the density of seeds planted (or intended to be planted).
- Seed hybrid data may include any information related to the biological makeup of the seeds (i.e., which plants have been hybridized to form a given seed.)
- Seed maturity level data may include, for example, a relative maturity level of a given seed (e.g., a comparative relative maturity (“CRM”) value or a silk comparative relative maturity (“silk CRM”)), growing degree units (“GDUs”) until a given stage such as silking, mid-pollination, black layer, or flowering, and a relative maturity level of a given seed at physiological maturity (“Phy. CRM”).
- Disease resistance data may include any information related to the resistance of seeds to particular diseases.
- disease resistance data includes data related to the resistance to Gray Leaf Spot, Northern Leaf Blight, Anthracnose Stalk Rot, Goss's Wilt, Southern Corn Leaf Blight, Eyespot, Common Rust, Anthracnose Leaf Blight, Southern Rust, Southern Virus Complex, Stewart's Leaf Blight, Corn Lethal Necrosis, Headsmut, Diplodia Ear Rot, and Fusarium Crown Rot.
- seed data may include, for example, data related to, grain drydown, stalk strength, root strength, stress emergence, staygreen, drought tolerance, ear flex, test eight, plant height, ear height, mid-season brittle stalk, plant vigor, fungicide response, growth regulators sensitivity, pigment inhibitors, sensitivity, sulfonylureas sensitivity, harvest timing, kernel texture, emergence, harvest appearance, harvest population, seedling growth, cob color, and husk cover.
- a second set of data points is field-specific data related to soil composition.
- Such field-specific data may include measurements of the acidity or basicity of soil (e.g., pH levels), soil organic matter levels (“OM” levels), and cation exchange capacity levels (“CEC” levels).
- a third set of data points is field-specific data related to field data.
- field-specific data may include field names and identifiers, soil types or classifications, tilling status, irrigation status.
- a fourth set of data points is field-specific data related to historical harvest data.
- Such field-specific data may include crop type or classification, harvest date, actual production history (“APH”), yield, grain moisture, and tillage practice.
- users may be prompted at the user device to provide a fifth set of data points by answering questions regarding desired planting population (e.g., total crop volume and total crop density for a particular field) and/or seed cost, expected yield, and indication of risk preference (e.g., general or specific: user is willing to risk a specific number of bushels per acre to increase the chance of producing a specific larger number of bushels per acre) if such information has not already been provided to the agricultural intelligence computer system.
- desired planting population e.g., total crop volume and total crop density for a particular field
- seed cost expected yield
- indication of risk preference e.g., general or specific: user is willing to risk a specific number of bushels per acre to increase the chance of producing a specific larger number of bushels per acre
- the planting advisor module receives and processes the sets of data points to simulate possible yield potentials. Possible yield potentials are calculated for various planting dates.
- the planting advisor module additionally utilizes additional data to generate such simulations.
- the additional data may include simulated weather between the planting data and harvesting date, field workability, seasonal freeze risk, drought risk, heat risk, excess moisture risk, estimated soil temperature, and/or risk tolerance.
- the likely harvesting date may be estimated based upon the provided relative maturity (e.g., to generate an earliest recommended harvesting date) and may further be adjusted based upon predicted weather and workability. Risk tolerance may be calculated based for a high profit/high risk scenario, a low risk scenario, a balanced risk/profit scenario, and a user defined scenario.
- the planting advisor module generates such simulations for each planting date and displays a planting date recommendation for the user on the user device.
- the recommendation includes the recommended planting date, projected yield, relative maturity, and graphs the projected yield against planting date.
- the planting advisor module also graphs planting dates against the projected yield loss resulting from spring freeze risk, fall freeze risk, drought risk, heat risk, excess moisture risk, and estimated soil temperature.
- such graphs are generated based on the predicted temperatures and/or precipitation between each planting date and a likely or earliest recommended harvest date for the selected relative maturity.
- the planting advisor module provides the option of modeling and displaying alternative yield scenarios for planting data and projected yield by modifying one or more data points associated with seed characteristic data, field-specific data, desired planting population and/or seed cost, expected yield, and/or indication of risk preference.
- the alternative yield scenarios may be displayed and graphed on the user device along with the original recommendation.
- the planting advisor module recommends or excludes planting dates based on predicted workability. For example, dates at which a predicted planting-specific workability value is “Stop” may either be excluded or not recommended. In some examples, the planting advisor recommends or excludes planting dates based upon predicted weather events (e.g., temperature or precipitation). For example, planting dates may be recommended after which the likelihood of freezing is lower than associated threshold values.
- predicted workability For example, dates at which a predicted planting-specific workability value is “Stop” may either be excluded or not recommended.
- the planting advisor recommends or excludes planting dates based upon predicted weather events (e.g., temperature or precipitation). For example, planting dates may be recommended after which the likelihood of freezing is lower than associated threshold values.
- the planting advisor recommends seed characteristics or graphs estimated yield against planting date for various seed characteristics. For example, a graph of estimated yield against planting date may be generated for both the seed characteristic and a recommended seed characteristic.
- the recommended seed characteristic may be recommended based on any of the maximum yield at any planting date, the maximum average yield across a set of planting dates, or the earliest possible harvesting date (e.g., where a later harvesting date is not desired due to predicted weather, a relative maturity may be selected in order to enable a desired harvesting date).
- the agricultural intelligence computer system is additionally configured to provide agricultural intelligence services related to soil.
- the nitrogen application advisor module determines potential needs for nitrogen in the soil and recommends nitrogen application practices to a user. More specifically, the nitrogen application advisor module is configured to identify conditions when crop needs cannot be met by nitrogen present in the soil.
- a nitrogen application advisor module provides recommendations for side dressing or spraying, such as date and rate, specific to the location of the field and adapted to the current field condition data.
- the nitrogen application advisor module is configured to receive one or more of the following data points for each field identified by the user (as determined from field definition data):
- a first set of data points includes environmental information.
- Environmental information may include information related to weather, precipitation, meteorology, soil and crop phenology.
- a second set of data points includes field-specific data related to field data.
- field-specific data may include field names and identifiers, soil types or classifications, tilling status, irrigation status.
- a third set of data points includes field-specific data related to historical harvest data.
- field-specific data may include crop type or classification, harvest date, actual production history (“APH”), yield, grain moisture, and tillage practice.
- a fourth set of data points is field-specific data related to soil composition.
- Such field-specific data may include measurements of the acidity or basicity of soil (e.g., pH levels), soil organic matter levels (“OM” levels), and cation exchange capacity levels (“CEC” levels).
- a fifth set of data points is field-specific data related to planting data.
- Such field-specific data may include planting date, seed type or types, relative maturity (RM) levels of planted seed(s), and seed population.
- the planting data is transmitted from a planter monitor to the agricultural intelligence computer system 150 , e.g., via a cellular modem or other data communication device of the planter monitor.
- a sixth set of data points is field-specific data related to nitrogen data.
- Such field-specific data may include nitrogen application dates, nitrogen application amounts, and nitrogen application sources.
- a seventh set of data points is field-specific data related to irrigation data.
- Such field-specific data may include irrigation application dates, irrigation amounts, and irrigation sources.
- the nitrogen application advisor module determines a nitrogen application recommendation.
- the recommendation includes a list of fields with adequate nitrogen, a list of fields with inadequate nitrogen, and a recommended nitrogen application for the fields with inadequate nitrogen.
- users may be prompted at the user device to answer questions regarding nitrogen application (e.g., side-dressing, spraying) practices and costs, such as type of nitrogen (e.g., Anhydrous Ammonia, Urea, UAN (Urea Ammonium Nitrate) 28%, 30% or 32%, Ammonium Nitrate, Ammonium Sulphate, Calcium Ammonium Sulphate), nitrogen costs, latest growth stage of crop at which nitrogen can be applied, application equipment, labor costs, expected crop price, tillage practice (e.g., type (conventional, no till, reduced, strip) and amount of surface of the field that has been tilled), residue (the amount of surface of the field covered by residue), related farming practices (e.g., manure application, nitrogen stabilizers, cover crops) as well as prior crop data (e.g., crop type, harvest date, Actual Production History (APH), yield, tillage practice), current crop data (e.g., planting date, seed(s) type, relative maturity (RM) of planted seed(
- the agricultural intelligence computer system Using the environmental information, field-specific data, nitrogen application practices and costs, prior crop data, current crop data, and/or soil characteristics, the agricultural intelligence computer system identifies the available nitrogen in each field and simulates possible nitrogen application practices, dates, rates, and next date on which workability for a nitrogen application is “Green” taking into account predicted workability and nitrogen loss through leaching, denitrification and volatilization.
- the nitrogen application advisor module generates and displays on the user device a nitrogen application recommendation for the user.
- the recommendation includes:
- the user has the option of modeling (i.e., running a model) and displaying nitrogen lost (total and divided into losses resulting from volatilization, denitrification, and leaching) and crop use (“uptake”) of nitrogen over a specified time period (predefined or as defined by the user) for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- the user has the option of modeling and displaying estimated return on investment for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- the alternative nitrogen application scenarios may be displayed and graphed on the user device along with the original recommendation.
- the user has the further option of modeling and displaying estimated yield benefit (minimum, average, and maximum) for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- the user has the further option of modeling and displaying estimated available nitrogen over any time period specified by the user for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- the user has the further option of running the nitrogen application advisor (using the nitrogen application advisor) for one or more sub-fields or management zones within a field.
- Pest Advisor Module (or Pest and Disease Advisor Module)
- the agricultural intelligence computer system is additionally configured to provide agricultural intelligence services related to pest and disease.
- the pest and disease advisor module is configured to identify risks posed to crops by pest damage and/or disease damage.
- the pest and disease advisor module identifies risks caused by the pests that cause that the most economic damage to crops in the U.S.
- pests include, for example, corn rootworm, corn earworm, soybean aphid, western bean cutworm, European corn borer, armyworm, bean leaf beetle, Japanese beetle, and twospotted spider mite.
- the pest and disease advisor provides supplemental analysis for each pest segmented by growth stages (e.g., larval and adult stages).
- the pest and disease advisor module also identifies disease risks caused by the diseases that cause that the most economic damage to crops in the U.S. Such diseases include, for example, Gray Leaf Spot, Northern Leaf Blight, Anthracnose Stalk Rot, Goss's Wilt, Southern Corn Leaf Blight, Eyespot, Common Rust, Anthracnose Leaf Blight, Southern Rust, Southern Virus Complex, Stewart's Leaf Blight, Corn Lethal Necrosis, Headsmut, Diplodia Ear Rot, Fusarium Crown Rot.
- the pest advisor is also configured to recommend scouting practices and treatment methods to respond to such pest and disease risks.
- the pest advisor is also configured to provide alerts based on observations of pests in regions proximate to the user's fields.
- the pest and disease advisor may receive one or more of the following sets of data for each field identified by the user (as determined from field definition data):
- a first set of data points is environmental information.
- Environmental information includes information related to weather, precipitation, meteorology, crop phenology and pest and disease reporting.
- seed characteristic data may include any relevant information related to seeds that are planted or will be planted.
- Seed characteristic data may include, for example, seed company data, seed cost data, seed population data, seed hybrid data, seed maturity level data, seed disease resistance data, and any other suitable seed data.
- Seed company data may refer to the manufacturer or provider of seeds.
- Seed cost data may refer to the price of seeds for a given quantity, weight, or volume of seeds.
- Seed population data may include the amount of seeds planted (or intended to be planted) or the density of seeds planted (or intended to be planted).
- Seed hybrid data may include any information related to the biological makeup of the seeds (i.e., which plants have been hybridized to form a given seed.)
- Seed maturity level data may include, for example, a relative maturity level of a given seed (e.g., a comparative relative maturity (“CRM”) value or a silk comparative relative maturity (“silk CRM”)), growing degree units (“GDUs”) until a given stage such as silking, mid-pollination, black layer, or flowering, and a relative maturity level of a given seed at physiological maturity (“Phy. CRM”).
- Disease resistance data may include any information related to the resistance of seeds to particular diseases.
- disease resistance data includes data related to the resistance to Gray Leaf Spot, Northern Leaf Blight, Anthracnose Stalk Rot, Goss's Wilt, Southern Corn Leaf Blight, Eyespot, Common Rust, Anthracnose Leaf Blight, Southern Rust, Southern Virus Complex, Stewart's Leaf Blight, Corn Lethal Necrosis, Headsmut, Diplodia Ear Rot, and Fusarium Crown Rot.
- seed data may include, for example, data related to, grain drydown, stalk strength, root strength, stress emergence, staygreen, drought tolerance, ear flex, test eight, plant height, ear height, mid-season brittle stalk, plant vigor, fungicide response, growth regulators sensitivity, pigment inhibitors, sensitivity, sulfonylureas sensitivity, harvest timing, kernel texture, emergence, harvest appearance, harvest population, seedling growth, cob color, and husk cover.
- a third set of data points is field-specific data related to planting data.
- Such field-specific data may include, for example, planting dates, seed type, relative maturity (RM) of planted seed, and seed population.
- RM relative maturity
- a fourth set of data points is field-specific data related to pesticide data.
- field-specific data may include, for example, pesticide application date, pesticide product type (specified by, e.g., EPA registration number), pesticide formulation, pesticide usage rate, pesticide acres tested, pesticide amount sprayed, and pesticide source.
- users may be prompted at the user device to answer questions regarding pesticide application practices and costs, such as type of product type, application date, formulation, rate, acres tested, amount, source, costs, latest growth stage of crop at which pesticide can be applied, application equipment, labor costs, expected crop price as well as current crop data (e.g., planting date, seed(s) type, relative maturity (RM) of planted seed(s), seed population) if such information has not already been provided to the agricultural intelligence computer system.
- the pest and disease advisor module receives such data from user devices. For certain questions, such as latest growth stage of crop at which pesticide can be applied, application equipment, labor costs, the user has the option to provide a plurality of alternative responses to that the agricultural intelligence computer system can optimize the pest and disease advisor recommendation.
- the pest and disease advisor module is configured to receive and process all such sets of data points and received user data and simulate possible pesticide application practices.
- the simulation of possible pesticide practices includes: dates, rates, and next date on which workability for a pesticide application is “Green” taking into account predicted workability.
- the pest and disease advisor module generates and displays on the user device a scouting and treatment recommendation for the user.
- the scouting recommendation includes daily (or as specified by the user) times to scout for specific pests and diseases.
- the user has the option of displaying a specific subset of pests and diseases as well as additional information regarding a specific pest or disease.
- the treatment recommendation includes the list of fields where a pesticide application is recommended, including for each field the recommended application practice, recommended application dates, recommended application rate, and next data on which workability for the pesticide application is “Green.”
- the user has the option of modeling and displaying estimated return on investment for the recommended pesticide application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- the alternative pesticide application scenarios may be displayed and graphed on the user device along with the original recommendation.
- the user has the further option of modeling and displaying estimated yield benefit (minimum, average, and maximum) for the recommended pesticide application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- the field health advisor module identifies crop health quality over the course of the season and uses such crop health determinations to recommend scouting or investigation in areas of poor field health. More specifically, the field health advisor module receives and processes field image data to determine, identify, and provide index values of biomass health.
- the index values of biomass health may range from zero (indicating no biomass) to 1 (indicating the maximum amount of biomass).
- the index value has a specific color scheme, so that every image has a color-coded biomass health scheme (e.g., brown areas show the areas in the field with the lowest relative biomass health).
- the field health advisor module may receive one or more of the following data points for each field identified by the user (as determined from field definition data):
- a first set of data points includes environmental information.
- environmental information includes information related to satellite imagery, aerial imagery, terrestrial imagery, and crop phenology.
- a second set of data points includes field-specific data related to field data.
- field-specific data may include field and soil identifiers such as field names, and soil types.
- a third set of data points includes field-specific data related to soil composition data.
- field-specific data may include measurements of the acidity or basicity of soil (e.g., pH levels), soil organic matter levels (“OM” levels), and cation exchange capacity levels (“CEC” levels).
- a fourth set of data points includes field-specific data related to planting data.
- Such field-specific data may include for example, planting dates, seed type, relative maturity (RM) of planted seed, and seed population.
- RM relative maturity
- the field health advisor module receives and processes all such data points (along with field image data) to determine and identify a crop health index for each location in each field identified by the user each time a new field image is available.
- the field health advisor module determines a crop health index as a normalized difference vegetation index (“NDVI”) based on at least one near-infrared (“NIR”) reflectance value and at least one visible spectrum reflectance value at each raster location in the field.
- NDVI normalized difference vegetation index
- NIR near-infrared
- the crop health index is a NDVI based on multispectral reflectance.
- the field health advisor module generates and displays on the user device the health index map as an overlay on an aerial map for each field identified by the user.
- the field health advisor module will display field image date, growth stage of crop at that time, soil moisture at that time, and health index map as an overlay on an aerial map for the field.
- the field image resolution is between 5 m and 0.25 cm.
- the user has the option of modeling and displaying a list of fields based on field image date and/or crop health index (e.g., field with lowest overall health index values to field with highest overall health index values, field with highest overall health index values to field with lowest overall health index values, lowest health index value variability within field, highest health index value variability within field, or as specified by the user).
- the user also has the option of modeling and displaying a comparison of crop health index for a field over time (e.g., side-by-side comparison, overlay comparison).
- the field health advisor module provides the user with the ability to select a location on a field to get more information about the health index, soil type or elevation at a particular location.
- the field health advisor module provides the user with the ability to save a selected location, the related information, and a short note so that the user can retrieve the same information on the user device while in the field.
- a technical effect of the systems and methods described herein include at least one of (a) improved utilization of agricultural fields through improved field condition monitoring; (b) improved selection of time and method of fertilization; (c) improved selection of time and method of pest control; (d) improved selection of seeds planted for the given location of soil; (e) improved field condition data for at a micro-local level; and (f) improved selection of time of harvest.
- the technical effects can be achieved by performing at least one of the following steps: (a) receiving a plurality of field definition data, retrieving a plurality of input data from a plurality of data networks, determining a field region based on the field definition data, identifying a subset of the plurality of input data associated with the field region, determining a plurality of field condition data based on the subset of the plurality of input data, and providing the plurality of field condition data to the user device; (b) defining a precipitation analysis period, retrieving a set of recent precipitation data, a set of predicted precipitation data, and a set of temperature data associated with the precipitation analysis period from the subset of the plurality of input data, determining a workability index based on the set of recent precipitation data, the set of predicted precipitation data, and the set of temperature data, and providing a workability value to the user device based on the workability index; (c) receiving a prospective field activity, and determining the workability index based partially on the prospective field
- a processor may include any programmable system including systems using micro-controllers, reduced instruction set circuits (RISC), application specific integrated circuits (ASICs), logic circuits, and any other circuit or processor capable of executing the functions described herein.
- RISC reduced instruction set circuits
- ASICs application specific integrated circuits
- logic circuits and any other circuit or processor capable of executing the functions described herein.
- the above examples are examples only and are thus not intended to limit in any way the definition and/or meaning of the term “processor.”
- database may refer to either a body of data, a relational database management system (RDBMS), or to both.
- RDBMS relational database management system
- a database may include any collection of data including hierarchical databases, relational databases, flat file databases, object-relational databases, object oriented databases, and any other structured collection of records or data that is stored in a computer system.
- RDBMS's include, but are not limited to: Oracle® Database, MySQL, IBM® DB2, Microsoft® SQL Server, Sybase®, and PostgreSQL.
- any database may be used that enables the systems and methods described herein.
- a computer program is provided, and the program is embodied on a computer readable medium.
- the system is executed on a single computer system, without requiring a connection to a sever computer.
- the system is being run in a Windows® environment (Windows is a registered trademark of Microsoft Corporation, Redmond, Wash.).
- the system is run on a mainframe environment and a UNIX® server environment (UNIX is a registered trademark of X/Open Company Limited located in Reading, Berkshire, United Kingdom).
- the application is flexible and designed to run in various different environments without compromising any major functionality.
- the system includes multiple components distributed among a plurality of computing devices. One or more components may be in the form of computer-executable instructions embodied in a computer-readable medium.
- the terms “software” and “firmware” are interchangeable and include any computer program stored in memory for execution by a processor, including RAM memory, ROM memory, EPROM memory, EEPROM memory, and non-volatile RAM (NVRAM) memory.
- RAM random access memory
- ROM memory read-only memory
- EPROM memory erasable programmable read-only memory
- EEPROM memory electrically erasable programmable read-only memory
- NVRAM non-volatile RAM
- FIG. 1 is a diagram depicting an example agricultural environment 100 including a plurality of fields that are monitored and managed using an agricultural intelligence computer system.
- Example agricultural environment 100 includes grower 110 cultivating a plurality of fields 120 including a first field 122 and a second field 124 .
- Grower 110 interacts with agricultural intelligence computer system 150 to effectively manage fields 120 and receive recommendations for agricultural activities to effectively utilize fields 120 .
- Agricultural intelligence computer system 150 utilizes a plurality of computer systems 112 , 114 , 116 , 118 , 130 A, 130 B, and 140 to provide such services.
- Computer systems 112 , 114 , 116 , 118 , 130 A, 130 B, 140 , and 150 and all associated sub-systems may be referred to as a “networked agricultural intelligence system.” Although only one grower 110 and only two fields 120 are shown, it should be understood that multiple growers 110 having multiple fields 120 may utilize agricultural intelligence computer system 150 .
- grower 110 utilizes user devices 112 , 114 , 116 , and/or 118 to interact with agricultural intelligence computer system 150 .
- user device 112 is a smart watch, computer-enabled glasses, smart phone, PDA, or “phablet” computing device capable of transmitting and receiving information such as described herein.
- grower 110 may utilize tablet computing device 114 , or laptop 116 to interact with agricultural intelligence computer system 150 .
- user devices 112 and 114 are “mobile devices” with specific types and ranges of inputs and outputs, in at least some examples user devices 112 and 114 utilize specialty software (sometimes referred to as “apps”) to interact with agricultural intelligence computer system 150 .
- agricultural machine 117 may be coupled to a computing device 118 (“agricultural machine computing device”) that interacts with agricultural intelligence computer system 150 in a similar manner as user devices 112 , 114 , and 116 .
- agricultural machine computing device could be a planter monitor, planter controller or a yield monitor.
- the agricultural machine computing device 118 could be a planter monitor as disclosed in U.S. Pat. No. 8,738,243, incorporated herein by reference, or in International Patent Application No. PCT/US2013/054506, incorporated herein by reference.
- the agricultural machine computing device 118 could be a yield monitor as disclosed in U.S. patent application Ser. No. 14/237,844, incorporated herein by reference.
- Agricultural machine 117 and agricultural machine computing device 118 may provide agricultural intelligence computer system 150 with field definition data 160 and field-specific data, as described below.
- grower (or user) 110 interacts with user devices 112 , 114 , 116 , and/or 118 to obtain information regarding the management of fields 120 . More specifically, grower 110 interacts with user devices 112 , 114 , 116 , and/or 118 in order to obtain recommendations, services, and information related to the management of fields 120 .
- Grower 110 provides field definition data 160 descriptive of the location, layout, geography, and topography of fields 120 via user devices 112 , 114 , 116 , and/or 118 .
- grower 110 may provide field definition data 160 to agricultural intelligence computer system 150 by accessing a map (served by agricultural intelligence computer system 150 ) on user device 112 , 114 , 116 , and/or 118 and selecting specific CLUs that have been graphically shown on the map.
- grower 110 may identify field definition data 160 by accessing a map (served by agricultural intelligence computer system 150 ) on user device 112 , 114 , 116 , and/or 118 and drawing boundaries of fields 120 (or, more specifically, field 122 and field 124 ) over the map.
- Such CLU selection or map drawings represent geographic identifiers.
- the user may identify field definition data 160 by accessing field definition data 160 (provided as shape files or in a similar format) from the U.S. Department of Agriculture Farm Service Agency or other source via the user device and providing such field definition data 160 to the agricultural intelligence computer system.
- the land identified by “field definition data” may be referred to as a “field” or “land tract.”
- the land farmed, or “land tract” is contained in a region that may be referred to as a “field region.”
- Such a “field region” may be coextensive with, for example, temperature grids or precipitation grids, as used and defined below.
- field definition data 160 defines the location of fields 122 and 124 .
- accurate locations of fields 122 and 124 are useful in order to identify field-specific & environmental data 170 and/or field condition data 180 .
- Significant variations may exist in field conditions over small distances including variances in, for example, soil quality, soil composition, soil moisture levels, nitrogen levels, relative maturity of crops, precipitation, wind, temperature, solar exposure, other meteorological conditions, and workability of the field.
- agricultural intelligence computer system 150 identifies a location for each of fields 122 and 124 based on field definition data 160 and identifies a field region for each of fields 122 and 124 .
- agricultural intelligence computer system 150 utilizes a “grid” architectural model that subdivides land into grid sections that are 2.5 miles by 2.5 miles in dimension.
- agricultural intelligence computer system 150 utilizes field definition data 160 to identify which field conditions and field data to process and determine for a particular field.
- data networks 130 A and 130 B represent data sources associated with fields 124 and 122 , respectively, because the grid associated with field 122 is monitored by external data source 130 B and the grid associated with field 124 is monitored by data network 130 A.
- Each of data networks 130 A and 130 B may each have associated subsystems 131 A, 132 A, 133 A, 134 A (associated with data network 130 A) and 131 B, 132 B, 133 B, and 134 B (associated with external data source 130 B).
- field definition data 160 associates field 122 with data network 130 A and field 124 with data network 130 B.
- data networks 130 A and 130 B may be associated with a plurality of grids and be able to provide field-specific & environmental data 170 for a particular grid based on field definition data 160 .
- Data networks 130 A and 130 B receive a plurality of information to determine field-specific & environmental data 170 .
- Data networks 130 A and 130 B may receive feeds of meteorological data from other external services or be associated with meteorological devices such as anemometer 135 and rain gauge 136 . Accordingly, based on such devices 135 and 136 and other accessible data, data networks 130 A and 130 B provide field-specific & environmental data 170 to agricultural intelligence computer system 150 .
- the agricultural intelligence computer system may receive additional information from other data networks 140 to determine field-specific & environmental data 170 and field condition data 180 .
- other data networks 140 receive inputs from aerial monitoring system 145 and satellite device 146 . Such inputs 145 and 146 may provide field-specific & environmental data for a plurality of fields 120 .
- agricultural intelligence computer system determines field condition data 180 and/or at least one recommended agricultural activity 190 , as described herein.
- Field condition data 180 substantially represents a response to a request from grower 110 for information related to field conditions of fields 120 including field weather conditions, field workability conditions, growth stage conditions, soil moisture, and precipitation conditions.
- Recommended agricultural activity 190 includes outputs from any of the plurality of services described herein including planting advisor, a nitrogen application advisor, a pest advisor, a field health advisor, a harvest advisor, and a revenue advisor. Accordingly, recommended agricultural activity 190 may include, for example, suggestions on planting, nitrogen application, pest response, field health remediation, harvesting, and sales and marketing of crops.
- Agricultural intelligence computer system 150 may be implemented using a variety of distinct computing devices such as agricultural intelligence computing devices 151 , 152 , 153 , and 154 using any suitable network.
- agricultural intelligence computer system 150 uses a client-server architecture configured for exchanging data over a network (e.g., the Internet) with other computer systems including systems 112 , 114 , 116 , 118 , 130 A, 130 B, and 140 .
- One or more user devices 112 , 114 , 116 , and/or 118 may communicate via a network using a suitable method of interaction including a user application (or application platform) stored on user devices 112 , 114 , 116 , and/or 118 or using a separate application utilizing (or calling) an application platform interface.
- a suitable method of interaction including a user application (or application platform) stored on user devices 112 , 114 , 116 , and/or 118 or using a separate application utilizing (or calling) an application platform interface.
- Other example embodiments may include other network architectures, such as a peer-to-peer or distributed network environment.
- the user application may provide server-side functionality, via the network to one or more user devices 112 , 114 , 116 , and/or 118 .
- user device 112 , 114 , 116 , and/or 118 may access the user application via a web client or a programmatic client.
- User devices 112 , 114 , 116 , and/or 118 may transmit data to, and receive data from, from one or more front-end servers.
- the data may take the form of requests and user information input, such as field-specific data, into the user device.
- One or more front-end servers may process the user device requests and user information and determine whether the requests are service requests or content requests, among other things.
- Content requests may be transmitted to one or more content management servers for processing.
- Application requests may be transmitted to one or more application servers.
- application requests may take the form of a request to provide field condition data and/or agricultural intelligence services for one or more fields 120 .
- agricultural intelligence computer system 150 may comprise one or more servers 151 , 152 , 153 , and 154 in communication with each other.
- agricultural intelligence computer system 150 may comprise front-end servers 151 , application servers 152 , content management servers 153 , account servers 154 , modeling servers 155 , environmental data servers 156 , and corresponding databases 157 .
- environmental data may be obtained from data networks 130 A, 130 B, and 140 , accessible by agricultural intelligence computer system 150 or such environmental data may be obtained from internal data sources or databases integrated within agricultural intelligence computer system 150 .
- data networks 130 A, 130 B, and 140 may comprise third-party hosted servers that provide services to agricultural intelligence computer system 150 via Application Program Interface (API) requests and responses.
- API Application Program Interface
- the frequency at which agricultural intelligence computer system 150 may consume data published or made available by these third-party hosted servers 130 A, 130 B, and 140 may vary based on the type of data.
- a notification may be sent to the agricultural intelligence computer system when new data is available by a data source.
- Agricultural intelligence computer system 150 may transmit an API call via the network to servers 130 A, 130 B, and 140 hosting the data and receive the new data in response to the call. To the extent needed, agricultural intelligence computer system 150 may process the data to enable components of the agricultural intelligence computer system and user application to handle the data.
- processing data may involve extracting data from a stream or a data feed and mapping the data to a data structure, such as an XML data structure.
- Data received and/or processed by agricultural intelligence computer system 150 may be transmitted to the application platform and stored in an appropriate database.
- one or more front end servers 151 communicate with applications servers 151 , content management servers 153 , account servers 154 , modeling servers 155 , environmental data servers 156 , and corresponding databases 157 .
- modeling servers 155 may generate a predetermined number of simulations (e.g., 10,000 simulations) using, in part, field-specific data and environmental data for one or more fields identified based on field definition data and user information.
- the field-specific data and environmental data for one or more fields may be located in content management servers 153 , account servers 154 , environmental data servers 156 , corresponding databases 157 , and, in some instances, archived in modeling servers 155 and/or application servers 152 .
- field condition data and/or agricultural intelligence services for one or more fields is provided to application servers 152 for transmission to the requesting user device 112 , 114 , 116 , and/or 118 via the network. More specifically, grower (or user) 110 may use user device 112 , 114 , 116 , and/or 118 to access a plurality of windows or displays showing field condition data and/or agricultural intelligence services, as described below.
- FIG. 2 is a block diagram of a user computing device 202 , used for managing and recommending agricultural activities, as shown in the agricultural environment of FIG. 1 .
- User computing device 202 may include, but is not limited to, smartphone 112 , tablet 114 , laptop 116 , and agricultural computing device 118 (all shown in FIG. 1 ). Alternately, user computing device 202 may be any suitable device used by user 110 .
- user system 202 includes a processor 205 for executing instructions.
- executable instructions are stored in a memory area 210 .
- Processor 205 may include one or more processing units, for example, a multi-core configuration.
- Memory area 210 is any device allowing information such as executable instructions and/or written works to be stored and retrieved. Memory area 210 may include one or more computer readable media.
- User system 202 also includes at least one media output component 215 for presenting information to user 201 .
- Media output component 215 is any component capable of conveying information to user 201 .
- media output component 215 includes an output adapter such as a video adapter and/or an audio adapter.
- An output adapter is operatively coupled to processor 205 and operatively coupled to an output device such as a display device, a liquid crystal display (LCD), organic light emitting diode (OLED) display, or “electronic ink” display, or an audio output device, a speaker or headphones.
- LCD liquid crystal display
- OLED organic light emitting diode
- user system 202 includes an input device 220 for receiving input from user 201 .
- Input device 220 may include, for example, a keyboard, a pointing device, a mouse, a stylus, a touch sensitive panel, a touch pad, a touch screen, a gyroscope, an accelerometer, a position detector, or an audio input device.
- a single component such as a touch screen may function as both an output device of media output component 215 and input device 220 .
- User system 202 may also include a communication interface 225 , which is communicatively coupled to a remote device such as agricultural intelligence computer system 150 .
- Communication interface 225 may include, for example, a wired or wireless network adapter or a wireless data transceiver for use with a mobile phone network, Global System for Mobile communications (GSM), 3G, or other mobile data network or Worldwide Interoperability for Microwave Access (WIMAX).
- GSM Global System for Mobile communications
- 3G 3G
- WIMAX Worldwide Interoperability for Microwave Access
- Stored in memory area 210 are, for example, computer readable instructions for providing a user interface to user 201 via media output component 215 and, optionally, receiving and processing input from input device 220 .
- a user interface may include, among other possibilities, a web browser and client application. Web browsers enable users, such as user 201 , to display and interact with media and other information typically embedded on a web page or a website from agricultural intelligence computer system 150 .
- a client application allows user 201 to interact with a server application from agricultural intelligence computer system 150 .
- user system 202 may be associated with a variety of device characteristics.
- device characteristics may vary in terms of the operating system used by user device 202 in the initiating of the first transaction, the browser operating system used by user device 202 in the initiating of the first transaction, a plurality of hardware characteristics associated with user device 202 in the initiating of the first transaction, the internet protocol address associated with user device 202 in the initiating of the first transaction, the internet service provider associated with user device 202 in the initiating of the first transaction, display attributes and characteristics used by a browser used by user device 202 in the initiating of the first transaction, configuration attributes used by a browser used by user device 202 in the initiating of the first transaction, and software components used by user device 202 in the initiating of the first transaction.
- agricultural intelligence computer system 150 shown in FIG. 1
- agricultural intelligence computer system 150 is capable of receiving device characteristic data related to user system 202 and analyzing such data as described herein.
- FIG. 3 is a block diagram of a computing device, used for managing and recommending agricultural activities, as shown in the agricultural environment of FIG. 1 .
- Server system 301 may include, but is not limited to, data network systems 130 A, 130 B, and 140 and agricultural intelligence computer system 150 .
- server system 301 determines and analyzes characteristics of devices used in payment transactions, as described below.
- Server system 301 includes a processor 305 for executing instructions. Instructions may be stored in a memory area 310 , for example.
- Processor 305 may include one or more processing units (e.g., in a multi-core configuration) for executing instructions.
- the instructions may be executed within a variety of different operating systems on the server system 301 , such as UNIX, LINUX, Microsoft Windows®, etc. It should also be appreciated that upon initiation of a computer-based method, various instructions may be executed during initialization. Some operations may be required in order to perform one or more processes described herein, while other operations may be more general and/or specific to a particular programming language (e.g., C, C#, C++, Java, Python, or other suitable programming languages, etc.).
- a particular programming language e.g., C, C#, C++, Java, Python, or other suitable programming languages, etc.
- Processor 305 is operatively coupled to a communication interface 315 such that server system 301 is capable of communicating with a remote device such as a user system or another server system 301 .
- communication interface 315 may receive requests from user systems 112 , 114 , 116 , and 118 via the Internet, as illustrated in FIGS. 2 and 3 .
- Storage device 330 is any computer-operated hardware suitable for storing and/or retrieving data.
- storage device 330 is integrated in server system 301 .
- server system 301 may include one or more hard disk drives as storage device 330 .
- storage device 330 is external to server system 301 and may be accessed by a plurality of server systems 301 .
- storage device 330 may include multiple storage units such as hard disks or solid state disks in a redundant array of inexpensive disks (RAID) configuration.
- Storage device 330 may include a storage area network (SAN) and/or a network attached storage (NAS) system.
- SAN storage area network
- NAS network attached storage
- processor 305 is operatively coupled to storage device 330 via a storage interface 320 .
- Storage interface 320 is any component capable of providing processor 305 with access to storage device 330 .
- Storage interface 320 may include, for example, an Advanced Technology Attachment (ATA) adapter, a Serial ATA (SATA) adapter, a Small Computer System Interface (SCSI) adapter, a RAID controller, a SAN adapter, a network adapter, and/or any component providing processor 305 with access to storage device 330 .
- ATA Advanced Technology Attachment
- SATA Serial ATA
- SCSI Small Computer System Interface
- Memory area 310 may include, but are not limited to, random access memory (RAM) such as dynamic RAM (DRAM) or static RAM (SRAM), read-only memory (ROM), erasable programmable read-only memory (EPROM), electrically erasable programmable read-only memory (EEPROM), and non-volatile RAM (NVRAM).
- RAM random access memory
- DRAM dynamic RAM
- SRAM static RAM
- ROM read-only memory
- EPROM erasable programmable read-only memory
- EEPROM electrically erasable programmable read-only memory
- NVRAM non-volatile RAM
- FIG. 4 is an example data flowchart of managing and recommending agricultural activities using computing devices of FIGS. 1, 2, and 3 in the agricultural environment shown in FIG. 1 .
- grower 110 uses any suitable user device 112 , 114 , 116 , and/or 118 (shown in FIG. 1 ) to specify grower request 401 which is transmitted to agricultural intelligence computer system 150 .
- grower 110 uses user application or application platform, served on user device 114 , to interact with agricultural intelligence computer system 150 and make any suitable grower request 401 .
- grower request 401 may include a request for field condition data 180 and/or a request for a recommended agricultural activity 190 .
- the application platform may provide server-side functionality, via the network to one or more user devices 114 .
- user device 114 may access the application platform via a web client or a programmatic client.
- User device 114 may transmit data to, and receive data, from one or more front-end servers such as front end server 151 (shown in FIG. 1 ).
- the data may take the form of grower requests 401 and user information input 402 , such as field-specific & environmental data 170 (provided by grower 110 ), into user device 114 .
- One or more front-end servers 151 may process grower requests 401 and user information input 402 and determine whether grower requests 401 are service requests (i.e., requests for recommended agricultural activities 190 ) or content requests (i.e., requests for field condition data 180 ), among other things.
- Content requests may be transmitted to one or more content management servers 153 (shown in FIG. 1 ) for processing.
- Application requests may be transmitted to one or more application servers 152 (shown in FIG. 1 ).
- application requests may take the form of a grower request 401 to provide field condition data 180 and/or agricultural intelligence services for one or more fields 120 (shown in FIG. 1 ).
- the application platform may comprise one or more servers 151 , 152 , 153 , and 154 (shown in FIG. 1 ) in communication with each other.
- agricultural intelligence computer system 150 may comprise front-end servers 151 , application servers 152 , content management servers 153 , account servers 154 , modeling servers 155 , environmental data servers 156 , and corresponding databases 157 (all shown in FIG. 1 ).
- the agricultural intelligence computer system includes a plurality of agricultural intelligence modules 158 and 159 .
- agricultural intelligence modules 158 and 159 are harvest advisor module 158 and revenue advisor module 159 .
- planting advisor module nitrogen application advisor module, pest and disease advisor module, and field health advisor module may be represented in agricultural intelligence computer system 150 .
- environmental data may be obtained from data networks 130 and 140 accessible by agricultural intelligence computer system 150 or it may be obtained from internal data sources integrated within agricultural intelligence computer system 150 .
- data networks 130 and 140 may comprise third-party hosted servers that provide services to agricultural intelligence computer system 150 via Application Program Interface (API) requests and responses.
- API Application Program Interface
- the frequency at which agricultural intelligence computer system 150 may consume data published or made available by these third-party hosted servers 130 and 140 may vary based on the type of data.
- a notification may be sent to agricultural intelligence computer system 150 when new data is made available.
- Agricultural intelligence computer system 150 may alternately transmit an API call via the network to external data sources 130 hosting the data and receive the new data in response to the call. To the extent needed, agricultural intelligence computer system 150 may process the data to enable components of the application platform to handle the data.
- processing data may involve extracting data from a stream or a data feed and mapping the data to a data structure, such as an XML data structure.
- Data received and/or processed by agricultural intelligence computer system 150 may be transmitted to the application platform and stored in an appropriate database.
- one or more application servers 152 communicate with content management servers 153 , account servers 154 , modeling servers 155 , environmental data servers 156 , and corresponding databases 157 .
- modeling servers 155 may generate a predetermined number of simulations (e.g., 10,000 simulations) using, in part, field-specific & environmental data 170 for one or more fields 120 identified based on field definition data 160 and user input information 402 .
- field-specific & environmental data 170 for one or more fields 120 may be located in content management servers 153 , account servers 154 , modeling servers 155 , environmental data servers 156 , and corresponding databases 157 , and, in some instances, archived in the application servers 152 .
- field condition data 180 and/or agricultural intelligence services i.e., recommended agricultural activities 190
- application servers 152 for transmission to requesting user device 114 via the network. More specifically, the user may use user device 114 to access a plurality of windows or displays showing field condition data 180 and/or recommended agricultural activities 190 , as described below.
- agricultural intelligence computer system 150 runs a plurality of field condition data analysis modules 410 .
- Field condition analysis modules include field weather data module 411 which is configured to determine weather conditions for each field 120 identified by grower 110 .
- Agricultural intelligence computer system 150 uses field weather data module 411 to determine field temperature, wind, humidity, and dew point.
- Agricultural intelligence computer system 150 also uses field weather data module 411 to determine forecasted weather conditions including field temperature, wind, humidity, and dew point for hourly projected intervals, daily projected intervals, or any interval specified by grower 110 .
- Field precipitation module 415 , field workability module 412 , and field growth stage module 413 also receive and process the forecasted weather conditions. Near-term forecasts are determined using a meteorological model (e.g., the Microcast model) while long-term projections are determined using historical analog simulations.
- a meteorological model e.g., the Microcast model
- Agricultural intelligence computer system 150 uses grid temperatures to determine temperature values. Known research shows that using grid techniques provides more accurate temperature measurements than point-based temperature reporting. Temperature grids are typically square physical regions, typically 2.5 miles by 2.5 miles. Agricultural intelligence computer system 150 associates fields (e.g., fields 122 or 124 ) with a temperature grid that contains the field. Agricultural intelligence computer system 150 identifies a plurality of weather stations that are proximate to the temperature grid. Agricultural intelligence computer system 150 receives temperature data from the plurality of weather stations. The temperatures reported by the plurality of weather stations are weighted based on their relative proximity to the grid such that more proximate weather stations have higher weights than less proximate weather stations.
- fields e.g., fields 122 or 124
- the relative elevation of the temperature grid is compared to the elevation of the plurality of weather stations. Temperature values reported by the plurality of weather stations are adjusted in response to the relative difference in elevation.
- the temperature grid includes or is adjacent to a body of water. Bodies of water are known to cause a reduction in the temperature of an area. Accordingly, when a particular field is proximate to a body of water as compared to the weather station providing the temperature reading, the reported temperature for the field is adjusted downwards to account for the closer proximity to the body of water.
- Precipitation values are similarly determined using precipitation grids that utilize meteorological radar data. Precipitation grids have similar purposes and characteristics as temperature grids.
- agricultural intelligence computer system 150 uses available data sources such as the National Weather Service's NEXRAD Doppler radar data. Agricultural intelligence computer system 150 further validates and calibrates reported data with ground station and satellite data.
- the Doppler radar data is obtained for the precipitation grid.
- the Doppler radar data is used to determine an estimate of precipitation for the precipitation grid.
- the estimated precipitation is adjusted based on other data sources such as other weather radar sources, ground weather stations (e.g., rain gauges), satellite precipitation sources (e.g., the National Oceanic and Atmospheric Administration's Satellite Applications and Research), and meteorological sources. By utilizing multiple distinct data sources, more accurate precipitation tracking may be accomplished.
- Current weather conditions and forecasted weather conditions are displayed on the user device graphically along with applicable information regarding the specific field, such as field name, crop, acreage, field precipitation, field workability, field growth stage, soil moisture, and any other field definition data or field-specific & environmental data 170 that the user may specify.
- Such information may be displayed on the user device in one or more combinations and level of detail as specified by the user.
- temperature can be displayed as high temperatures, average temperatures, and low temperatures over time. Temperature can be shown during a specific time and/or date range and/or harvest year and compared against prior times, years, including a 5 year average, a 15 year average, a 30 year average or as specified by the user.
- field precipitation module 415 determines and provides the amount of precipitation and/or accumulated precipitation over time. Precipitation can be shown during a specific time period and/or date range and/or harvest year and compared against prior times, years, including a 5 year average, a 15 year average, a 30 year average or as specified by the user. Precipitation can also be displayed as past and future radar data. In an example embodiment, past radar may be displayed over the last 1.5 hours or as specified by the user. Future radar may be displayed over the next 6 hours or as specified by the user. Radar may be displayed as an overlay of an aerial image map showing the user's one or more fields where the user has the ability to zoom in and out of the map.
- Radar can be displayed as static at intervals selected by the user or continuously over intervals selected by the user.
- the underlying radar data received and/or processed by the agricultural intelligence computer system may be in the form of Gridded Binary (GRIB) files that includes forecast reflectivity files, precipitation type, and precipitation-typed reflectivity values.
- GRIB Gridded Binary
- agricultural intelligence computer system 150 runs or executes field workability data module 412 , which processes field-specific & environmental data 170 and user information output 402 to determine the degree to which a field or section of a field (associated with the field definition data) may be worked for a given time of year using machinery or other implements.
- agricultural intelligence computer system 150 retrieves field historical precipitation data over a predetermined period of time, field predicted precipitation over a predetermined period of time, and field temperatures over a predetermined period of time. The retrieved data is used to determine one or more workability indexes as determined by field workability data module 412 .
- the workability index may be used to derive three values of workability for particular farm activities.
- the value of “Good” workability indicates high likelihood that field conditions are acceptable for use of machinery or a specified activity during an upcoming time interval.
- the value of “Check” workability indicates that field conditions may not be ideal for the use of machinery or a specified activity during an upcoming time interval.
- the value of “Stop” workability indicates that field conditions are not suitable for work or a specified activity during an upcoming time interval.
- Determined values of workability may vary depending upon the farm activity. For example, planting and tilling typically require a low level of muddiness and may require a higher workability index to achieve a value of “Good” than activities that allow for a higher level of muddiness.
- workability indices are distinctly calculated for each activity based on a distinct set of factors. For example, a workability index for planting may correlate to predicted temperature over the next 60 hours while a workability index for harvesting may be correlated to precipitation alone.
- user may be prompted at the user device to answer questions regarding field activities if such information has not already been provided to agricultural intelligence computer system 150 . For example, a user may be asked what field activities are currently in use.
- agricultural intelligence computer system 150 may adjust its calculations of the workability index because of the user's activities, thereby incorporating the feedback of the user into the calculation of the workability index. Alternately, agricultural intelligence computer system 150 may adjust the recommendations made to the user for activities. In a further example, agricultural intelligence computer system 150 may recommend that the user stop such activities based on the responses.
- agricultural intelligence computer system 150 runs or executes field growth stage data module 413 (e.g., for corn, vegetative (VE-VT) and reproductive (R1-R6) growth stages).
- Field growth stage data module 413 receives and processes field-specific & environmental data 170 and user information input 402 to determine timings of key farming decisions.
- Agricultural intelligence computer system 150 computes crop progression for each crop through stages of growth (agronomic stages) by tracking the impact of weather on the phenomenological development of the crop from planting through harvest.
- agricultural intelligence computer system 150 uses the planting date entered by the user device.
- agricultural intelligence computer system 150 may estimate the planting date using a system algorithm.
- the planting date may be estimated based on agronomic stage data and planting practices in the region associated with the field definition data.
- the planting practices may be received from a data service such as a university data network that monitors typical planting techniques for a region.
- Agricultural intelligence computer system 150 further uses data regarding the user's farming practices within the current season and for historical seasons, thereby facilitating historical analysis.
- Agricultural intelligence computer system 150 determines a relative maturity value of the crops based on expected heat units over the growing season in light of the planting date, the user's farming practices, and field-specific & environmental data 170 . As heat is a proxy for energy received by crops, agricultural intelligence computer system 150 calculates expected heat units for crops and determines a development of maturity of the crops.
- agricultural intelligence computer system 150 uses and executes soil moisture data module 414 .
- Soil moisture data module 414 is configured to determine the percent of total water capacity available to the crop that is present in the soil of the field. Soil moisture data module 414 initializes output at the beginning of the growing season based on environmental data in agricultural intelligence computer system 150 at that time, such as data from the North American Land Data Assimilation System, and field-specific & environmental data 170 .
- Soil moisture values are then adjusted, at least daily, during the growing season by tracking moisture entering the soil via precipitation and moisture leaving the soil via evapotranspiration (ET).
- Precipitation excludes a calculated amount of water that never enters the soil because it is lost as runoff.
- a runoff value is determined based on the precipitation amount over time and a curve determined by the USDA classification of soil type.
- the agricultural intelligence computer systems accounts for a user's specific field-specific & environmental data 170 related to soil to determine runoff and the runoff curve for the specific field. Lighter, sandier soils allow greater precipitation water infiltration and experience less runoff during heavy precipitation events than heavier, more compact soils. Heavier or denser soil types have lower precipitation infiltration rates and lose more precipitation to runoff on days with large precipitation events.
- Daily evapotranspiration associated with a user's specific field is calculated based on a version of the standard Penman-Monteith ET model.
- the total amount of water that is calculated as leaving the soil through evapotranspiration on a given day is based on the following:
- Latitude During much of the corn growing season, fields at more northern latitudes experience greater solar radiation than fields at more southern latitudes due to longer days. But fields at more northern latitudes also get reduced radiation due to earth tilting. Areas with greater net solar radiation values will have relatively higher evapotranspiration values than areas with lower net solar radiation values.
- Wind Evapotranspiration takes into account wind; however, evapotranspiration is not as sensitive to wind as to the other conditions. In an example embodiment, a set wind speed of 2 meters per second is used for all evapotranspiration calculations.
- Agricultural intelligence computer system 150 is additionally configured to provide alerts based on weather and field-related information.
- the user may define a plurality of thresholds for each of a plurality of alert categories. When field condition data indicates that the thresholds have been exceeded, the user device will receive alerts.
- Alerts may be provided via the application (e.g., notification upon login, push notification), email, text messages, or any other suitable method.
- Alerts may be defined for crop cultivation monitoring, for example, hail size, rainfall, overall precipitation, soil moisture, crop scouting, wind conditions, field image, pest reports or disease reports.
- alerts may be provided for crop growth strategy. For example, alerts may be provided based on commodity prices, grain prices, workability indexes, growth stages, and crop moisture content.
- an alert may indicate a recommended course of action.
- the alert may recommend that field activities (e.g., planting, nitrogen application, pest and disease treatment, irrigation application, scouting, or harvesting) occur within a particular period of time.
- Agricultural intelligence computer system 150 is also configured to receive information on farming activities from, for example, the user device, an agricultural machine, or any other source. Accordingly, alerts may also be provided based on logged farm activity such as planting, nitrogen application, spraying, irrigation, scouting, or harvesting. In some examples, alerts may be provided regardless of thresholds to indicate certain field conditions. In one example, a daily precipitation, growth stage, field image or temperature alert may be provided to the user device.
- Agricultural intelligence computer system 150 is further configured to generate a plurality of reports based on field condition data 180 .
- Such reports may be used by the user to improve strategy and decision-making in farming.
- the reports may include reports on crop growth stage, temperature, humidity, soil moisture, precipitation, workability, and pest risk.
- the reports may also include one or more field definition data 160 , field-specific & environmental data 170 , scouting and logging events, field condition data 180 , summary of agricultural intelligence services (e.g., recommended agricultural activities 190 ) or FSA Form 578 .
- Agricultural intelligence computer system 150 is also configured to receive supplemental information from the user device.
- a user may provide logging or scouting events regarding the fields associated with the field definition data.
- the user may access a logging application at the user device and update agricultural intelligence computer system 150 .
- the user accesses agricultural intelligence computer system 150 via a user device while being physically located in a field to enter field-specific data.
- the agricultural intelligence computer system might automatically display and transmit the date and time and field definition data associated with the field-specific data, such as geographic coordinates and boundaries.
- the user may provide general data for activities including field, location, date, time, crop, images, and notes.
- the user may also provide data specific to particular activities such as planting, nitrogen application, pesticide application, harvesting, scouting, and current weather observations.
- Such supplemental information may be associated with the other data networks and used by the user for analysis.
- Agricultural intelligence computer system 150 is additionally configured to display scouting and logging events related to the receipt of field-specific data from the user via one or more agricultural machines or agricultural machine devices that interacts with agricultural intelligence computer system 150 or via the user device.
- Such information can be displayed as specified by the user.
- the information is displayed on a calendar on the user device, wherein the user can obtain further details regarding the information as necessary.
- the information is displayed in a table on the user device, wherein the user can select the specific categories of information that the user would like displayed.
- Agricultural intelligence computer system 150 is additionally configured to provide agricultural intelligence services related to planting. More specifically, agricultural intelligence computer system 150 includes a plurality of agricultural intelligence modules 420 (or agricultural activity modules) that may be used to determine recommended agricultural activities 190 which are provided to grower 110 . In at least some examples, agricultural intelligence modules 420 may be similar to agricultural intelligence modules 158 and 159 (shown in FIG. 1 ). In at least some examples, planting advisor module 421 may be similar to agricultural intelligence modules 158 and 159 (shown in FIG. 1 ). Such agricultural intelligence modules 420 may be referred to as agricultural intelligence services and may include planting advisor module 421 , nitrogen application advisor module 422 , pest advisor module 423 , field health advisor module 424 , and harvest advisor module 425 . In one example embodiment, planting advisor module 421 processes field-specific & environmental data 170 and user information input 402 to determine and provide planting date recommendations. The recommendations are specific to the location of the field and adapt to the current field condition data.
- agricultural intelligence modules 420 may be similar to agricultural intelligence modules 158 and
- planting advisor module 421 receives one or more of the following data points for each field identified by the user (as determined from field definition data) in order to determine and provide such planting date recommendations:
- a first set of data points is seed characteristic data.
- Seed characteristic data may include any relevant information related to seeds that are planted or will be planted.
- Seed characteristic data may include, for example, seed company data, seed cost data, seed population data, seed hybrid data, seed maturity level data, seed disease resistance data, and any other suitable seed data.
- Seed company data may refer to the manufacturer or provider of seeds.
- Seed cost data may refer to the price of seeds for a given quantity, weight, or volume of seeds.
- Seed population data may include the number of seeds planted (or intended to be planted) or the density of seeds planted (or intended to be planted).
- Seed hybrid data may include any information related to the biological makeup of the seeds (i.e., which plants have been hybridized to form a given seed.)
- Seed maturity level data may include, for example, a relative maturity level of a given seed (e.g., a comparative relative maturity (“CRM”) value or a silk comparative relative maturity (“silk CRM”)), growing degree units (“GDUs”) until a given stage such as silking, mid-pollination, black layer, or flowering, and a relative maturity level of a given seed at physiological maturity (“Phy. CRM”).
- Disease resistance data may include any information related to the resistance of seeds to particular diseases.
- disease resistance data includes data related to the resistance to Gray Leaf Spot, Northern Leaf Blight, Anthracnose Stalk Rot, Goss's Wilt, Southern Corn Leaf Blight, Eyespot, Common Rust, Anthracnose Leaf Blight, Southern Rust, Southern Virus Complex, Stewart's Leaf Blight, Corn Lethal Necrosis, Headsmut, Diplodia Ear Rot, and Fusarium Crown Rot.
- seed data may include, for example, data related to, grain drydown, stalk strength, root strength, stress emergence, staygreen, drought tolerance, ear flex, test eight, plant height, ear height, mid-season brittle stalk, plant vigor, fungicide response, growth regulators sensitivity, pigment inhibitors, sensitivity, sulfonylureas sensitivity, harvest timing, kernel texture, emergence, harvest appearance, harvest population, seedling growth, cob color, and husk cover.
- a second set of data points is field-specific data related to soil composition.
- Such field-specific data may include measurements of the acidity or basicity of soil (e.g., pH levels), soil organic matter levels (“OM” levels), and cation exchange capacity levels (“CEC” levels).
- a third set of data points is field-specific data related to field data.
- field-specific data may include field names and identifiers, soil types or classifications, tilling status, irrigation status.
- a fourth set of data points is field-specific data related to historical harvest data.
- Such field-specific data may include crop type or classification, harvest date, actual production history (“APH”), yield, grain moisture, and tillage practice.
- users may be prompted at the user device to provide a fifth set of data points by answering questions regarding desired planting population (e.g., total crop volume and total crop density for a particular field) and/or seed cost, expected yield, and indication of risk preference (e.g., general or specific: user is willing to risk a specific number of bushels per acre to increase the chance of producing a specific larger number of bushels per acre) if such information has not already been provided to the agricultural intelligence computer system.
- desired planting population e.g., total crop volume and total crop density for a particular field
- seed cost expected yield
- indication of risk preference e.g., general or specific: user is willing to risk a specific number of bushels per acre to increase the chance of producing a specific larger number of bushels per acre
- Planting advisor module 421 receives and processes the sets of data points to simulate possible yield potentials. Possible yield potentials are calculated for various planting dates. Planting advisor module 421 additionally utilizes additional data to generate such simulations. The additional data may include simulated weather between the planting data and harvesting date, field workability, seasonal freeze risk, drought risk, heat risk, excess moisture risk, estimated soil temperature, and/or risk tolerance. Risk tolerance may be calculated for a high profit/high risk scenario, a low risk scenario, a balanced risk/profit scenario, and a user defined scenario. Planting advisor module 421 generates such simulations for each planting date and displays a planting date recommendation for the user on the user device. The recommendation includes the recommended planting date, projected yield, relative maturity, and graphs the projected yield against planting date.
- the planting advisor module also graphs the projected yield against the planting date for spring freeze risk, the planting date for fall freeze risk, the planting date for drought risk, the planting date for heat risk, the planting date for excess moisture risk, the planting date for estimated soil temperature, and the planting date for the various risk tolerance levels.
- Planting advisor module 421 provides the option of modeling and displaying alternative yield scenarios for planting data and projected yield by modifying one or more data points associated with seed characteristic data, field-specific data, desired planting population and/or seed cost, expected yield, and/or indication of risk preference. The alternative yield scenarios may be displayed and graphed on the user device along with the original recommendation.
- Agricultural intelligence computer system 150 is additionally configured to provide agricultural intelligence services related to soil by using nitrogen application advisor module 422 .
- nitrogen application advisor module 422 may be similar to agricultural intelligence modules 158 and 159 (shown in FIG. 1 ).
- Nitrogen application advisor module 422 determines potential needs for nitrogen in the soil and recommends nitrogen application practices to a user. More specifically, nitrogen application advisor module 422 is configured to identify conditions when crop needs cannot be met by nitrogen present in the soil.
- nitrogen application advisor module 422 provides recommendations for side dressing or spraying, such as date and rate, specific to the location of the field and adapt to the current field condition data.
- nitrogen application advisor module 422 is configured to receive one or more of the following data points for each field identified by the user (as determined from field definition data):
- a first set of data points includes environmental information.
- Environmental information may include information related to weather, precipitation, meteorology, soil and crop phenology.
- a second set of data points includes field-specific data related to field data.
- field-specific data may include field names and identifiers, soil types or classifications, tilling status, irrigation status.
- a third set of data points includes field-specific data related to historical harvest data.
- field-specific data may include crop type or classification, harvest date, actual production history (“APH”), yield, grain moisture, and tillage practice.
- a fourth set of data points is field-specific data related to soil composition.
- Such field-specific data may include measurements of the acidity or basicity of soil (e.g., pH levels), soil organic matter levels (“OM” levels), and cation exchange capacity levels (“CEC” levels).
- a fifth set of data points is field-specific data related to planting data.
- Such field-specific data may include planting date, seed type or types, relative maturity (RM) levels of planted seed(s), and seed population.
- RM relative maturity
- a sixth set of data points is field-specific data related to nitrogen data.
- Such field-specific data may include nitrogen application dates, nitrogen application amounts, and nitrogen application sources.
- a seventh set of data points is field-specific data related to irrigation data.
- Such field-specific data may include irrigation application dates, irrigation amounts, and irrigation sources.
- nitrogen application advisor module 422 determines a nitrogen application recommendation.
- the recommendation includes a list of fields with adequate nitrogen, a list of fields with inadequate nitrogen, and a recommended nitrogen application for the fields with inadequate nitrogen.
- users may be prompted at the user device to answer questions regarding nitrogen application (e.g., side-dressing, spraying) practices and costs, such as type of nitrogen (e.g., Anhydrous Ammonia, Urea, UAN (Urea Ammonium Nitrate) 28%, 30% or 32%, Ammonium Nitrate, Ammonium Sulphate, Calcium Ammonium Sulphate), nitrogen costs, latest growth stage of crop at which nitrogen can be applied, application equipment, labor costs, expected crop price, tillage practice (e.g., type (conventional, no till, reduced, strip) and amount of surface of the field that has been tilled), residue (the amount of surface of the field covered by residue), related farming practices (e.g., manure application, nitrogen stabilizers, cover crops) as well as prior crop data (e.g., crop type, harvest date, Actual Production History (APH), yield, tillage practice), current crop data (e.g., planting date, seed(s) type, relative maturity (RM) of planted seed(
- nitrogen application advisor module 422 Using the environmental information, field-specific data, nitrogen application practices and costs, prior crop data, current crop data, and/or soil characteristics, nitrogen application advisor module 422 identifies the available nitrogen in each field and simulates possible nitrogen application practices, dates, rates, and next date on which workability for a nitrogen application is “Green” taking into account predicted workability and nitrogen loss through leaching, denitrification and volatilization. Nitrogen application advisor module 422 generates and displays on the user device a nitrogen application recommendation for the user. The recommendation includes:
- the recommended date may be optimized for either yield or return on investment.
- the recommended date may be the date at which minimum predicted nitrogen levels in the field will reach a threshold minimum value without intervening nitrogen application.
- recommended dates may be excluded or selected based upon available equipment as indicated by the user; for example, where no equipment for applying nitrogen is available past a given growth stage, dates are preferably recommended before the predicted date at which that growth stage will be reached.
- the recommended rate of nitrogen application for each field for each possible or recommended application date may be optimized for either yield or return on investment.
- the user has the option of modeling and displaying nitrogen lost (total and divided into losses resulting from volatilization, denitrification, and leaching) and crop use (“uptake”) of nitrogen over a specified time period (predefined or as defined by the user) for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- the user has the option of modeling and displaying estimated return on investment for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- the alternative nitrogen application scenarios may be displayed and graphed on the user device along with the original recommendation.
- the user has the further option of modeling and displaying estimated yield benefit (minimum, average, and maximum) for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- the user has the further option of modeling and displaying estimated available nitrogen over any time period specified by the user for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- the user has the further option of running the nitrogen application advisor (using the nitrogen application advisor) for one or more sub-fields or management zones within a field.
- Pest Advisor Module (or Pest and Disease Advisor Module) 423
- Agricultural intelligence computer system 150 is additionally configured to provide agricultural intelligence services related to pest and disease by using pest advisor module 423 .
- pest advisor module 423 may be similar to agricultural intelligence modules 158 and 159 (shown in FIG. 1 ).
- Pest advisor module 423 is configured to identify risks posed to crops by pest damage and/or disease damage.
- pest advisor module 423 identifies risks caused by the pests that cause that the most economic damage to crops in the U.S.
- pests include, for example, corn rootworm, corn earworm, soybean aphid, western bean cutworm, European corn borer, armyworm, bean leaf beetle, Japanese beetle, and twospotted spider mite.
- Pest advisor module 423 provides supplemental analysis for each pest segmented by growth stages (e.g., larval and adult stages).
- Pest advisor module 423 also identifies disease risks caused by the diseases that cause that the most economic damage to crops in the U.S. Such diseases include, for example, Gray Leaf Spot, Northern Leaf Blight, Anthracnose Stalk Rot, Goss's Wilt, Southern Corn Leaf Blight, Eyespot, Common Rust, Anthracnose Leaf Blight, Southern Rust, Southern Virus Complex, Stewart's Leaf Blight, Corn Lethal Necrosis, Headsmut, Diplodia Ear Rot, Fusarium Crown Rot.
- the pest advisor is also configured to recommend scouting practices and treatment methods to respond to such pest and disease risks.
- Pest advisor module 423 is also configured to provide alerts based on observations of pests in regions proximate to the user's fields.
- pest advisor module 423 may receive one or more of the following sets of data for each field identified by the user (as determined from field definition data):
- a first set of data points is environmental information.
- Environmental information includes information related to weather, precipitation, meteorology, crop phenology and pest and disease reporting.
- pest and disease reports may be received from a third-party server or data source such as a university or governmental reporting service.
- seed characteristic data may include any relevant information related to seeds that are planted or will be planted.
- Seed characteristic data may include, for example, seed company data, seed cost data, seed population data, seed hybrid data, seed maturity level data, seed disease resistance data, and any other suitable seed data.
- Seed company data may refer to the manufacturer or provider of seeds.
- Seed cost data may refer to the price of seeds for a given quantity, weight, or volume of seeds.
- Seed population data may include the number of seeds planted (or intended to be planted) or the density of seeds planted (or intended to be planted).
- Seed hybrid data may include any information related to the biological makeup of the seeds (i.e., which plants have been hybridized to form a given seed.)
- Seed maturity level data may include, for example, a relative maturity level of a given seed (e.g., a comparative relative maturity (“CRM”) value or a silk comparative relative maturity (“silk CRM”)), growing degree units (“GDUs”) until a given stage such as silking, mid-pollination, black layer, or flowering, and a relative maturity level of a given seed at physiological maturity (“Phy. CRM”).
- Disease resistance data may include any information related to the resistance of seeds to particular diseases.
- disease resistance data includes data related to the resistance to Gray Leaf Spot, Northern Leaf Blight, Anthracnose Stalk Rot, Goss's Wilt, Southern Corn Leaf Blight, Eyespot, Common Rust, Anthracnose Leaf Blight, Southern Rust, Southern Virus Complex, Stewart's Leaf Blight, Corn Lethal Necrosis, Headsmut, Diplodia Ear Rot, and Fusarium Crown Rot.
- seed data may include, for example, data related to, grain drydown, stalk strength, root strength, stress emergence, staygreen, drought tolerance, ear flex, test eight, plant height, ear height, mid-season brittle stalk, plant vigor, fungicide response, growth regulators sensitivity, pigment inhibitors, sensitivity, sulfonylureas sensitivity, harvest timing, kernel texture, emergence, harvest appearance, harvest population, seedling growth, cob color, and husk cover.
- a third set of data points is field-specific data related to planting data.
- Such field-specific data may include, for example, planting dates, seed type, relative maturity (RM) of planted seed, and seed population.
- RM relative maturity
- a fourth set of data points is field-specific data related to pesticide data.
- field-specific data may include, for example, pesticide application date, pesticide product type (specified by, e.g., EPA registration number), pesticide formulation, pesticide usage rate, pesticide acres tested, pesticide amount sprayed, and pesticide source.
- users may be prompted at the user device to answer questions regarding pesticide application practices and costs, such as type of product type, application date, formulation, rate, acres tested, amount, source, costs, latest growth stage of crop at which pesticide can be applied, application equipment, labor costs, expected crop price as well as current crop data (e.g., planting date, seed(s) type, relative maturity (RM) of planted seed(s), seed population) if such information has not already been provided to the agricultural intelligence computer system.
- pest advisor module 423 receives such data from user devices. For certain questions, such as latest growth stage of crop at which pesticide can be applied, application equipment, labor costs, the user has the option to provide a plurality of alternative responses to that agricultural intelligence computer system 150 can optimize the pest and disease advisor recommendation.
- Pest advisor module 423 is configured to receive and process all such sets of data points and received user data and simulate possible pesticide application practices.
- the simulation of possible pesticide practices includes dates, rates, and next date on which workability for a pesticide application is “Green” taking into account predicted workability.
- Pest advisor module 423 generates and displays on the user device a scouting and treatment recommendation for the user.
- the scouting recommendation includes daily (or as specified by the user) times to scout for specific pests and diseases.
- the user has the option of displaying a specific subset of pests and diseases as well as additional information regarding a specific pest or disease.
- the treatment recommendation includes the list of fields where a pesticide application is recommended, including for each field the recommended application practice, recommended application dates, recommended application rate, and next data on which workability for the pesticide application is “Green.”
- the user has the option of modeling and displaying estimated return on investment for the recommended pesticide application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- the alternative pesticide application scenarios may be displayed and graphed on the user device along with the original recommendation.
- the user has the further option of modeling and displaying estimated yield benefit (minimum, average, and maximum) for the recommended pesticide application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- Agricultural intelligence computer system 150 is also configured to provide information regarding the health and quality of areas of fields 120 .
- field health advisor module 424 may be similar to agricultural intelligence modules 158 and 159 (shown in FIG. 1 ). Field health advisor module 424 identifies crop health quality over the course of the season and uses such crop health determinations to recommend scouting or investigation in areas of poor field health. More specifically, field health advisor module 424 receives and processes field image data to determine, identify, and provide index values of biomass health. The index values of biomass health may range from zero (indicating no biomass) to 1 (indicating the maximum amount of biomass).
- the index value has a specific color scheme, so that every image has a color-coded biomass health scheme (e.g., brown areas show the areas in the field with the lowest relative biomass health).
- field health advisor module 424 may receive one or more of the following data points for each field identified by the user (as determined from field definition data):
- a first set of data points includes environmental information.
- environmental information includes information related to satellite imagery, aerial imagery, terrestrial imagery and crop phenology.
- a second set of data points includes field-specific data related to field data.
- field-specific data may include field and soil identifiers such as field names, and soil types.
- a third set of data points includes field-specific data related to soil composition data.
- field-specific data may include measurements of the acidity or basicity of soil (e.g., pH levels), soil organic matter levels (“OM” levels), and cation exchange capacity levels (“CEC” levels).
- a fourth set of data points includes field-specific data related to planting data.
- Such field-specific data may include, for example, planting dates, seed type, relative maturity (RM) of planted seed, and seed population.
- RM relative maturity
- Field health advisor module 424 receives and processes all such data points (along with field image data) to determine and identify a crop health index for each location in each field identified by the user each time a new field image is available.
- field health advisor module 424 determines a crop health index as a normalized difference vegetation index (“NDVI”) based on at least one near-infrared (“NIR”) reflectance value and at least one visible spectrum reflectance value at each raster location in the field.
- the crop health index is a NDVI based on multispectral reflectance.
- Field health advisor module 424 generates and displays on the user device the health index map as an overlay on an aerial map for each field identified by the user.
- the field health advisor module will display field image date, growth stage of crop at that time, soil moisture at that time, and health index map as an overlay on an aerial map for the field.
- the field image resolution is between 5 m and 0.25 cm.
- the user has the option of modeling and displaying a list of fields based on field image date and/or crop health index (e.g., field with lowest overall health index values to field with highest overall health index values, field with highest overall health index values to field with lowest overall health index values, lowest health index value variability within field, highest health index value variability within field, or as specified by the user).
- the user also has the option of modeling and displaying a comparison of crop health index for a field over time (e.g., side-by-side comparison, overlay comparison).
- the field health advisor module provides the user with the ability to select a location on a field to get more information about the health index, soil type or elevation at a particular location.
- the field health advisor module provides the user with the ability to save a selected location, the related information, and a short note so that the user can retrieve the same information on the user device while in the field.
- Agricultural intelligence computer system 150 is additionally configured to provide agricultural intelligence services related to timing and mechanisms of harvest using harvest advisor module 425 .
- harvest advisor module 425 may be similar to agricultural intelligence modules 158 and 159 (shown in FIG. 1 ) and more specifically to harvest advisor module 158 .
- Harvest advisor computing module 425 is in data communication with agricultural intelligence computing system 150 .
- Agricultural intelligence computing system 150 captures and stores field definition data 160 , field-specific & environmental data 170 , and field condition data 180 within its memory device.
- Harvest advisor computing module 425 receives and processes field definition data 160 , field-specific & environmental data 170 , and field condition data 180 from agricultural intelligence computing system 150 to provide (i) grain moisture value predictions during drydown of a particular field prior to harvest, (ii) a projected date when the particular field will reach a target moisture value, and (iii) harvest recommendations and planning for one or more fields.
- harvest advisor computing module 425 is configured to: (i) identify an initial date of a crop within a field (e.g., a black layer date); (ii) identifying an initial moisture value associated with the crop and the initial date; (iii) identify a target harvest moisture value associated with the crop; (iv) receive field condition data associated with the field; (v) compute a target harvest date for the crop based at least in part on the initial date, the initial moisture value, the field condition data, and the target harvest moisture value, wherein the target harvest date indicates a date at which the crop will have a present moisture value approximately equal to the target harvest moisture value; and (vi) display the target harvest date for the crop to the grower for harvest planning.
- an initial date of a crop within a field e.g., a black layer date
- identifying an initial moisture value associated with the crop and the initial date e.g., identifying an initial moisture value associated with the crop and the initial date
- identify a target harvest moisture value associated with the crop e.g.
- the target harvest moisture value represents the value at which grower 110 desires the crop to be when harvested (e.g., at harvest date).
- the harvest advisor computing module 425 assists the grower in projecting approximately when a given field will be ready for harvest by projecting moisture values over time and considering both past weather data and future weather predictions at the given field.
- Agricultural intelligence computer system 150 is additionally configured to provide agricultural intelligence services related to selling and marketing crops using revenue advisor module 426 .
- revenue advisor module 426 may be similar to agricultural intelligence modules 158 and 159 (shown in FIG. 1 ) and more specifically to revenue advisor module 159 .
- Revenue advisor module 426 is in data communication with agricultural intelligence computing system 150 .
- Agricultural intelligence computing system 150 captures and stores field definition data 160 , field-specific & environmental data 170 , and field condition data 180 within its memory device.
- Revenue advisor module 426 receives and processes field definition data 160 and field condition data 180 from agricultural intelligence computing system 150 to provide (i) daily yield projections at the national, farm, and field level, (ii) current crop prices at the national and local level, (iii) daily revenue projections at the farm and field level, and (iv) daily profit estimates by the field, farm, and acre.
- revenue advisor module 426 is configured to: (i) receive field condition data 180 and field definition data 160 from agricultural intelligence computing system 150 for each field 120 of grower 110 , wherein the field condition data 180 includes growth stage conditions, field weather conditions, soil moisture, and precipitation conditions, and wherein field definition data includes field identifiers, geographic identifiers, boundary identifiers, and crop identifiers; (ii) receive cost data from grower 110 , wherein cost data includes costs related to an individual field 120 or all of the fields associated with grower 110 ; (iii) receive crop pricing data from local and national sources; (iv) process field condition data 180 , the crop pricing data, and the cost data to determine yield data, revenue data, and profit data for each field 120 of grower 110 ; and (v) output the yield data, revenue data and profit data to user device 112 , 114 , 116 , and/or 118 .
- the yield data, revenue data, and profit data relate to an individual field, and can further relate a plurality of additional fields associated with the grower.
- Yield data includes yield estimates for a high, low, and expected case for each field and at the national level.
- Revenue data includes revenue estimates based on national and local prices for each field.
- Profit data includes the expected profit for each field for the high, low, and expected cases.
- FIG. 5 is an example method for managing agricultural activities in agricultural environment 100 (shown in FIG. 1 ).
- Method 500 is implemented by agricultural intelligence computer system 150 (shown in FIG. 1 ).
- Agricultural intelligence computer system 150 receives 510 a plurality of field definition data.
- Agricultural intelligence computer system 150 retrieves 520 a plurality of input data from a plurality of data networks 130 A, 130 B, and 140 .
- Agricultural intelligence computer system 150 determines 530 a field region based on the field definition data.
- Agricultural intelligence computer system 150 identifies 540 a subset of the plurality of input data associated with the field region.
- Agricultural intelligence computer system 150 determines 550 a plurality of field condition data based on the subset of the plurality of input data.
- Agricultural intelligence computer system 150 provides 560 the plurality of field condition data to the user device.
- FIG. 6 is an example method for recommending agricultural activities in the agricultural environment of FIG. 1 .
- Method 500 is implemented by agricultural intelligence computer system 150 (shown in FIG. 1 ).
- Agricultural intelligence computer system 150 receives 610 a plurality of field definition data.
- Agricultural intelligence computer system 150 retrieves 620 a plurality of input data from a plurality of data networks 130 A, 130 B, and 140 .
- Agricultural intelligence computer system 150 determines 630 a field region based on the field definition data.
- Agricultural intelligence computer system 150 identifies 640 a subset of the plurality of input data associated with the field region.
- Agricultural intelligence computer system 150 determines 650 a plurality of field condition data based on the subset of the plurality of input data.
- Agricultural intelligence computer system 150 provides 660 the plurality of field condition data to the user device. Agricultural intelligence computer system 150 determines 670 a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data. Agricultural intelligence computer system 150 provides 680 a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores.
- FIG. 7 is a diagram of components of one or more example computing devices that may be used in the environment shown in FIG. 5 .
- FIG. 7 further shows a configuration of databases including at least database 157 (shown in FIG. 1 ).
- Database 157 is coupled to several separate components within fraud detection computer system 150 , which perform specific tasks.
- Agricultural intelligence computer system 150 includes a first receiving component 701 for receiving a plurality of field definition data, a first retrieving component 702 for retrieving a plurality of input data from a plurality of data networks, a first determining component 703 for determining a field region based on the field definition data, a first identifying component 704 for identifying a subset of the plurality of input data associated with the field region, a second determining component 705 for determining a plurality of field condition data based on the subset of the plurality of input data, a first providing component 706 for providing the plurality of field condition data to the user device, a third determining component 707 for determining a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data, and a second providing component 708 for providing a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores.
- database 157 is divided into a plurality of sections, including but not limited to, a meteorological analysis section 710 , a soil and crop analysis section 712 , and a market analysis section 714 . These sections within database 157 are interconnected to update and retrieve the information as required
- FIGS. 8-30 are example illustrations of information provided by the agricultural intelligence computer system of FIG. 3 to the user device of FIG. 2 to facilitate the management and recommendation of agricultural activities.
- screenshot 800 illustrates a setup screen wherein grower 110 (shown in FIG. 1 ) may provide user information input 402 (shown in FIG. 4 ) to define basic attributes associated with their account.
- screenshots 900 , 1000 , and 1100 illustrate options allowing for grower 110 (shown in FIG. 1 ) to view field condition data 180 (shown in FIG. 1 ).
- grower 110 may select particular dates for field condition data 180 viewing that may be in the past, present, or future and may accordingly provide historic, current, or forecasted field condition data 180 .
- Grower 110 may accordingly select a particular date and time to view field condition data 180 for particular fields 120 (shown in FIG. 1 ).
- Screenshot 1000 illustrates a consolidated view of field condition data 180 for a particular field 120 at a particular date.
- field condition data 180 shown includes output of field weather data module 411 , field workability data module 412 , growth stage data module 413 , and soil moisture data module 414 .
- Screenshot 1100 similarly shows output of field precipitation module 415 of a particular field 120 over a particular time period. As described above and herein, such field condition data 180 is determined using a localized method that determines such field conditions uniquely for each field 120 .
- FIGS. 12 and 13 illustrate such field condition data 180 displayed graphically using maps. More specifically, from the view of screenshots 1200 , grower 110 may select a particular portion of a map to identify field condition data 180 for each of fields 120 . Screenshot 1300 accordingly illustrates such a display of field condition data 180 for a particular field 122 .
- screenshots 1400 , 1500 , 1600 , 1700 , 1800 , 1900 , and 2000 illustrate the display of fields 120 (shown in FIG. 1 ) associated with grower 110 (shown in FIG. 1 ). More specifically, in screenshot 1400 grower 110 provides field definition data 160 (shown in FIG. 1 ) to define fields 120 , indicated graphically. Accordingly, a plurality of fields 120 are illustrated and may be reviewed individually or in any combination to obtain field condition data 180 (shown in FIG. 1 ) and/or recommended agricultural activities 190 (shown in FIG. 1 ).
- screenshot 1400 illustrates that grower 110 may own, use, or otherwise manage a plurality of fields 120 that are substantially far from one another and associated with unique geographic and meteorological conditions. It will be appreciated that the systems and methods described herein, providing hyper localized field condition data 180 and recommended agricultural activities 190 , substantially helps grower 110 to identify meaningful distinctions between each of fields 120 in order to effectively manage each field 120 .
- grower 110 may see a tabular view indicating identifiers for each field 120 (shown in FIG. 1 ) in conjunction with a map view of such fields.
- Grower 110 may navigate using the tabular view (or the graphical view) to individual actions associated with each field 120 .
- screenshot 1600 illustrates enhanced information shown to grower 110 upon selecting a particular field for review from either the tabular view or the graphical view (e.g., by clicking on one of the fields).
- grower 110 may additionally enhance display (or “zoom in”) to view a smaller subset of fields 120 .
- screenshots 2100 and 2200 illustrate historical data that may be provided by grower 110 (shown in FIG. 1 ) or any other source to identify notes or details associated with planting. More specifically, grower 110 may navigate to a particular date in screenshot 2400 and view planting notes as displayed in screenshot 2200 .
- screenshot 2300 presents a tabular view that allows grower 110 (shown in FIG. 1 ) to group or consolidate common land units (“CLUs”) into “field groups”. As a result, data associated with a particular field group may be viewed commonly. In some examples, grower 110 may be interested in viewing and managing particular fields 120 (shown in FIG. 1 ) in particular combinations based on, for example, common crops or geographies. Accordingly, the application and systems described facilitate such effective management.
- CLUs common land units
- screenshots 2400 , 2500 , 2600 , 2700 , 2800 , 2900 , and 3000 illustrate the use of a “field manager” tool that enables grower 110 (shown in FIG. 1 ) to view information for a plurality of fields in a tabular format.
- Screenshots 2400 , 2500 , 2600 , 2700 , 2800 , 2900 , and 3000 further indicate that grower 110 may view field condition data 180 in common with field-specific & environmental data 170 (shown in FIG. 1 ).
- screenshot 2400 illustrates, on a per field basis, current cultivated crop, acreage, average yield, tilling practices or methods, and residue levels.
- screenshot 2500 illustrates that grower 110 may apply a filter 2510 to identify particular subgroups of fields 120 for review based on characteristics including current cultivated crop, acreage, average yield, tilling practices or methods, and residue levels.
- the field manager tool also enables grower 110 to update or edit information.
- Screenshots 2600 , 2700 , 2800 , 2900 , and 3000 show views wherein grower 110 may update or edit information for previous periods of cultivation. More specifically, in screenshot 2600 , general data may be updated while in screenshot 2700 , planting data may be updated. Similarly, in screenshot 2800 , harvest data may be updated and in screenshot 2900 , nitrogen data may be updated. In screenshot 3000 , soil characteristics data may be updated.
- non-transitory computer-readable media is intended to be representative of any tangible computer-based device implemented in any method or technology for short-term and long-term storage of information, such as, computer-readable instructions, data structures, program modules and sub-modules, or other data in any device. Therefore, the methods described herein may be encoded as executable instructions embodied in a tangible, non-transitory, computer readable medium, including, without limitation, a storage device and/or a memory device. Such instructions, when executed by a processor, cause the processor to perform at least a portion of the methods described herein.
- non-transitory computer-readable media includes all tangible, computer-readable media, including, without limitation, non-transitory computer storage devices, including, without limitation, volatile and nonvolatile media, and removable and non-removable media such as a firmware, physical and virtual storage, CD-ROMs, DVDs, and any other digital source such as a network or the Internet, as well as yet to be developed digital means, with the sole exception being a transitory, propagating signal.
Landscapes
- Business, Economics & Management (AREA)
- Engineering & Computer Science (AREA)
- Human Resources & Organizations (AREA)
- Strategic Management (AREA)
- Economics (AREA)
- Entrepreneurship & Innovation (AREA)
- Physics & Mathematics (AREA)
- Marketing (AREA)
- Tourism & Hospitality (AREA)
- General Business, Economics & Management (AREA)
- General Physics & Mathematics (AREA)
- Theoretical Computer Science (AREA)
- Game Theory and Decision Science (AREA)
- Operations Research (AREA)
- Quality & Reliability (AREA)
- Development Economics (AREA)
- Educational Administration (AREA)
- Life Sciences & Earth Sciences (AREA)
- Agronomy & Crop Science (AREA)
- Animal Husbandry (AREA)
- Marine Sciences & Fisheries (AREA)
- Mining & Mineral Resources (AREA)
- Health & Medical Sciences (AREA)
- General Health & Medical Sciences (AREA)
- Primary Health Care (AREA)
- Management, Administration, Business Operations System, And Electronic Commerce (AREA)
- Information Retrieval, Db Structures And Fs Structures Therefor (AREA)
Abstract
A computer-implemented method for recommending agricultural activities is implemented by an agricultural intelligence computer system in communication with a memory. The method includes receiving a plurality of field definition data, retrieving a plurality of input data from a plurality of data networks, determining a field region based on the field definition data, identifying a subset of the plurality of input data associated with the field region, determining a plurality of field condition data based on the subset of the plurality of input data, identifying a plurality of field activity options, determining a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data, and providing a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores.
Description
- This application claims the benefit under 35 U.S.C. § 120 as a continuation of application Ser. No. 14/846,661, filed Sep. 4, 2015, which claims the benefit under 35 U.S.C. § 119(e) of provisional application 62/049,937, filed Sep. 12, 2014, the entire contents of which are hereby incorporated by reference as if fully set forth herein. The applicants hereby rescind any disclaimer of claim scope in the parent applications or the prosecution history thereof and advise the USPTO that the claims in this application may be broader than any claim in the parent applications.
- The embodiments described herein relate generally to agricultural activities and, more particularly, systems and methods for managing and recommending agricultural activities at the field level based on crop-related data and field-condition data.
- Agricultural production requires significant strategy and analysis. In many cases, agricultural growers (e.g., farmers or others involved in agricultural cultivation) are required to analyze a variety of data to make strategic decisions months in advance of the period of crop cultivation (i.e., growing season). In making such strategic decisions, growers must consider at least some of the following decision constraints: fuel and resource costs, historical and projected weather trends, soil conditions, projected risks posed by pests, disease and weather events, and projected market values of agricultural commodities (i.e., crops). Analyzing these decision constraints may help a grower to predict key agricultural outcomes including crop yield, energy usage, cost and resource utilization, and farm profitability. Such analysis may inform a grower's strategic decisions of determining crop cultivation types, methods, and timing.
- Despite its importance, such analysis and strategy is difficult to accomplish for a variety of reasons. First, obtaining reliable information for the various considerations of the grower is often difficult. Second, aggregating such information into a usable manner is a time consuming task. Third, where data is available, it may not be precise enough to be useful to determine strategy. For example, weather data (historical or projected) is often generalized for a large region such as a county or a state. In reality, weather may vary significantly at a much more granular level, such as an individual field. In addition, terrain features may cause weather data to vary significantly in even small regions.
- Additionally, growers often must regularly make decisions during the growing season. Such decisions may include adjusting when to harvest, providing supplemental fertilizer, and how to mitigate risks posed by pests, disease, and weather. As a result, growers must continually monitor various aspects of their crops during the growing season including weather, soil, and crop conditions. Accurately monitoring all such aspects at a granular level is difficult and time consuming. Accordingly, methods and systems for analyzing crop-related data and providing field condition data and strategic recommendations for maximizing crop yield are desirable.
- In one aspect, a computer-implemented method for recommending agricultural activities is provided. The method is implemented by an agricultural intelligence computer system in communication with memory. The method includes receiving a plurality of field definition data, retrieving a plurality of input data from a plurality of data networks, determining a field region based on the field definition data, identifying a subset of the plurality of input data associated with the field region, determining a plurality of field condition data based on the subset of the plurality of input data, identifying a plurality of field activity options, determining a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data, and providing a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores.
- In another aspect, a networked agricultural intelligence system for recommending agricultural activities is provided. The networked agricultural intelligence system includes a user device, a plurality of data networks computer systems, an agricultural intelligence computer system comprising a processor and a memory in communication with the processor. The processor is configured to receive a plurality of field definition data from the user device, retrieve a plurality of input data from a plurality of data networks, determine a field region based on the field definition data, identify a subset of the plurality of input data associated with the field region, determine a plurality of field condition data based on the subset of the plurality of input data, identify a plurality of field activity options, determine a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data, and provide a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores.
- In a further aspect, computer-readable storage media for recommending agricultural activities is provided. The computer-readable storage media has computer-executable instructions embodied thereon. When executed by at least one processor, the computer-executable instructions cause a processor to receive a plurality of field definition data from the user device, retrieve a plurality of input data from a plurality of data networks, determine a field region based on the field definition data, identify a subset of the plurality of input data associated with the field region, determine a plurality of field condition data based on the subset of the plurality of input data, identify a plurality of field activity options, determine a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data, and provide a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores.
-
FIG. 1 is a diagram depicting an example agricultural environment including a plurality of fields that are monitored and managed with an agricultural intelligence computer system that is used to manage and recommend agricultural activities; -
FIG. 2 is a block diagram of a user computing device, used for managing and recommending agricultural activities, as shown in the agricultural environment ofFIG. 1 ; -
FIG. 3 is a block diagram of a computing device, used for managing and recommending agricultural activities, as shown in the agricultural environment ofFIG. 1 ; -
FIG. 4 is an example data flowchart of managing and recommending agricultural activities using the computing devices ofFIGS. 1, 2, and 3 in the agricultural environment shown inFIG. 1 ; -
FIG. 5 is an example method for managing agricultural activities in the agricultural environment ofFIG. 1 ; -
FIG. 6 is an example method for recommending agricultural activities in the agricultural environment ofFIG. 1 ; -
FIG. 7 is a diagram of an example computing device used in the agricultural environment ofFIG. 1 to recommend and manage agricultural activities; and -
FIGS. 8-30 are example illustrations of information provided by the agricultural intelligence computer system ofFIG. 3 to the user device ofFIG. 2 to facilitate the management and recommendation of agricultural activities. - Although specific features of various embodiments may be shown in some drawings and not in others, this is for convenience only. Any feature of any drawing may be referenced and/or claimed in combination with any feature of any other drawing.
- The following detailed description of the embodiments of the disclosure refers to the accompanying drawings. The same reference numbers in different drawings may identify the same or similar elements. Also, the following detailed description does not limit the claims.
- The subject matter described herein relates generally to managing and recommending agricultural activities for a user such as a grower or a farmer. Specifically, a first embodiment of the methods and systems described herein includes (i) receiving a plurality of field definition data, (ii) retrieving a plurality of input data from a plurality of data networks, (iii) determining a field region based on the field definition data, (iv) identifying a subset of the plurality of input data associated with the field region, (v) determining a plurality of field condition data based on the subset of the plurality of input data, and (vi) providing the plurality of field condition data to the user device.
- A second embodiment of the methods and systems described herein includes (i) receiving a plurality of field definition data, (ii) retrieving a plurality of input data from a plurality of data networks, (iii) determining a field region based on the field definition data, (iv) identifying a subset of the plurality of input data associated with the field region, (v) determining a plurality of field condition data based on the subset of the plurality of input data, (vi) identifying a plurality of field activity options, (vii) determining a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data, and (viii) providing a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores.
- In at least some agricultural environments (e.g., farms, groups of farms, and other agricultural cultivation environments), agricultural growers employ significant strategy and analysis to make decisions on agricultural cultivation. In many cases, growers analyze a variety of data to make strategic decisions months in advance of the period of crop cultivation (i.e., growing season). In making such strategic decisions, growers must consider at least some of the following decision constraints: fuel and resource costs, historical and projected weather trends, soil conditions, projected risks posed by pests, disease and weather events, and projected market values of agricultural commodities (i.e., crops). Analyzing these decision constraints may help a grower to predict key agricultural outcomes including crop yield, energy usage, cost and resource utilization, and farm profitability. Such analysis may inform a grower's strategic decisions of determining crop cultivation types, methods, and timing. Despite its importance, such analysis and strategy is difficult to accomplish for a variety of reasons. First, obtaining reliable information for the various considerations of the grower is often difficult. Second, aggregating such information into a usable manner is a time consuming task. Third, where data is available, it may not be precise enough to be useful to determine strategy. For example, weather data (historical or projected) is often generalized for a large region such as a county or a state. In reality, weather may vary significantly at a much more granular level, such as an individual field. Terrain features may cause weather data to vary significantly in even small regions.
- Additionally, growers often must regularly make decisions during growing season. Such decisions may include adjusting when to harvest, providing supplemental fertilizer, and how to mitigate risks posed by pests, disease and weather. As a result, growers must continually monitor various aspects of their crops during the growing season including weather, soil, and crop conditions. Accurately monitoring all such aspects at a granular level is difficult and time consuming. Accordingly, methods and systems for analyzing crop-related data, and providing field condition data and strategic recommendations for maximizing crop yield are desirable. Accordingly, the systems and methods described herein facilitate the management and recommendation of agricultural activities to growers.
- As used herein, the term “agricultural intelligence services” refers to a plurality of data providers used to aid a user (e.g., a farmer, agronomist or consultant) in managing agricultural services and to provide the user with recommendations of agricultural services. As used herein, the terms “agricultural intelligence service”, “data network”, “data service”, “data provider”, and “data source” are used interchangeably herein unless otherwise specified. In some embodiments, the agricultural intelligence service may be an external data network (e.g., a third-party system). As used herein, data provided by any such “agricultural intelligence services” or “data networks” may be referred to as “input data”, or “source data.”
- As used herein, the term “agricultural intelligence computer system” refers to a computer system configured to carry out the methods described herein. The agricultural intelligence computer system is in networked connectivity with a “user device” (e.g., desktop computer, laptop computer, smartphone, personal digital assistant, tablet or other computing device) and a plurality of data sources. In the example embodiment, the agricultural intelligence computer system provides the agricultural intelligence services using a cloud based software as a service (SaaS) model. Therefore, the agricultural intelligence computer system may be implemented using a variety of distinct computing devices. The user device may interact with the agricultural intelligence computer system using any suitable network.
- In an example embodiment, an agricultural machine (e.g., combine, tractor, cultivator, plow, subsoiler, sprayer or other machinery used on a farm to help with farming) may be coupled to a computing device (“agricultural machine computing device”) that interacts with the agricultural intelligence computer system in a similar manner as the user device. In some examples, the agricultural machine computing device could be a planter monitor, planter controller or a yield monitor. The agricultural machine and agricultural machine computing device may provide the agricultural intelligence computer system with field definition data and field-specific data.
- The term “field definition data” refers to field identifiers, geographic identifiers, boundary identifiers, crop identifiers, and any other suitable data that may be used to identify farmland, such as a common land unit (CLU), lot and block number, a parcel number, geographic coordinates and boundaries, Farm Serial Number (FSN), farm number, tract number, field number, section, township, and/or range. According to the United States Department of Agriculture (USDA) Farm Service Agency, a CLU is the smallest unit of land that has a permanent, contiguous boundary, a common land cover and land management, a common owner and a common producer in agricultural land associated with USDA farm programs. CLU boundaries are delineated from relatively permanent features such as fence lines, roads, and/or waterways. The USDA Farm Service Agency maintains a Geographic Information Systems (GIS) database containing CLUs for farms in the United States.
- When field definition and field-specific data is not provided directly to the agricultural intelligence computer system via one or more agricultural machines or agricultural machine devices that interacts with the agricultural intelligence computer system, the user may be prompted via one or more user interfaces on the user device (served by the agricultural intelligence computer system) to input such information. In an example embodiment, the user may identify field definition data by accessing a map on the user device (served by the agricultural intelligence computer system) and selecting specific CLUs that have been graphically shown on the map. In an alternative embodiment, the user may identify field definition data by accessing a map on the user device (served by the agricultural intelligence computer system) and drawing boundaries of the field over the map. Such CLU selection or map drawings represent geographic identifiers. In alternative embodiments, the user may identify field definition data by accessing field definition data (provided as shape files or in a similar format) from the U.S. Department of Agriculture Farm Service Agency or other source via the user device and providing such field definition data to the agricultural intelligence computer system. The land identified by “field definition data” may be referred to as a “field” or “land tract.” As used herein, the land farmed, or “land tract”, is contained in a region that may be referred to as a “field region.” Such a “field region” may be coextensive with, for example, temperature grids or precipitation grids, as used and defined below.
- The term “field-specific data” refers to (a) field data (e.g., field name, soil type, acreage, tilling status, irrigation status), (b) harvest data (e.g., crop type, crop variety, crop rotation, whether the crop is grown organically, harvest date, Actual Production History (APH), expected yield, yield, crop price, crop revenue, grain moisture, tillage practice, weather information (e.g., temperature, rainfall) to the extent maintained or accessible by the user, previous growing season information), (c) soil composition (e.g., pH, organic matter (OM), cation exchange capacity (CEC)), (d) planting data (e.g., planting date, seed(s) type, relative maturity (RM) of planted seed(s), seed population), (e) nitrogen data (e.g., application date, amount, source), (0 pesticide data (e.g., pesticide, herbicide, fungicide, other substance or mixture of substances intended for use as a plant regulator, defoliant, or desiccant), (g) irrigation data (e.g., application date, amount, source), and (h) scouting observations (photos, videos, free form notes, voice recordings, voice transcriptions, weather conditions (temperature, precipitation (current and over time), soil moisture, crop growth stage, wind velocity, relative humidity, dew point, black layer)). If field-specific data is not provided via one or more agricultural machines or agricultural machine devices that interact with the agricultural intelligence computer system in a similar manner as the user device, a user may provide such data via the user device to the agricultural intelligence computer system. In other words, the user accesses the agricultural intelligence computer system via the user device and provides the field-specific data.
- The agricultural intelligence computer system also utilizes environmental data to provide agricultural intelligence services. The term “environmental data” refers to environmental information related to farming activities such as weather information, vegetation and crop growth information, seed information, pest and disease information and soil information. Environmental data may be obtained from external data sources accessible by the agricultural intelligence computer system. Environmental data may also be obtained from internal data sources integrated within the agricultural intelligence computer system. Data sources for environmental data may include weather radar sources, satellite-based precipitation sources, meteorological data sources (e.g., weather stations), satellite imagery sources, aerial imagery sources (e.g., airplanes, unmanned aerial vehicles), terrestrial imagery sources (e.g., agricultural machine, unmanned terrestrial vehicle), soil sources and databases, seed databases, crop phenology sources and databases, and pest and disease reporting and prediction sources and databases. For example, a soil database may relate soil types and soil locations to soil data including pH levels, organic matter makeups, and cation exchange capacities. Although in many examples, the user may access data from data sources indirectly via the agricultural intelligence computer system, in other examples, the user may directly access the data sources via any suitable network connection.
- The agricultural intelligence computer system processes the plurality of field definition data, field-specific data and environmental data from a plurality of data sources to provide a user with the plurality of field condition data for the field or field region identified by the field definition data. The term “field condition data” refers to characteristics and conditions of a field that may be used by the agricultural intelligence computer system to manage and recommend agricultural activities. Field condition data may include, for example, and without limitation, field weather conditions, field workability conditions, growth stage conditions, soil moisture and precipitation conditions. Field condition data is presented to the user using the user device.
- The agricultural intelligence computer system also provides a user with a plurality of agricultural intelligence services for the land tract or field region identified by the field definition data. Such agricultural intelligence services may be used to recommend courses of action for the user to undertake. In an example embodiment, the recommendation services include a planting advisor, a nitrogen application advisor, a pest advisor, a field health advisor, a harvest advisor, and a revenue advisor. Each is discussed herein.
- As noted above, the agricultural intelligence computer system may be implemented using a variety of distinct computing devices using any suitable network. In an example embodiment, the agricultural intelligence computer system uses a client-server architecture configured for exchanging data over a network (e.g., the Internet). One or more user devices may communicate via a network with a user application or an application platform. The application platform represents an application available on user devices that may be used to communicate with the agricultural intelligence computer system. Other example embodiments may include other network architectures, such as a peer-to-peer or distributed network environment.
- The application platform may provide server-side functionality, via the network to one or more user devices. Accordingly, the application platform may include client side software stored locally at the user device as well as server side software stored at the agricultural intelligence computer system. In an example embodiment, the user device may access the application platform via a web client or a programmatic client. The user device may transmit data to, and receive data from, one or more front-end servers. In an example embodiment, the data may take the form of requests and user information input, such as field-specific data, into the user device. One or more front-end servers may process the user device requests and user information and determine whether the requests are service requests or content requests, among other things. Content requests may be transmitted to one or more content management servers for processing. Application requests may be transmitted to one or more application servers. In an example embodiment, application requests may take the form of a request to provide field condition data and/or agricultural intelligence services for one or more fields.
- In an example embodiment, the application platform may include one or more servers in communication with each other. For example, the agricultural intelligence computer system may include front-end servers, application servers, content management servers, account servers, modeling servers, environmental data servers, and corresponding databases. As noted above, environmental data may be obtained from external data sources accessible by the agricultural intelligence computer system or it may be obtained from internal data sources integrated within the agricultural intelligence computer system.
- In an example embodiment, external data sources may include third-party hosted servers that provide services to the agricultural intelligence computer system via Application Program Interface (API) requests and responses. The frequency at which the agricultural intelligence computer system may consume data published or made available by these third-party hosted servers may vary based on the type of data. In an example embodiment, a notification may be sent to the agricultural intelligence computer system when new data is available by a data source. The agricultural intelligence computer system may transmit an API call via the network to the agricultural intelligence computer system hosting the data and receive the new data in response to the call. To the extent needed, the agricultural intelligence computer system may process the data to enable components of the application platform to handle the data. For example, processing data may involve extracting data from a stream or a data feed and mapping the data to a data structure, such as an XML data structure. Data received and/or processed by the agricultural intelligence computer system may be transmitted to the application platform and stored in an appropriate database.
- When an application request is made, the one or more application servers communicate with the content management servers, account servers, modeling servers, environmental data servers, and corresponding databases. In one example, modeling servers may generate a predetermined number of simulations (e.g., 10,000 simulations) using, in part, field-specific data and environmental data for one or more fields identified based on field definition data and user information. Depending on the type of application request, the field-specific data and environmental data for one or more fields may be located in the content management servers, account servers, environmental data servers, the corresponding databases, and, in some instances, archived in the modeling servers and/or application servers. Based on the simulations generated by the modeling servers, field condition data and/or agricultural intelligence services for one or more fields is provided to the application servers for transmission to the requesting user device via the network. More specifically, the user may use the user device to access a plurality of windows or displays showing field condition data and/or agricultural intelligence services, as described below.
- Although the aforementioned application platform has been configured with various example embodiments above, one skilled in the art will appreciate that any configuration of servers may be possible and that example embodiments of the present disclosure need not be limited to the configurations disclosed herein.
- As part of the field condition data provided, the agricultural intelligence computer system tracks field weather conditions for each field identified by the user. The agricultural intelligence computer system determines current weather conditions including field temperature, wind, humidity, and dew point. The agricultural intelligence computer system also determines forecasted weather conditions including field temperature, wind, humidity, and dew point for hourly projected intervals, daily projected intervals, or any interval specified by the user. The forecasted weather conditions are also used to forecast field precipitation, field workability, and field growth stage. Near-term forecasts are determined using a meteorological model (e.g., the Microcast model) while long-term projections are determined using historical analog simulations.
- The agricultural intelligence computer system uses grid temperatures to determine temperature values. Known research shows that using grid techniques provides more accurate temperature measurements than point-based temperature reporting. Temperature grids are typically square physical regions, typically 2.5 miles by 2.5 miles. The agricultural intelligence computer system associates the field with a temperature grid that contains the field. The agricultural intelligence computer system identifies a plurality of weather stations that are proximate to the temperature grid. The agricultural intelligence computer system receives temperature data from the plurality of weather stations. The temperatures reported by the plurality of weather stations are weighted based on their relative proximity to the grid such that more proximate weather stations have higher weights than less proximate weather stations. Further, the relative elevation of the temperature grid is compared to the elevation of the plurality of weather stations. Temperature values reported by the plurality of weather stations are adjusted in response to the relative difference in elevation. In some examples, the temperature grid includes or is adjacent to a body of water. Bodies of water are known to cause a reduction in the temperature of an area. Accordingly, when a particular field is proximate to a body of water as compared to the weather station providing the temperature reading, the reported temperature for the field is adjusted downwards to account for the closer proximity to the body of water.
- Precipitation values are similarly determined using precipitation grids that utilize meteorological radar data. Precipitation grids have similar purposes and characteristics as temperature grids. Specifically, the agricultural intelligence computer system uses available data sources such as the National Weather Service's NEXRAD Doppler radar data, rain gauge networks, and weather stations across the U.S. The agricultural intelligence computer system further validates and calibrates reported data with ground station and satellite data. In the example embodiment, the Doppler radar data is obtained for the precipitation grid. The Doppler radar data is used to determine an estimate of precipitation for the precipitation grid. The estimated precipitation is adjusted based on other data sources such as other weather radar sources, ground weather stations (e.g., rain gauges), satellite precipitation sources (e.g., the National Oceanic and Atmospheric Administration's Satellite Applications and Research), and meteorological sources. By utilizing multiple distinct data sources, more accurate precipitation tracking may be accomplished.
- Current weather conditions and forecasted weather conditions (hourly, daily, or as specified by the user) are displayed on the user device graphically along with applicable information regarding the specific field, such as field name, crop, acreage, field precipitation, field workability, field growth stage, soil moisture, and any other field definition data or field-specific data that the user may specify. Such information may be displayed on the user device in one or more combinations and level of detail as specified by the user.
- In an example embodiment, temperature can be displayed as high temperatures, average temperatures, and low temperatures over time. Temperature can be shown during a specific time and/or date range and/or harvest year and compared against prior times, years, including a 5 year average, a 15 year average, a 30 year average or as specified by the user.
- In an example embodiment, precipitation can be displayed as the amount of precipitation and/or accumulated precipitation over time. Precipitation can be shown during a specific time period and/or date range and/or harvest year and compared against prior times, years, including a 5 year average, a 15 year average, a 30 year average or as specified by the user. Precipitation can also be displayed as past and future radar data. In an example embodiment, past radar may be displayed over the last 1.5 hours or as specified by the user. Future radar may be displayed over the next 6 hours or as specified by the user. Radar may be displayed as an overlay of an aerial image map showing the user's one or more fields where the user has the ability to zoom in and out of the map. Radar can be displayed as static at intervals selected by the user or continuously over intervals selected by the user. The underlying radar data received and/or processed by the agricultural intelligence computer system may be in the form of Gridded Binary (GRIB) files that includes forecast reflectivity files, precipitation type, and precipitation-typed reflectivity values.
- As part of the field condition data, the agricultural intelligence computer system provides field workability conditions, which indicate the degree to which a field or section of a field (associated with the field definition data) may be worked for a given time of year using machinery or other implements. In an example embodiment, the agricultural intelligence computer system retrieves field historical precipitation data over a predetermined period of time, field predicted precipitation over a predetermined period of time, and field temperatures over a predetermined period of time. The retrieved data is used to determine one or more workability indexes.
- In an example embodiment, the workability index may be used to derive three values of workability for particular farm activities. The value of “Good” workability indicates high likelihood that field conditions are acceptable for use of machinery or a specified activity during an upcoming time interval. The value of “Check” workability indicates that field conditions may not be ideal for the use of machinery or a specified activity during an upcoming time interval. The value of “Stop” workability indicates that field conditions are not suitable for work or a specified activity during an upcoming time interval.
- Determined values of workability may vary depending upon the farm activity. For example, planting and tilling typically require a low level of muddiness and may require a higher workability index to achieve a value of “Good” than activities that allow for a higher level of muddiness. In some embodiments, workability indices are distinctly calculated for each activity based on a distinct set of factors. For example, a workability index for planting may correlate to predicted temperature over the next 60 hours while a workability index for harvesting may be correlated to precipitation alone. In some examples, user may be prompted at the user device to answer questions regarding field activities if such information has not already been provided to the agricultural intelligence computer system. For example, a user may be asked what field activities are currently in use. Depending upon the response, the agricultural intelligence computer system may adjust its calculations of the workability index because of the user's activities, thereby incorporating the feedback of the user into the calculation of the workability index. Alternatively, the agricultural intelligence computer system may adjust the recommendations made to the user for activities. In a further example, the agricultural intelligence computer system may recommend that the user stop such activities based on the responses.
- As part of the field condition data provided, the agricultural intelligence computer system provides field growth stage conditions (e.g., for corn, vegetative (VE-VT) and reproductive (R1-R6) growth stages) for the crops being grown in each listed field. Vegetative growth stages for corn typically are described as follows. The “VE” stage indicates emergence, the “V1” stage indicates a first fully expanded leaf with a leaf collar; the “V2” stage indicates a second fully expanded leaf with the leaf collar; the “V3” stage indicates a third fully expanded leaf with the leaf collar; any “V(n)” stage indicates an nth fully expanded leaf with the leaf collar; and the “VT” stage indicates that the tassel of the corn is fully emerged. In the reproductive growth stage model described, “R1” indicates a silking period in which pollination and fertilization processes take place; the “R2” or blister stage (occurring 10-14 days after R1) indicates that the kernel of corn is visible and resembles a blister; the “R3” or milk stage (occurring 18-22 days after R1) indicates that the kernel is yellow outside and contains milky white fluid; the “R4” or dough stage (occurring 24-28 days after R1) indicates that the interior of the kernel has thickened to a dough-like consistency; the “R5” or dent stage (occurring 35-42 days after R1) indicates that the kernels are indented at the top and beginning drydown; and the “R6” or physiological maturity stage (occurring 55-65 days after R1) indicates that kernels have reached maximum dry matter accumulation. Field growth stage conditions may be used to determine timing of key farming decisions. The agricultural intelligence computer system computes crop progression for each crop through stages of growth (agronomic stages) by tracking the impact of weather (both historical and forecasted) on the phenomenological development of the crop from planting through harvest.
- In the example embodiment, the agricultural intelligence computer system uses the planting date entered by the user device to determine field growth stage conditions. In other words, the user may enter the planting date into the user device, which communicates the planting date to the agricultural intelligence computer system. Alternatively, the agricultural intelligence computer system may estimate the planting date using a system algorithm. Specifically, the planting date may be estimated based on agronomic stage data and planting practices in the region associated with the field definition data. The planting practices may be received from a data service such as a university data network that monitors typical planting techniques for a region. The agricultural intelligence computer system further uses data regarding the user's farming practices within the current season and for historical seasons, thereby facilitating historical analysis. In other words, the agricultural intelligence computer system is configured to use historical practices of each particular grower on a subject field or to alternately use historical practices for the corresponding region to predict the planting date of a crop when the actual planting date is not provided by the grower. The agricultural intelligence computer system determines a relative maturity value of the crops based on expected heat units over the growing season in light of the planting date, the user's farming practices, and field-specific data. As heat is a proxy for energy received by crops, the agricultural intelligence computer system calculates expected heat units for crops and determines a development of maturity of the crops. In the example embodiment, maximum temperatures and low temperatures are used to estimate heat units.
- As part of the field condition data, the agricultural intelligence computer system determines and provides soil moisture data via a display showing a client application on the user device. Soil moisture indicates the percent of total water capacity available to the crop that is present in the soil of the field. Soil moisture values are initialized at the beginning of the growing season based on environmental data in the agricultural intelligence computer system at that time, such as data from the North American Land Data Assimilation System, and field-specific data. In another embodiment, a soil analysis computing device may analyze soil samples from a plurality of fields for a grower wherein the plurality of fields includes a selected field. Once analyzed, the results may be directly provided from the soil analysis computing device to the agricultural intelligence computer system so that the soil analysis results may be provided to the grower. Further, data from the soil analysis may be inputted into the agricultural intelligence computer system for use in determining field condition data and agricultural intelligence services.
- Soil moisture values are then adjusted, at least daily, during the growing season by tracking moisture entering the soil via precipitation and moisture leaving the soil via evapotranspiration (ET).
- In some examples, water that is received in an area as precipitation does not enter the soil because it is lost as run off. Accordingly, in one example, a gross and net precipitation value is calculated. Gross precipitation indicates a total precipitation value. Net precipitation excludes a calculated amount of water that never enters the soil because it is lost as runoff. A runoff value is determined based on the precipitation amount over time and a curve determined by the USDA classification of soil type. The systems account for a user's specific field-specific data related to soil to determine runoff and the runoff curve for the specific field. Soil input data, described above, may alternately be provided via the soil analysis computing device. Lighter, sandier soils allow greater precipitation water infiltration and experience less runoff during heavy precipitation events than heavier, more compact soils. Heavier or denser soil types have lower precipitation infiltration rates and lose more precipitation to runoff on days with large precipitation events.
- Daily evapotranspiration associated with a user's specific field is calculated based on a version of the standard Penman-Monteith ET model. The total amount of water that is calculated as leaving the soil through evapotranspiration on a given day is based on the following:
- 1. Maximum and minimum temperatures for the day: Warmer temperatures result in greater evapotranspiration values than cooler temperatures.
2. Latitude: During much of the corn growing season, fields at more northern latitudes experience greater solar radiation than fields at more southern latitudes due to longer days. But fields at more northern latitudes also get reduced radiation due to earth tilting. Areas with greater net solar radiation values will have relatively higher evapotranspiration values than areas with lower net solar radiation values.
3. Estimated crop growth stage: Growth stages around pollination provide the highest potential daily evapotranspiration values while growth stages around planting and late in grain fill result in relatively lower daily evapotranspiration values, because the crop uses less water in these stages of growth.
4. Current soil moisture: The agricultural intelligence computer system's model accounts for the fact that crops conserve and use less water when less water is available in the soil. The reported soil moisture values reported that are above a certain percentage, determined by crop type, provide the highest potential evapotranspiration values and potential evapotranspiration values decrease as soil moisture values approach 0%. As soil moisture values fall below this percentage, corn will start conserving water and using soil moisture at less than optimal rates. This water conservation by the plant increases as soil moisture values decrease, leading to lower and lower daily evapotranspiration values.
5. Wind: Evapotranspiration considers wind; however, evapotranspiration is not as sensitive to wind as to the other conditions. In an example embodiment, a set wind speed of 2 meters per second is used for all evapotranspiration calculations. - The agricultural intelligence computer system is additionally configured to provide alerts based on weather and field-related information. Specifically, the user may define a plurality of thresholds for each of a plurality of alert categories. When field condition data indicates that the thresholds have been exceeded, the user device will receive alerts. Alerts may be provided via the application (e.g., notification upon login, push notification), email, text messages, or any other suitable method. Alerts may be defined for crop cultivation monitoring, for example, hail size, rainfall, overall precipitation, soil moisture, crop scouting, wind conditions, field image, pest reports or disease reports. Alternately, alerts may be provided for crop growth strategy. For example, alerts may be provided based on commodity prices, grain prices, workability indexes, growth stages, and crop moisture content. In some examples, an alert may indicate a recommended course of action. For example, the alert may recommend that field activities (e.g., planting, nitrogen application, pest and disease treatment, irrigation application, scouting, or harvesting) occur within a particular period of time. The agricultural intelligence computer system is also configured to receive information on farming activities from, for example, the user device, an agricultural machine and/or agricultural machine computing device, or any other source. Accordingly, alerts may also be provided based on logged farm activity such as planting, nitrogen application, spraying, irrigation, scouting, or harvesting. In some examples, alerts may be provided regardless of thresholds to indicate certain field conditions. In one example, a daily precipitation, growth stage, field image or temperature alert may be provided to the user device.
- The agricultural intelligence computer system is further configured to generate a plurality of reports based on field condition data. Such reports may be used by the user to improve strategy and decision-making in farming. The reports may include reports on crop growth stage, temperature, humidity, soil moisture, precipitation, workability, pest risk, and disease risk. The reports may also include one or more field definition data, environmental data, field-specific data, scouting and logging events, field condition data, summary of agricultural intelligence services or FSA Form 578.
- The agricultural intelligence computer system is also configured to receive supplemental information from the user device. For example, a user may provide logging or scouting events regarding the fields associated with the field definition data. The user may access a logging application at the user device and update the agricultural intelligence computer system. In one embodiment, the user accesses the agricultural intelligence computer system via a user device while being physically located in a field to enter field-specific data. The agricultural intelligence computer system might automatically display and transmit the date and time and field definition data associated with the field-specific data, such as geographic coordinates and boundaries. The user may provide general data for activities including field, location, date, time, crop, images, and notes. The user may also provide data specific to particular activities such as planting, nitrogen application, pesticide application, harvesting, scouting, and current weather observations. Such supplemental information may be associated with the other data networks and used by the user for analysis.
- The agricultural intelligence computer system is additionally configured to display scouting and logging events related to the receipt of field-specific data from the user via one or more agricultural machines or agricultural machine devices that interacts with the agricultural intelligence computer system or via the user device. Such information can be displayed as specified by the user. In one example, the information is displayed on a calendar on the user device, wherein the user can obtain further details regarding the information as necessary. In another example, the information is displayed in a table on the user device, wherein the user can select the specific categories of information that the user would like displayed.
- The agricultural intelligence computer system also includes (or is in data communication with) a plurality of modules configured to analyze field condition data and other data available to the agricultural intelligence computer system and to recommend certain agricultural actions (or activities) to be performed relative to the fields being analyzed in order to maximize yield and/or revenue for the particular fields. In other words, such modules review field condition data and other data to recommend how to effectively enhance output and performance of the particular fields. The modules may be variously referred to as agricultural intelligence modules or, alternately as recommendation advisor components or agricultural intelligence services. As used herein, such agricultural intelligence modules may include, but are not limited to a) planting advisor module, b) nitrogen application advisor module, c) pest advisor module, d) field health advisor module, e) harvest advisor module, and f) revenue advisor module.
- The agricultural intelligence computer system is additionally configured to provide agricultural intelligence services related to planting. In one example embodiment, a planting advisor module provides planting date recommendations. The recommendations are specific to the location of the field and adapt to the current field condition data, along with weather predicted to be experienced by the specific fields.
- In one embodiment, the planting advisor module receives one or more of the following data points for each field identified by the user (as determined from field definition data) in order to determine and provide such planting date recommendations:
- 1. A first set of data points is seed characteristic data. Seed characteristic data may include any relevant information related to seeds that are planted or will be planted. Seed characteristic data may include, for example, seed company data, seed cost data, seed population data, seed hybrid data, seed maturity level data, seed disease resistance data, and any other suitable seed data. Seed company data may refer to the manufacturer or provider of seeds. Seed cost data may refer to the price of seeds for a given quantity, weight, or volume of seeds. Seed population data may include the amount of seeds planted (or intended to be planted) or the density of seeds planted (or intended to be planted). Seed hybrid data may include any information related to the biological makeup of the seeds (i.e., which plants have been hybridized to form a given seed.) Seed maturity level data may include, for example, a relative maturity level of a given seed (e.g., a comparative relative maturity (“CRM”) value or a silk comparative relative maturity (“silk CRM”)), growing degree units (“GDUs”) until a given stage such as silking, mid-pollination, black layer, or flowering, and a relative maturity level of a given seed at physiological maturity (“Phy. CRM”). Disease resistance data may include any information related to the resistance of seeds to particular diseases. In the example embodiment, disease resistance data includes data related to the resistance to Gray Leaf Spot, Northern Leaf Blight, Anthracnose Stalk Rot, Goss's Wilt, Southern Corn Leaf Blight, Eyespot, Common Rust, Anthracnose Leaf Blight, Southern Rust, Southern Virus Complex, Stewart's Leaf Blight, Corn Lethal Necrosis, Headsmut, Diplodia Ear Rot, and Fusarium Crown Rot. Other suitable seed data may include, for example, data related to, grain drydown, stalk strength, root strength, stress emergence, staygreen, drought tolerance, ear flex, test eight, plant height, ear height, mid-season brittle stalk, plant vigor, fungicide response, growth regulators sensitivity, pigment inhibitors, sensitivity, sulfonylureas sensitivity, harvest timing, kernel texture, emergence, harvest appearance, harvest population, seedling growth, cob color, and husk cover.
- 2. A second set of data points is field-specific data related to soil composition. Such field-specific data may include measurements of the acidity or basicity of soil (e.g., pH levels), soil organic matter levels (“OM” levels), and cation exchange capacity levels (“CEC” levels).
- 3. A third set of data points is field-specific data related to field data. Such field-specific data may include field names and identifiers, soil types or classifications, tilling status, irrigation status.
- 4. A fourth set of data points is field-specific data related to historical harvest data. Such field-specific data may include crop type or classification, harvest date, actual production history (“APH”), yield, grain moisture, and tillage practice.
- 5. In some examples, users may be prompted at the user device to provide a fifth set of data points by answering questions regarding desired planting population (e.g., total crop volume and total crop density for a particular field) and/or seed cost, expected yield, and indication of risk preference (e.g., general or specific: user is willing to risk a specific number of bushels per acre to increase the chance of producing a specific larger number of bushels per acre) if such information has not already been provided to the agricultural intelligence computer system.
- The planting advisor module receives and processes the sets of data points to simulate possible yield potentials. Possible yield potentials are calculated for various planting dates. The planting advisor module additionally utilizes additional data to generate such simulations. The additional data may include simulated weather between the planting data and harvesting date, field workability, seasonal freeze risk, drought risk, heat risk, excess moisture risk, estimated soil temperature, and/or risk tolerance. The likely harvesting date may be estimated based upon the provided relative maturity (e.g., to generate an earliest recommended harvesting date) and may further be adjusted based upon predicted weather and workability. Risk tolerance may be calculated based for a high profit/high risk scenario, a low risk scenario, a balanced risk/profit scenario, and a user defined scenario. The planting advisor module generates such simulations for each planting date and displays a planting date recommendation for the user on the user device. The recommendation includes the recommended planting date, projected yield, relative maturity, and graphs the projected yield against planting date. In some examples, the planting advisor module also graphs planting dates against the projected yield loss resulting from spring freeze risk, fall freeze risk, drought risk, heat risk, excess moisture risk, and estimated soil temperature. In some examples, such graphs are generated based on the predicted temperatures and/or precipitation between each planting date and a likely or earliest recommended harvest date for the selected relative maturity. The planting advisor module provides the option of modeling and displaying alternative yield scenarios for planting data and projected yield by modifying one or more data points associated with seed characteristic data, field-specific data, desired planting population and/or seed cost, expected yield, and/or indication of risk preference. The alternative yield scenarios may be displayed and graphed on the user device along with the original recommendation.
- In some examples, the planting advisor module recommends or excludes planting dates based on predicted workability. For example, dates at which a predicted planting-specific workability value is “Stop” may either be excluded or not recommended. In some examples, the planting advisor recommends or excludes planting dates based upon predicted weather events (e.g., temperature or precipitation). For example, planting dates may be recommended after which the likelihood of freezing is lower than associated threshold values.
- In some examples, the planting advisor recommends seed characteristics or graphs estimated yield against planting date for various seed characteristics. For example, a graph of estimated yield against planting date may be generated for both the seed characteristic and a recommended seed characteristic. The recommended seed characteristic may be recommended based on any of the maximum yield at any planting date, the maximum average yield across a set of planting dates, or the earliest possible harvesting date (e.g., where a later harvesting date is not desired due to predicted weather, a relative maturity may be selected in order to enable a desired harvesting date).
- The agricultural intelligence computer system is additionally configured to provide agricultural intelligence services related to soil. The nitrogen application advisor module determines potential needs for nitrogen in the soil and recommends nitrogen application practices to a user. More specifically, the nitrogen application advisor module is configured to identify conditions when crop needs cannot be met by nitrogen present in the soil. In one example embodiment, a nitrogen application advisor module provides recommendations for side dressing or spraying, such as date and rate, specific to the location of the field and adapted to the current field condition data. In one embodiment, the nitrogen application advisor module is configured to receive one or more of the following data points for each field identified by the user (as determined from field definition data):
- 1. A first set of data points includes environmental information. Environmental information may include information related to weather, precipitation, meteorology, soil and crop phenology.
- 2. A second set of data points includes field-specific data related to field data. Such field-specific data may include field names and identifiers, soil types or classifications, tilling status, irrigation status.
- 3. A third set of data points includes field-specific data related to historical harvest data. Such field-specific data may include crop type or classification, harvest date, actual production history (“APH”), yield, grain moisture, and tillage practice.
- 4. A fourth set of data points is field-specific data related to soil composition. Such field-specific data may include measurements of the acidity or basicity of soil (e.g., pH levels), soil organic matter levels (“OM” levels), and cation exchange capacity levels (“CEC” levels).
- 5. A fifth set of data points is field-specific data related to planting data. Such field-specific data may include planting date, seed type or types, relative maturity (RM) levels of planted seed(s), and seed population. In some examples, the planting data is transmitted from a planter monitor to the agricultural
intelligence computer system 150, e.g., via a cellular modem or other data communication device of the planter monitor. - 6. A sixth set of data points is field-specific data related to nitrogen data. Such field-specific data may include nitrogen application dates, nitrogen application amounts, and nitrogen application sources.
- 7. A seventh set of data points is field-specific data related to irrigation data. Such field-specific data may include irrigation application dates, irrigation amounts, and irrigation sources.
- Based on the sets of data points, the nitrogen application advisor module determines a nitrogen application recommendation. As described below, the recommendation includes a list of fields with adequate nitrogen, a list of fields with inadequate nitrogen, and a recommended nitrogen application for the fields with inadequate nitrogen.
- In some examples, users may be prompted at the user device to answer questions regarding nitrogen application (e.g., side-dressing, spraying) practices and costs, such as type of nitrogen (e.g., Anhydrous Ammonia, Urea, UAN (Urea Ammonium Nitrate) 28%, 30% or 32%, Ammonium Nitrate, Ammonium Sulphate, Calcium Ammonium Sulphate), nitrogen costs, latest growth stage of crop at which nitrogen can be applied, application equipment, labor costs, expected crop price, tillage practice (e.g., type (conventional, no till, reduced, strip) and amount of surface of the field that has been tilled), residue (the amount of surface of the field covered by residue), related farming practices (e.g., manure application, nitrogen stabilizers, cover crops) as well as prior crop data (e.g., crop type, harvest date, Actual Production History (APH), yield, tillage practice), current crop data (e.g., planting date, seed(s) type, relative maturity (RM) of planted seed(s), seed population), soil characteristics (pH, OM, CEC) if such information has not already been provided to the agricultural intelligence computer system. For certain questions, such as the latest growth stage of the crop at which nitrogen can be applied, application equipment, labor costs, the user has the option to provide a plurality of alternative responses to the agricultural intelligence computer system can optimize the nitrogen application advisor recommendation.
- Using the environmental information, field-specific data, nitrogen application practices and costs, prior crop data, current crop data, and/or soil characteristics, the agricultural intelligence computer system identifies the available nitrogen in each field and simulates possible nitrogen application practices, dates, rates, and next date on which workability for a nitrogen application is “Green” taking into account predicted workability and nitrogen loss through leaching, denitrification and volatilization. The nitrogen application advisor module generates and displays on the user device a nitrogen application recommendation for the user. The recommendation includes:
- 1. The list of fields having enough nitrogen, including for each field the available nitrogen, last application data, and the last nitrogen rate applied.
- 2. The list of fields where nitrogen application is recommended, including for each field the available nitrogen, recommended application practice, recommended application dates, recommended application rate, and next data on which workability for the nitrogen application is “Green.”
- The user has the option of modeling (i.e., running a model) and displaying nitrogen lost (total and divided into losses resulting from volatilization, denitrification, and leaching) and crop use (“uptake”) of nitrogen over a specified time period (predefined or as defined by the user) for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user. The user has the option of modeling and displaying estimated return on investment for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user. The alternative nitrogen application scenarios may be displayed and graphed on the user device along with the original recommendation. The user has the further option of modeling and displaying estimated yield benefit (minimum, average, and maximum) for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user. The user has the further option of modeling and displaying estimated available nitrogen over any time period specified by the user for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user. The user has the further option of running the nitrogen application advisor (using the nitrogen application advisor) for one or more sub-fields or management zones within a field.
- The agricultural intelligence computer system is additionally configured to provide agricultural intelligence services related to pest and disease. The pest and disease advisor module is configured to identify risks posed to crops by pest damage and/or disease damage. In an example embodiment, the pest and disease advisor module identifies risks caused by the pests that cause that the most economic damage to crops in the U.S. Such pests include, for example, corn rootworm, corn earworm, soybean aphid, western bean cutworm, European corn borer, armyworm, bean leaf beetle, Japanese beetle, and twospotted spider mite. In some examples, the pest and disease advisor provides supplemental analysis for each pest segmented by growth stages (e.g., larval and adult stages). The pest and disease advisor module also identifies disease risks caused by the diseases that cause that the most economic damage to crops in the U.S. Such diseases include, for example, Gray Leaf Spot, Northern Leaf Blight, Anthracnose Stalk Rot, Goss's Wilt, Southern Corn Leaf Blight, Eyespot, Common Rust, Anthracnose Leaf Blight, Southern Rust, Southern Virus Complex, Stewart's Leaf Blight, Corn Lethal Necrosis, Headsmut, Diplodia Ear Rot, Fusarium Crown Rot. The pest advisor is also configured to recommend scouting practices and treatment methods to respond to such pest and disease risks. The pest advisor is also configured to provide alerts based on observations of pests in regions proximate to the user's fields.
- In one embodiment, the pest and disease advisor may receive one or more of the following sets of data for each field identified by the user (as determined from field definition data):
- 1. A first set of data points is environmental information. Environmental information includes information related to weather, precipitation, meteorology, crop phenology and pest and disease reporting.
- 2. A second set of data points is seed characteristic data. Seed characteristic data may include any relevant information related to seeds that are planted or will be planted. Seed characteristic data may include, for example, seed company data, seed cost data, seed population data, seed hybrid data, seed maturity level data, seed disease resistance data, and any other suitable seed data. Seed company data may refer to the manufacturer or provider of seeds. Seed cost data may refer to the price of seeds for a given quantity, weight, or volume of seeds. Seed population data may include the amount of seeds planted (or intended to be planted) or the density of seeds planted (or intended to be planted). Seed hybrid data may include any information related to the biological makeup of the seeds (i.e., which plants have been hybridized to form a given seed.) Seed maturity level data may include, for example, a relative maturity level of a given seed (e.g., a comparative relative maturity (“CRM”) value or a silk comparative relative maturity (“silk CRM”)), growing degree units (“GDUs”) until a given stage such as silking, mid-pollination, black layer, or flowering, and a relative maturity level of a given seed at physiological maturity (“Phy. CRM”). Disease resistance data may include any information related to the resistance of seeds to particular diseases. In the example embodiment, disease resistance data includes data related to the resistance to Gray Leaf Spot, Northern Leaf Blight, Anthracnose Stalk Rot, Goss's Wilt, Southern Corn Leaf Blight, Eyespot, Common Rust, Anthracnose Leaf Blight, Southern Rust, Southern Virus Complex, Stewart's Leaf Blight, Corn Lethal Necrosis, Headsmut, Diplodia Ear Rot, and Fusarium Crown Rot. Other suitable seed data may include, for example, data related to, grain drydown, stalk strength, root strength, stress emergence, staygreen, drought tolerance, ear flex, test eight, plant height, ear height, mid-season brittle stalk, plant vigor, fungicide response, growth regulators sensitivity, pigment inhibitors, sensitivity, sulfonylureas sensitivity, harvest timing, kernel texture, emergence, harvest appearance, harvest population, seedling growth, cob color, and husk cover.
- 3. A third set of data points is field-specific data related to planting data. Such field-specific data may include, for example, planting dates, seed type, relative maturity (RM) of planted seed, and seed population.
- 4. A fourth set of data points is field-specific data related to pesticide data. Such field-specific data may include, for example, pesticide application date, pesticide product type (specified by, e.g., EPA registration number), pesticide formulation, pesticide usage rate, pesticide acres tested, pesticide amount sprayed, and pesticide source.
- In some examples, users may be prompted at the user device to answer questions regarding pesticide application practices and costs, such as type of product type, application date, formulation, rate, acres tested, amount, source, costs, latest growth stage of crop at which pesticide can be applied, application equipment, labor costs, expected crop price as well as current crop data (e.g., planting date, seed(s) type, relative maturity (RM) of planted seed(s), seed population) if such information has not already been provided to the agricultural intelligence computer system. Accordingly, the pest and disease advisor module receives such data from user devices. For certain questions, such as latest growth stage of crop at which pesticide can be applied, application equipment, labor costs, the user has the option to provide a plurality of alternative responses to that the agricultural intelligence computer system can optimize the pest and disease advisor recommendation.
- The pest and disease advisor module is configured to receive and process all such sets of data points and received user data and simulate possible pesticide application practices. The simulation of possible pesticide practices includes: dates, rates, and next date on which workability for a pesticide application is “Green” taking into account predicted workability. The pest and disease advisor module generates and displays on the user device a scouting and treatment recommendation for the user. The scouting recommendation includes daily (or as specified by the user) times to scout for specific pests and diseases. The user has the option of displaying a specific subset of pests and diseases as well as additional information regarding a specific pest or disease. The treatment recommendation includes the list of fields where a pesticide application is recommended, including for each field the recommended application practice, recommended application dates, recommended application rate, and next data on which workability for the pesticide application is “Green.” The user has the option of modeling and displaying estimated return on investment for the recommended pesticide application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user. The alternative pesticide application scenarios may be displayed and graphed on the user device along with the original recommendation. The user has the further option of modeling and displaying estimated yield benefit (minimum, average, and maximum) for the recommended pesticide application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user.
- The field health advisor module identifies crop health quality over the course of the season and uses such crop health determinations to recommend scouting or investigation in areas of poor field health. More specifically, the field health advisor module receives and processes field image data to determine, identify, and provide index values of biomass health. The index values of biomass health may range from zero (indicating no biomass) to 1 (indicating the maximum amount of biomass). In an example embodiment, the index value has a specific color scheme, so that every image has a color-coded biomass health scheme (e.g., brown areas show the areas in the field with the lowest relative biomass health). In one embodiment, the field health advisor module may receive one or more of the following data points for each field identified by the user (as determined from field definition data):
- 1. A first set of data points includes environmental information. Such environmental information includes information related to satellite imagery, aerial imagery, terrestrial imagery, and crop phenology.
- 2. A second set of data points includes field-specific data related to field data. Such field-specific data may include field and soil identifiers such as field names, and soil types.
- 3. A third set of data points includes field-specific data related to soil composition data. Such field-specific data may include measurements of the acidity or basicity of soil (e.g., pH levels), soil organic matter levels (“OM” levels), and cation exchange capacity levels (“CEC” levels).
- 4. A fourth set of data points includes field-specific data related to planting data. Such field-specific data may include for example, planting dates, seed type, relative maturity (RM) of planted seed, and seed population.
- The field health advisor module receives and processes all such data points (along with field image data) to determine and identify a crop health index for each location in each field identified by the user each time a new field image is available. In an example embodiment, the field health advisor module determines a crop health index as a normalized difference vegetation index (“NDVI”) based on at least one near-infrared (“NIR”) reflectance value and at least one visible spectrum reflectance value at each raster location in the field. In another example embodiment, the crop health index is a NDVI based on multispectral reflectance.
- The field health advisor module generates and displays on the user device the health index map as an overlay on an aerial map for each field identified by the user. In an example embodiment, for each field, the field health advisor module will display field image date, growth stage of crop at that time, soil moisture at that time, and health index map as an overlay on an aerial map for the field. In an example embodiment, the field image resolution is between 5 m and 0.25 cm. The user has the option of modeling and displaying a list of fields based on field image date and/or crop health index (e.g., field with lowest overall health index values to field with highest overall health index values, field with highest overall health index values to field with lowest overall health index values, lowest health index value variability within field, highest health index value variability within field, or as specified by the user). The user also has the option of modeling and displaying a comparison of crop health index for a field over time (e.g., side-by-side comparison, overlay comparison). In an example embodiment, the field health advisor module provides the user with the ability to select a location on a field to get more information about the health index, soil type or elevation at a particular location. In an example embodiment, the field health advisor module provides the user with the ability to save a selected location, the related information, and a short note so that the user can retrieve the same information on the user device while in the field.
- A technical effect of the systems and methods described herein include at least one of (a) improved utilization of agricultural fields through improved field condition monitoring; (b) improved selection of time and method of fertilization; (c) improved selection of time and method of pest control; (d) improved selection of seeds planted for the given location of soil; (e) improved field condition data for at a micro-local level; and (f) improved selection of time of harvest.
- More specifically, the technical effects can be achieved by performing at least one of the following steps: (a) receiving a plurality of field definition data, retrieving a plurality of input data from a plurality of data networks, determining a field region based on the field definition data, identifying a subset of the plurality of input data associated with the field region, determining a plurality of field condition data based on the subset of the plurality of input data, and providing the plurality of field condition data to the user device; (b) defining a precipitation analysis period, retrieving a set of recent precipitation data, a set of predicted precipitation data, and a set of temperature data associated with the precipitation analysis period from the subset of the plurality of input data, determining a workability index based on the set of recent precipitation data, the set of predicted precipitation data, and the set of temperature data, and providing a workability value to the user device based on the workability index; (c) receiving a prospective field activity, and determining the workability index based partially on the prospective field activity; (d) determining an initial crop moisture level, receiving a plurality of daily high and low temperatures, receiving a plurality of crop water usage, and determining a soil moisture level; (e) receiving a plurality of alert preferences from the user device, identifying a plurality of alert thresholds associated with the plurality of alert preferences, monitoring the subset of the plurality of input data, and alerting the user device when at least one of the alert thresholds is exceeded; (f) receiving a plurality of field definition data from at least one of a user device and an agricultural machine device; (g) identifying a grid associated with the field region, identifying, from a plurality of weather stations associated with the grid, wherein each of the plurality of weather stations is associated with a weather station location, identifying an associated weight for each of the plurality of weather stations based on each associated weather station location, receiving a temperature reading from each of the plurality of weather stations, and identifying a temperature value for the field region based on the plurality of temperature readings and each associated weight; (h) receiving a plurality of field definition data, retrieving a plurality of input data from a plurality of data networks, determining a field region based on the field definition data, identifying a subset of the plurality of input data associated with the field region, determining a plurality of field condition data based on the subset of the plurality of input data, identifying a plurality of field activity options, determining a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data, and providing a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores; (i) defining a precipitation analysis period, retrieving a set of recent precipitation data, a set of predicted precipitation data, and a set of temperature data associated with the precipitation analysis period from the subset of the plurality of input data, determining a workability index based on the set of recent precipitation data, the set of predicted precipitation data, and the set of temperature data, and identifying a recommended agricultural activity based, at least in part, on the workability index; (j) determining an initial crop moisture level, receiving a plurality of daily high and low temperatures, receiving a plurality of crop water usage, determining a soil moisture level for the field region, and identifying a plurality of crops to recommend based on the determined soil moisture level; (k) determining an expected heat unit value for the field region based on the input data, receiving a plurality of crop options considered for planting, wherein each of the plurality of crop options includes crop data, determining a relative maturity for each of the plurality of crop options based on the expected heat unit value and the crop data, and recommending a selected crop from the plurality of crop options based on the relative maturity for each of the plurality of crop options; (l) receiving a plurality of pest risk data wherein each of the plurality of pest risk data includes a pest identifier and a pest location, receiving a plurality of crop identifiers associated with a plurality of crops, receiving a plurality of pest spray information associated with the crop identifiers, determining a pest risk assessment associated with each of the plurality of crops, and recommending a spray strategy based on the plurality of pest risk assessments; (m) receiving a plurality of historical agricultural activities associated with each of the field region from a user device, and providing a recommended field activity option based at least in part on the plurality of historical agricultural activities; and (n) utilizing a grid-based model to obtain localized field condition data.
- As used herein, a processor may include any programmable system including systems using micro-controllers, reduced instruction set circuits (RISC), application specific integrated circuits (ASICs), logic circuits, and any other circuit or processor capable of executing the functions described herein. The above examples are examples only and are thus not intended to limit in any way the definition and/or meaning of the term “processor.”
- As used herein, the term “database” may refer to either a body of data, a relational database management system (RDBMS), or to both. As used herein, a database may include any collection of data including hierarchical databases, relational databases, flat file databases, object-relational databases, object oriented databases, and any other structured collection of records or data that is stored in a computer system. The above examples are examples only, and thus are not intended to limit in any way the definition and/or meaning of the term database. Examples of RDBMS's include, but are not limited to: Oracle® Database, MySQL, IBM® DB2, Microsoft® SQL Server, Sybase®, and PostgreSQL. However, any database may be used that enables the systems and methods described herein. (Oracle is a registered trademark of Oracle Corporation, Redwood Shores, Calif.; IBM is a registered trademark of International Business Machines Corporation, Armonk, N.Y.; Microsoft is a registered trademark of Microsoft Corporation, Redmond, Wash.; and Sybase is a registered trademark of Sybase, Dublin, Calif.)
- In one embodiment, a computer program is provided, and the program is embodied on a computer readable medium. In an example embodiment, the system is executed on a single computer system, without requiring a connection to a sever computer. In a further embodiment, the system is being run in a Windows® environment (Windows is a registered trademark of Microsoft Corporation, Redmond, Wash.). In yet another embodiment, the system is run on a mainframe environment and a UNIX® server environment (UNIX is a registered trademark of X/Open Company Limited located in Reading, Berkshire, United Kingdom). The application is flexible and designed to run in various different environments without compromising any major functionality. In some embodiments, the system includes multiple components distributed among a plurality of computing devices. One or more components may be in the form of computer-executable instructions embodied in a computer-readable medium.
- As used herein, an element or step recited in the singular and proceeded with the word “a” or “an” should be understood as not excluding plural elements or steps, unless such exclusion is explicitly recited. Furthermore, references to “example embodiment” or “one embodiment” of the present disclosure are not intended to be interpreted as excluding the existence of additional embodiments that also incorporate the recited features.
- As used herein, the terms “software” and “firmware” are interchangeable and include any computer program stored in memory for execution by a processor, including RAM memory, ROM memory, EPROM memory, EEPROM memory, and non-volatile RAM (NVRAM) memory. The above memory types are examples only and are thus not limiting as to the types of memory usable for storage of a computer program.
- The systems and processes are not limited to the specific embodiments described herein. In addition, components of each system and each process can be practiced independent and separate from other components and processes described herein. Each component and process also can be used in combination with other assembly packages and processes.
- The following detailed description illustrates embodiments of the disclosure by way of example and not by way of limitation. It is contemplated that the disclosure has general application to the management and recommendation of agricultural activities.
-
FIG. 1 is a diagram depicting an exampleagricultural environment 100 including a plurality of fields that are monitored and managed using an agricultural intelligence computer system. Exampleagricultural environment 100 includesgrower 110 cultivating a plurality offields 120 including afirst field 122 and asecond field 124.Grower 110 interacts with agriculturalintelligence computer system 150 to effectively managefields 120 and receive recommendations for agricultural activities to effectively utilize fields 120. Agriculturalintelligence computer system 150 utilizes a plurality ofcomputer systems Computer systems grower 110 and only twofields 120 are shown, it should be understood thatmultiple growers 110 havingmultiple fields 120 may utilize agriculturalintelligence computer system 150. - In the example embodiment,
grower 110 utilizesuser devices intelligence computer system 150. In one example,user device 112 is a smart watch, computer-enabled glasses, smart phone, PDA, or “phablet” computing device capable of transmitting and receiving information such as described herein. Alternately,grower 110 may utilizetablet computing device 114, orlaptop 116 to interact with agriculturalintelligence computer system 150. Asuser devices examples user devices intelligence computer system 150. - In an example embodiment, agricultural machine 117 (e.g., combine, tractor, cultivator, plow, subsoiler, sprayer or other machinery used on a farm to help with farming) may be coupled to a computing device 118 (“agricultural machine computing device”) that interacts with agricultural
intelligence computer system 150 in a similar manner asuser devices machine computing device 118 could be a planter monitor, planter controller or a yield monitor. In some examples, the agriculturalmachine computing device 118 could be a planter monitor as disclosed in U.S. Pat. No. 8,738,243, incorporated herein by reference, or in International Patent Application No. PCT/US2013/054506, incorporated herein by reference. In some examples, the agriculturalmachine computing device 118 could be a yield monitor as disclosed in U.S. patent application Ser. No. 14/237,844, incorporated herein by reference.Agricultural machine 117 and agriculturalmachine computing device 118 may provide agriculturalintelligence computer system 150 withfield definition data 160 and field-specific data, as described below. - As described below and herein, grower (or user) 110 interacts with
user devices fields 120. More specifically,grower 110 interacts withuser devices fields 120.Grower 110 providesfield definition data 160 descriptive of the location, layout, geography, and topography offields 120 viauser devices grower 110 may providefield definition data 160 to agriculturalintelligence computer system 150 by accessing a map (served by agricultural intelligence computer system 150) onuser device grower 110 may identifyfield definition data 160 by accessing a map (served by agricultural intelligence computer system 150) onuser device field 122 and field 124) over the map. Such CLU selection or map drawings represent geographic identifiers. In alternative embodiments, the user may identifyfield definition data 160 by accessing field definition data 160 (provided as shape files or in a similar format) from the U.S. Department of Agriculture Farm Service Agency or other source via the user device and providing suchfield definition data 160 to the agricultural intelligence computer system. The land identified by “field definition data” may be referred to as a “field” or “land tract.” As used herein, the land farmed, or “land tract”, is contained in a region that may be referred to as a “field region.” Such a “field region” may be coextensive with, for example, temperature grids or precipitation grids, as used and defined below. - Specifically,
field definition data 160 defines the location offields fields environmental data 170 and/orfield condition data 180. Significant variations may exist in field conditions over small distances including variances in, for example, soil quality, soil composition, soil moisture levels, nitrogen levels, relative maturity of crops, precipitation, wind, temperature, solar exposure, other meteorological conditions, and workability of the field. As such, agriculturalintelligence computer system 150 identifies a location for each offields field definition data 160 and identifies a field region for each offields intelligence computer system 150 utilizes a “grid” architectural model that subdivides land into grid sections that are 2.5 miles by 2.5 miles in dimension. - Accordingly, agricultural
intelligence computer system 150 utilizesfield definition data 160 to identify which field conditions and field data to process and determine for a particular field. In the example,data networks fields field 122 is monitored by external data source 130B and the grid associated withfield 124 is monitored bydata network 130A. Each ofdata networks subsystems data network 130A) and 131B, 132B, 133B, and 134B (associated withexternal data source 130B). Accordingly,field definition data 160associates field 122 withdata network 130A andfield 124 withdata network 130B. Such a distinction of regions covered by adata network data networks environmental data 170 for a particular grid based onfield definition data 160. -
Data networks environmental data 170.Data networks anemometer 135 andrain gauge 136. Accordingly, based onsuch devices data networks environmental data 170 to agriculturalintelligence computer system 150. - Further, the agricultural intelligence computer system may receive additional information from
other data networks 140 to determine field-specific &environmental data 170 andfield condition data 180. In the example,other data networks 140 receive inputs fromaerial monitoring system 145 andsatellite device 146.Such inputs fields 120. - Using field-specific &
environmental data 170 associated with eachfield 122 and 124 (as defined by field definition data 160), agricultural intelligence computer system determinesfield condition data 180 and/or at least one recommendedagricultural activity 190, as described herein.Field condition data 180 substantially represents a response to a request fromgrower 110 for information related to field conditions offields 120 including field weather conditions, field workability conditions, growth stage conditions, soil moisture, and precipitation conditions. Recommendedagricultural activity 190 includes outputs from any of the plurality of services described herein including planting advisor, a nitrogen application advisor, a pest advisor, a field health advisor, a harvest advisor, and a revenue advisor. Accordingly, recommendedagricultural activity 190 may include, for example, suggestions on planting, nitrogen application, pest response, field health remediation, harvesting, and sales and marketing of crops. - Agricultural
intelligence computer system 150 may be implemented using a variety of distinct computing devices such as agriculturalintelligence computing devices intelligence computer system 150 uses a client-server architecture configured for exchanging data over a network (e.g., the Internet) with other computersystems including systems more user devices user devices - The user application may provide server-side functionality, via the network to one or
more user devices user device User devices more fields 120. - In an example embodiment, agricultural
intelligence computer system 150 may comprise one ormore servers intelligence computer system 150 may comprise front-end servers 151,application servers 152,content management servers 153,account servers 154,modeling servers 155,environmental data servers 156, and correspondingdatabases 157. As noted above, environmental data may be obtained fromdata networks intelligence computer system 150 or such environmental data may be obtained from internal data sources or databases integrated within agriculturalintelligence computer system 150. - In an example embodiment,
data networks intelligence computer system 150 via Application Program Interface (API) requests and responses. The frequency at which agriculturalintelligence computer system 150 may consume data published or made available by these third-party hostedservers intelligence computer system 150 may transmit an API call via the network toservers intelligence computer system 150 may process the data to enable components of the agricultural intelligence computer system and user application to handle the data. For example, processing data may involve extracting data from a stream or a data feed and mapping the data to a data structure, such as an XML data structure. Data received and/or processed by agriculturalintelligence computer system 150 may be transmitted to the application platform and stored in an appropriate database. - When an application request is made, one or more
front end servers 151 communicate withapplications servers 151,content management servers 153,account servers 154,modeling servers 155,environmental data servers 156, and correspondingdatabases 157. In one example,modeling servers 155 may generate a predetermined number of simulations (e.g., 10,000 simulations) using, in part, field-specific data and environmental data for one or more fields identified based on field definition data and user information. Depending on the type of application request, the field-specific data and environmental data for one or more fields may be located incontent management servers 153,account servers 154,environmental data servers 156, correspondingdatabases 157, and, in some instances, archived inmodeling servers 155 and/orapplication servers 152. Based on the simulations generated by modelingservers 155, field condition data and/or agricultural intelligence services for one or more fields is provided toapplication servers 152 for transmission to the requestinguser device user device -
FIG. 2 is a block diagram of auser computing device 202, used for managing and recommending agricultural activities, as shown in the agricultural environment ofFIG. 1 .User computing device 202 may include, but is not limited to,smartphone 112,tablet 114,laptop 116, and agricultural computing device 118 (all shown inFIG. 1 ). Alternately,user computing device 202 may be any suitable device used byuser 110. In the example embodiment,user system 202 includes aprocessor 205 for executing instructions. In some embodiments, executable instructions are stored in amemory area 210.Processor 205 may include one or more processing units, for example, a multi-core configuration.Memory area 210 is any device allowing information such as executable instructions and/or written works to be stored and retrieved.Memory area 210 may include one or more computer readable media. -
User system 202 also includes at least onemedia output component 215 for presenting information to user 201.Media output component 215 is any component capable of conveying information to user 201. In some embodiments,media output component 215 includes an output adapter such as a video adapter and/or an audio adapter. An output adapter is operatively coupled toprocessor 205 and operatively coupled to an output device such as a display device, a liquid crystal display (LCD), organic light emitting diode (OLED) display, or “electronic ink” display, or an audio output device, a speaker or headphones. - In some embodiments,
user system 202 includes aninput device 220 for receiving input from user 201.Input device 220 may include, for example, a keyboard, a pointing device, a mouse, a stylus, a touch sensitive panel, a touch pad, a touch screen, a gyroscope, an accelerometer, a position detector, or an audio input device. A single component such as a touch screen may function as both an output device ofmedia output component 215 andinput device 220.User system 202 may also include acommunication interface 225, which is communicatively coupled to a remote device such as agriculturalintelligence computer system 150.Communication interface 225 may include, for example, a wired or wireless network adapter or a wireless data transceiver for use with a mobile phone network, Global System for Mobile communications (GSM), 3G, or other mobile data network or Worldwide Interoperability for Microwave Access (WIMAX). - Stored in
memory area 210 are, for example, computer readable instructions for providing a user interface to user 201 viamedia output component 215 and, optionally, receiving and processing input frominput device 220. A user interface may include, among other possibilities, a web browser and client application. Web browsers enable users, such as user 201, to display and interact with media and other information typically embedded on a web page or a website from agriculturalintelligence computer system 150. A client application allows user 201 to interact with a server application from agriculturalintelligence computer system 150. - As described herein,
user system 202 may be associated with a variety of device characteristics. For example device characteristics may vary in terms of the operating system used byuser device 202 in the initiating of the first transaction, the browser operating system used byuser device 202 in the initiating of the first transaction, a plurality of hardware characteristics associated withuser device 202 in the initiating of the first transaction, the internet protocol address associated withuser device 202 in the initiating of the first transaction, the internet service provider associated withuser device 202 in the initiating of the first transaction, display attributes and characteristics used by a browser used byuser device 202 in the initiating of the first transaction, configuration attributes used by a browser used byuser device 202 in the initiating of the first transaction, and software components used byuser device 202 in the initiating of the first transaction. As further described herein, agricultural intelligence computer system 150 (shown inFIG. 1 ) is capable of receiving device characteristic data related touser system 202 and analyzing such data as described herein. -
FIG. 3 is a block diagram of a computing device, used for managing and recommending agricultural activities, as shown in the agricultural environment ofFIG. 1 .Server system 301 may include, but is not limited to,data network systems intelligence computer system 150. In the example embodiment,server system 301 determines and analyzes characteristics of devices used in payment transactions, as described below. -
Server system 301 includes aprocessor 305 for executing instructions. Instructions may be stored in amemory area 310, for example.Processor 305 may include one or more processing units (e.g., in a multi-core configuration) for executing instructions. The instructions may be executed within a variety of different operating systems on theserver system 301, such as UNIX, LINUX, Microsoft Windows®, etc. It should also be appreciated that upon initiation of a computer-based method, various instructions may be executed during initialization. Some operations may be required in order to perform one or more processes described herein, while other operations may be more general and/or specific to a particular programming language (e.g., C, C#, C++, Java, Python, or other suitable programming languages, etc.). -
Processor 305 is operatively coupled to acommunication interface 315 such thatserver system 301 is capable of communicating with a remote device such as a user system or anotherserver system 301. For example,communication interface 315 may receive requests fromuser systems FIGS. 2 and 3 . -
Processor 305 may also be operatively coupled to astorage device 330.Storage device 330 is any computer-operated hardware suitable for storing and/or retrieving data. In some embodiments,storage device 330 is integrated inserver system 301. For example,server system 301 may include one or more hard disk drives asstorage device 330. In other embodiments,storage device 330 is external toserver system 301 and may be accessed by a plurality ofserver systems 301. For example,storage device 330 may include multiple storage units such as hard disks or solid state disks in a redundant array of inexpensive disks (RAID) configuration.Storage device 330 may include a storage area network (SAN) and/or a network attached storage (NAS) system. - In some embodiments,
processor 305 is operatively coupled tostorage device 330 via astorage interface 320.Storage interface 320 is any component capable of providingprocessor 305 with access tostorage device 330.Storage interface 320 may include, for example, an Advanced Technology Attachment (ATA) adapter, a Serial ATA (SATA) adapter, a Small Computer System Interface (SCSI) adapter, a RAID controller, a SAN adapter, a network adapter, and/or anycomponent providing processor 305 with access tostorage device 330. -
Memory area 310 may include, but are not limited to, random access memory (RAM) such as dynamic RAM (DRAM) or static RAM (SRAM), read-only memory (ROM), erasable programmable read-only memory (EPROM), electrically erasable programmable read-only memory (EEPROM), and non-volatile RAM (NVRAM). The above memory types are exemplary only and are thus not limiting as to the types of memory usable for storage of a computer program. -
FIG. 4 is an example data flowchart of managing and recommending agricultural activities using computing devices ofFIGS. 1, 2, and 3 in the agricultural environment shown inFIG. 1 . As described herein,grower 110 uses anysuitable user device FIG. 1 ) to specifygrower request 401 which is transmitted to agriculturalintelligence computer system 150. As described,grower 110 uses user application or application platform, served onuser device 114, to interact with agriculturalintelligence computer system 150 and make anysuitable grower request 401. As described herein,grower request 401 may include a request forfield condition data 180 and/or a request for a recommendedagricultural activity 190. - The application platform (or user application) may provide server-side functionality, via the network to one or
more user devices 114. In an example embodiment,user device 114 may access the application platform via a web client or a programmatic client.User device 114 may transmit data to, and receive data, from one or more front-end servers such as front end server 151 (shown inFIG. 1 ). In an example embodiment, the data may take the form ofgrower requests 401 anduser information input 402, such as field-specific & environmental data 170 (provided by grower 110), intouser device 114. One or more front-end servers 151 may process grower requests 401 anduser information input 402 and determine whether grower requests 401 are service requests (i.e., requests for recommended agricultural activities 190) or content requests (i.e., requests for field condition data 180), among other things. Content requests may be transmitted to one or more content management servers 153 (shown inFIG. 1 ) for processing. Application requests may be transmitted to one or more application servers 152 (shown inFIG. 1 ). In an example embodiment, application requests may take the form of agrower request 401 to providefield condition data 180 and/or agricultural intelligence services for one or more fields 120 (shown inFIG. 1 ). - In an example embodiment, the application platform may comprise one or
more servers FIG. 1 ) in communication with each other. For example, agriculturalintelligence computer system 150 may comprise front-end servers 151,application servers 152,content management servers 153,account servers 154,modeling servers 155,environmental data servers 156, and corresponding databases 157 (all shown inFIG. 1 ). Further, the agricultural intelligence computer system includes a plurality ofagricultural intelligence modules agricultural intelligence modules harvest advisor module 158 andrevenue advisor module 159. In further examples, planting advisor module, nitrogen application advisor module, pest and disease advisor module, and field health advisor module may be represented in agriculturalintelligence computer system 150. As noted above, environmental data may be obtained fromdata networks intelligence computer system 150 or it may be obtained from internal data sources integrated within agriculturalintelligence computer system 150. - In an example embodiment,
data networks intelligence computer system 150 via Application Program Interface (API) requests and responses. The frequency at which agriculturalintelligence computer system 150 may consume data published or made available by these third-party hostedservers intelligence computer system 150 when new data is made available. Agriculturalintelligence computer system 150 may alternately transmit an API call via the network toexternal data sources 130 hosting the data and receive the new data in response to the call. To the extent needed, agriculturalintelligence computer system 150 may process the data to enable components of the application platform to handle the data. For example, processing data may involve extracting data from a stream or a data feed and mapping the data to a data structure, such as an XML data structure. Data received and/or processed by agriculturalintelligence computer system 150 may be transmitted to the application platform and stored in an appropriate database. - When an application request is made, one or
more application servers 152 communicate withcontent management servers 153,account servers 154,modeling servers 155,environmental data servers 156, and correspondingdatabases 157. In one example,modeling servers 155 may generate a predetermined number of simulations (e.g., 10,000 simulations) using, in part, field-specific &environmental data 170 for one ormore fields 120 identified based onfield definition data 160 anduser input information 402. Depending on the type ofgrower request 401, field-specific &environmental data 170 for one ormore fields 120 may be located incontent management servers 153,account servers 154,modeling servers 155,environmental data servers 156, and correspondingdatabases 157, and, in some instances, archived in theapplication servers 152. Based on the simulations generated by modelingservers 155,field condition data 180 and/or agricultural intelligence services (i.e., recommended agricultural activities 190) for one ormore fields 120 is provided toapplication servers 152 for transmission to requestinguser device 114 via the network. More specifically, the user may useuser device 114 to access a plurality of windows or displays showingfield condition data 180 and/or recommendedagricultural activities 190, as described below. - Although the aforementioned application platform has been configured with various exemplary embodiments above, one skilled in the art will appreciate that any configuration of servers may be possible and that example embodiments of the present disclosure need not be limited to the configurations disclosed herein.
- In order to provide
field condition data 180, agriculturalintelligence computer system 150 runs a plurality of field conditiondata analysis modules 410. Field condition analysis modules include fieldweather data module 411 which is configured to determine weather conditions for eachfield 120 identified bygrower 110. Agriculturalintelligence computer system 150 uses fieldweather data module 411 to determine field temperature, wind, humidity, and dew point. Agriculturalintelligence computer system 150 also uses fieldweather data module 411 to determine forecasted weather conditions including field temperature, wind, humidity, and dew point for hourly projected intervals, daily projected intervals, or any interval specified bygrower 110.Field precipitation module 415,field workability module 412, and fieldgrowth stage module 413 also receive and process the forecasted weather conditions. Near-term forecasts are determined using a meteorological model (e.g., the Microcast model) while long-term projections are determined using historical analog simulations. - Agricultural
intelligence computer system 150 uses grid temperatures to determine temperature values. Known research shows that using grid techniques provides more accurate temperature measurements than point-based temperature reporting. Temperature grids are typically square physical regions, typically 2.5 miles by 2.5 miles. Agriculturalintelligence computer system 150 associates fields (e.g., fields 122 or 124) with a temperature grid that contains the field. Agriculturalintelligence computer system 150 identifies a plurality of weather stations that are proximate to the temperature grid. Agriculturalintelligence computer system 150 receives temperature data from the plurality of weather stations. The temperatures reported by the plurality of weather stations are weighted based on their relative proximity to the grid such that more proximate weather stations have higher weights than less proximate weather stations. Further, the relative elevation of the temperature grid is compared to the elevation of the plurality of weather stations. Temperature values reported by the plurality of weather stations are adjusted in response to the relative difference in elevation. In some examples, the temperature grid includes or is adjacent to a body of water. Bodies of water are known to cause a reduction in the temperature of an area. Accordingly, when a particular field is proximate to a body of water as compared to the weather station providing the temperature reading, the reported temperature for the field is adjusted downwards to account for the closer proximity to the body of water. - Precipitation values are similarly determined using precipitation grids that utilize meteorological radar data. Precipitation grids have similar purposes and characteristics as temperature grids. Specifically, agricultural
intelligence computer system 150 uses available data sources such as the National Weather Service's NEXRAD Doppler radar data. Agriculturalintelligence computer system 150 further validates and calibrates reported data with ground station and satellite data. In the example embodiment, the Doppler radar data is obtained for the precipitation grid. The Doppler radar data is used to determine an estimate of precipitation for the precipitation grid. The estimated precipitation is adjusted based on other data sources such as other weather radar sources, ground weather stations (e.g., rain gauges), satellite precipitation sources (e.g., the National Oceanic and Atmospheric Administration's Satellite Applications and Research), and meteorological sources. By utilizing multiple distinct data sources, more accurate precipitation tracking may be accomplished. - Current weather conditions and forecasted weather conditions (hourly, daily, or as specified by the user) are displayed on the user device graphically along with applicable information regarding the specific field, such as field name, crop, acreage, field precipitation, field workability, field growth stage, soil moisture, and any other field definition data or field-specific &
environmental data 170 that the user may specify. Such information may be displayed on the user device in one or more combinations and level of detail as specified by the user. - In an example embodiment, temperature can be displayed as high temperatures, average temperatures, and low temperatures over time. Temperature can be shown during a specific time and/or date range and/or harvest year and compared against prior times, years, including a 5 year average, a 15 year average, a 30 year average or as specified by the user.
- In an example embodiment,
field precipitation module 415 determines and provides the amount of precipitation and/or accumulated precipitation over time. Precipitation can be shown during a specific time period and/or date range and/or harvest year and compared against prior times, years, including a 5 year average, a 15 year average, a 30 year average or as specified by the user. Precipitation can also be displayed as past and future radar data. In an example embodiment, past radar may be displayed over the last 1.5 hours or as specified by the user. Future radar may be displayed over the next 6 hours or as specified by the user. Radar may be displayed as an overlay of an aerial image map showing the user's one or more fields where the user has the ability to zoom in and out of the map. Radar can be displayed as static at intervals selected by the user or continuously over intervals selected by the user. The underlying radar data received and/or processed by the agricultural intelligence computer system may be in the form of Gridded Binary (GRIB) files that includes forecast reflectivity files, precipitation type, and precipitation-typed reflectivity values. - As part of
field condition data 180 provided, agriculturalintelligence computer system 150 runs or executes fieldworkability data module 412, which processes field-specific &environmental data 170 anduser information output 402 to determine the degree to which a field or section of a field (associated with the field definition data) may be worked for a given time of year using machinery or other implements. In an example embodiment, agriculturalintelligence computer system 150 retrieves field historical precipitation data over a predetermined period of time, field predicted precipitation over a predetermined period of time, and field temperatures over a predetermined period of time. The retrieved data is used to determine one or more workability indexes as determined by fieldworkability data module 412. - In an example embodiment, the workability index may be used to derive three values of workability for particular farm activities. The value of “Good” workability indicates high likelihood that field conditions are acceptable for use of machinery or a specified activity during an upcoming time interval. The value of “Check” workability indicates that field conditions may not be ideal for the use of machinery or a specified activity during an upcoming time interval. The value of “Stop” workability indicates that field conditions are not suitable for work or a specified activity during an upcoming time interval.
- Determined values of workability may vary depending upon the farm activity. For example, planting and tilling typically require a low level of muddiness and may require a higher workability index to achieve a value of “Good” than activities that allow for a higher level of muddiness. In some embodiments, workability indices are distinctly calculated for each activity based on a distinct set of factors. For example, a workability index for planting may correlate to predicted temperature over the next 60 hours while a workability index for harvesting may be correlated to precipitation alone. In some examples, user may be prompted at the user device to answer questions regarding field activities if such information has not already been provided to agricultural
intelligence computer system 150. For example, a user may be asked what field activities are currently in use. Depending upon the response, agriculturalintelligence computer system 150 may adjust its calculations of the workability index because of the user's activities, thereby incorporating the feedback of the user into the calculation of the workability index. Alternately, agriculturalintelligence computer system 150 may adjust the recommendations made to the user for activities. In a further example, agriculturalintelligence computer system 150 may recommend that the user stop such activities based on the responses. - As part of
field condition data 180 provided, agriculturalintelligence computer system 150 runs or executes field growth stage data module 413 (e.g., for corn, vegetative (VE-VT) and reproductive (R1-R6) growth stages). Field growthstage data module 413 receives and processes field-specific &environmental data 170 anduser information input 402 to determine timings of key farming decisions. Agriculturalintelligence computer system 150 computes crop progression for each crop through stages of growth (agronomic stages) by tracking the impact of weather on the phenomenological development of the crop from planting through harvest. - In the example embodiment, agricultural
intelligence computer system 150 uses the planting date entered by the user device. Alternatively, agriculturalintelligence computer system 150 may estimate the planting date using a system algorithm. Specifically, the planting date may be estimated based on agronomic stage data and planting practices in the region associated with the field definition data. The planting practices may be received from a data service such as a university data network that monitors typical planting techniques for a region. Agriculturalintelligence computer system 150 further uses data regarding the user's farming practices within the current season and for historical seasons, thereby facilitating historical analysis. Agriculturalintelligence computer system 150 determines a relative maturity value of the crops based on expected heat units over the growing season in light of the planting date, the user's farming practices, and field-specific &environmental data 170. As heat is a proxy for energy received by crops, agriculturalintelligence computer system 150 calculates expected heat units for crops and determines a development of maturity of the crops. - As part of
field condition data 180 provided, agriculturalintelligence computer system 150 uses and executes soilmoisture data module 414. Soilmoisture data module 414 is configured to determine the percent of total water capacity available to the crop that is present in the soil of the field. Soilmoisture data module 414 initializes output at the beginning of the growing season based on environmental data in agriculturalintelligence computer system 150 at that time, such as data from the North American Land Data Assimilation System, and field-specific &environmental data 170. - Soil moisture values are then adjusted, at least daily, during the growing season by tracking moisture entering the soil via precipitation and moisture leaving the soil via evapotranspiration (ET). Precipitation excludes a calculated amount of water that never enters the soil because it is lost as runoff. A runoff value is determined based on the precipitation amount over time and a curve determined by the USDA classification of soil type. The agricultural intelligence computer systems accounts for a user's specific field-specific &
environmental data 170 related to soil to determine runoff and the runoff curve for the specific field. Lighter, sandier soils allow greater precipitation water infiltration and experience less runoff during heavy precipitation events than heavier, more compact soils. Heavier or denser soil types have lower precipitation infiltration rates and lose more precipitation to runoff on days with large precipitation events. - Daily evapotranspiration associated with a user's specific field is calculated based on a version of the standard Penman-Monteith ET model. The total amount of water that is calculated as leaving the soil through evapotranspiration on a given day is based on the following:
- 1. Maximum and minimum temperatures for the day: Warmer temperatures result in greater evapotranspiration values than cooler temperatures.
- 2. Latitude: During much of the corn growing season, fields at more northern latitudes experience greater solar radiation than fields at more southern latitudes due to longer days. But fields at more northern latitudes also get reduced radiation due to earth tilting. Areas with greater net solar radiation values will have relatively higher evapotranspiration values than areas with lower net solar radiation values.
- 3. Estimated crop growth stage: Growth stages around pollination provide the highest potential daily evapotranspiration values while growth stages around planting and late in grain fill result in relatively lower daily evapotranspiration values because the crop uses less water in these stages of growth.
- 4. Current soil moisture: The agricultural intelligence computer system's model accounts for the fact that crops conserve and use less water when less water is available in the soil. The reported soil moisture values that are above a certain percentage, determined by crop type, provide the highest potential evapotranspiration values and potential evapotranspiration values decrease as soil moisture values approach 0%. As soil moisture values fall below this percentage, corn will start conserving water and using soil moisture at less than optimal rates. This water conservation by the plant increases as soil moisture values decrease, leading to lower and lower daily evapotranspiration values.
- 5. Wind: Evapotranspiration takes into account wind; however, evapotranspiration is not as sensitive to wind as to the other conditions. In an example embodiment, a set wind speed of 2 meters per second is used for all evapotranspiration calculations.
- Agricultural
intelligence computer system 150 is additionally configured to provide alerts based on weather and field-related information. Specifically, the user may define a plurality of thresholds for each of a plurality of alert categories. When field condition data indicates that the thresholds have been exceeded, the user device will receive alerts. Alerts may be provided via the application (e.g., notification upon login, push notification), email, text messages, or any other suitable method. Alerts may be defined for crop cultivation monitoring, for example, hail size, rainfall, overall precipitation, soil moisture, crop scouting, wind conditions, field image, pest reports or disease reports. Alternately, alerts may be provided for crop growth strategy. For example, alerts may be provided based on commodity prices, grain prices, workability indexes, growth stages, and crop moisture content. In some examples, an alert may indicate a recommended course of action. For example, the alert may recommend that field activities (e.g., planting, nitrogen application, pest and disease treatment, irrigation application, scouting, or harvesting) occur within a particular period of time. Agriculturalintelligence computer system 150 is also configured to receive information on farming activities from, for example, the user device, an agricultural machine, or any other source. Accordingly, alerts may also be provided based on logged farm activity such as planting, nitrogen application, spraying, irrigation, scouting, or harvesting. In some examples, alerts may be provided regardless of thresholds to indicate certain field conditions. In one example, a daily precipitation, growth stage, field image or temperature alert may be provided to the user device. - Agricultural
intelligence computer system 150 is further configured to generate a plurality of reports based onfield condition data 180. Such reports may be used by the user to improve strategy and decision-making in farming. The reports may include reports on crop growth stage, temperature, humidity, soil moisture, precipitation, workability, and pest risk. The reports may also include one or morefield definition data 160, field-specific &environmental data 170, scouting and logging events,field condition data 180, summary of agricultural intelligence services (e.g., recommended agricultural activities 190) or FSA Form 578. - Agricultural
intelligence computer system 150 is also configured to receive supplemental information from the user device. For example, a user may provide logging or scouting events regarding the fields associated with the field definition data. The user may access a logging application at the user device and update agriculturalintelligence computer system 150. In one embodiment, the user accesses agriculturalintelligence computer system 150 via a user device while being physically located in a field to enter field-specific data. The agricultural intelligence computer system might automatically display and transmit the date and time and field definition data associated with the field-specific data, such as geographic coordinates and boundaries. The user may provide general data for activities including field, location, date, time, crop, images, and notes. The user may also provide data specific to particular activities such as planting, nitrogen application, pesticide application, harvesting, scouting, and current weather observations. Such supplemental information may be associated with the other data networks and used by the user for analysis. - Agricultural
intelligence computer system 150 is additionally configured to display scouting and logging events related to the receipt of field-specific data from the user via one or more agricultural machines or agricultural machine devices that interacts with agriculturalintelligence computer system 150 or via the user device. Such information can be displayed as specified by the user. In one example, the information is displayed on a calendar on the user device, wherein the user can obtain further details regarding the information as necessary. In another example, the information is displayed in a table on the user device, wherein the user can select the specific categories of information that the user would like displayed. - Agricultural
intelligence computer system 150 is additionally configured to provide agricultural intelligence services related to planting. More specifically, agriculturalintelligence computer system 150 includes a plurality of agricultural intelligence modules 420 (or agricultural activity modules) that may be used to determine recommendedagricultural activities 190 which are provided togrower 110. In at least some examples,agricultural intelligence modules 420 may be similar toagricultural intelligence modules 158 and 159 (shown inFIG. 1 ). In at least some examples,planting advisor module 421 may be similar toagricultural intelligence modules 158 and 159 (shown inFIG. 1 ). Suchagricultural intelligence modules 420 may be referred to as agricultural intelligence services and may include plantingadvisor module 421, nitrogenapplication advisor module 422,pest advisor module 423, fieldhealth advisor module 424, andharvest advisor module 425. In one example embodiment,planting advisor module 421 processes field-specific &environmental data 170 anduser information input 402 to determine and provide planting date recommendations. The recommendations are specific to the location of the field and adapt to the current field condition data. - In one embodiment,
planting advisor module 421 receives one or more of the following data points for each field identified by the user (as determined from field definition data) in order to determine and provide such planting date recommendations: - 1. A first set of data points is seed characteristic data. Seed characteristic data may include any relevant information related to seeds that are planted or will be planted. Seed characteristic data may include, for example, seed company data, seed cost data, seed population data, seed hybrid data, seed maturity level data, seed disease resistance data, and any other suitable seed data. Seed company data may refer to the manufacturer or provider of seeds. Seed cost data may refer to the price of seeds for a given quantity, weight, or volume of seeds. Seed population data may include the number of seeds planted (or intended to be planted) or the density of seeds planted (or intended to be planted). Seed hybrid data may include any information related to the biological makeup of the seeds (i.e., which plants have been hybridized to form a given seed.) Seed maturity level data may include, for example, a relative maturity level of a given seed (e.g., a comparative relative maturity (“CRM”) value or a silk comparative relative maturity (“silk CRM”)), growing degree units (“GDUs”) until a given stage such as silking, mid-pollination, black layer, or flowering, and a relative maturity level of a given seed at physiological maturity (“Phy. CRM”). Disease resistance data may include any information related to the resistance of seeds to particular diseases. In the example embodiment, disease resistance data includes data related to the resistance to Gray Leaf Spot, Northern Leaf Blight, Anthracnose Stalk Rot, Goss's Wilt, Southern Corn Leaf Blight, Eyespot, Common Rust, Anthracnose Leaf Blight, Southern Rust, Southern Virus Complex, Stewart's Leaf Blight, Corn Lethal Necrosis, Headsmut, Diplodia Ear Rot, and Fusarium Crown Rot. Other suitable seed data may include, for example, data related to, grain drydown, stalk strength, root strength, stress emergence, staygreen, drought tolerance, ear flex, test eight, plant height, ear height, mid-season brittle stalk, plant vigor, fungicide response, growth regulators sensitivity, pigment inhibitors, sensitivity, sulfonylureas sensitivity, harvest timing, kernel texture, emergence, harvest appearance, harvest population, seedling growth, cob color, and husk cover.
- 2. A second set of data points is field-specific data related to soil composition. Such field-specific data may include measurements of the acidity or basicity of soil (e.g., pH levels), soil organic matter levels (“OM” levels), and cation exchange capacity levels (“CEC” levels).
- 3. A third set of data points is field-specific data related to field data. Such field-specific data may include field names and identifiers, soil types or classifications, tilling status, irrigation status.
- 4. A fourth set of data points is field-specific data related to historical harvest data. Such field-specific data may include crop type or classification, harvest date, actual production history (“APH”), yield, grain moisture, and tillage practice.
- 5. In some examples, users may be prompted at the user device to provide a fifth set of data points by answering questions regarding desired planting population (e.g., total crop volume and total crop density for a particular field) and/or seed cost, expected yield, and indication of risk preference (e.g., general or specific: user is willing to risk a specific number of bushels per acre to increase the chance of producing a specific larger number of bushels per acre) if such information has not already been provided to the agricultural intelligence computer system.
-
Planting advisor module 421 receives and processes the sets of data points to simulate possible yield potentials. Possible yield potentials are calculated for various planting dates.Planting advisor module 421 additionally utilizes additional data to generate such simulations. The additional data may include simulated weather between the planting data and harvesting date, field workability, seasonal freeze risk, drought risk, heat risk, excess moisture risk, estimated soil temperature, and/or risk tolerance. Risk tolerance may be calculated for a high profit/high risk scenario, a low risk scenario, a balanced risk/profit scenario, and a user defined scenario.Planting advisor module 421 generates such simulations for each planting date and displays a planting date recommendation for the user on the user device. The recommendation includes the recommended planting date, projected yield, relative maturity, and graphs the projected yield against planting date. In some examples, the planting advisor module also graphs the projected yield against the planting date for spring freeze risk, the planting date for fall freeze risk, the planting date for drought risk, the planting date for heat risk, the planting date for excess moisture risk, the planting date for estimated soil temperature, and the planting date for the various risk tolerance levels.Planting advisor module 421 provides the option of modeling and displaying alternative yield scenarios for planting data and projected yield by modifying one or more data points associated with seed characteristic data, field-specific data, desired planting population and/or seed cost, expected yield, and/or indication of risk preference. The alternative yield scenarios may be displayed and graphed on the user device along with the original recommendation. - Agricultural
intelligence computer system 150 is additionally configured to provide agricultural intelligence services related to soil by using nitrogenapplication advisor module 422. In at least some examples, nitrogenapplication advisor module 422 may be similar toagricultural intelligence modules 158 and 159 (shown inFIG. 1 ). Nitrogenapplication advisor module 422 determines potential needs for nitrogen in the soil and recommends nitrogen application practices to a user. More specifically, nitrogenapplication advisor module 422 is configured to identify conditions when crop needs cannot be met by nitrogen present in the soil. In one example embodiment, nitrogenapplication advisor module 422 provides recommendations for side dressing or spraying, such as date and rate, specific to the location of the field and adapt to the current field condition data. In one embodiment, nitrogenapplication advisor module 422 is configured to receive one or more of the following data points for each field identified by the user (as determined from field definition data): - 1. A first set of data points includes environmental information. Environmental information may include information related to weather, precipitation, meteorology, soil and crop phenology.
- 2. A second set of data points includes field-specific data related to field data. Such field-specific data may include field names and identifiers, soil types or classifications, tilling status, irrigation status.
- 3. A third set of data points includes field-specific data related to historical harvest data. Such field-specific data may include crop type or classification, harvest date, actual production history (“APH”), yield, grain moisture, and tillage practice.
- 4. A fourth set of data points is field-specific data related to soil composition. Such field-specific data may include measurements of the acidity or basicity of soil (e.g., pH levels), soil organic matter levels (“OM” levels), and cation exchange capacity levels (“CEC” levels).
- 5. A fifth set of data points is field-specific data related to planting data. Such field-specific data may include planting date, seed type or types, relative maturity (RM) levels of planted seed(s), and seed population.
- 6. A sixth set of data points is field-specific data related to nitrogen data. Such field-specific data may include nitrogen application dates, nitrogen application amounts, and nitrogen application sources.
- 7. A seventh set of data points is field-specific data related to irrigation data. Such field-specific data may include irrigation application dates, irrigation amounts, and irrigation sources.
- Based on the sets of data points, nitrogen
application advisor module 422 determines a nitrogen application recommendation. As described below, the recommendation includes a list of fields with adequate nitrogen, a list of fields with inadequate nitrogen, and a recommended nitrogen application for the fields with inadequate nitrogen. - In some examples, users may be prompted at the user device to answer questions regarding nitrogen application (e.g., side-dressing, spraying) practices and costs, such as type of nitrogen (e.g., Anhydrous Ammonia, Urea, UAN (Urea Ammonium Nitrate) 28%, 30% or 32%, Ammonium Nitrate, Ammonium Sulphate, Calcium Ammonium Sulphate), nitrogen costs, latest growth stage of crop at which nitrogen can be applied, application equipment, labor costs, expected crop price, tillage practice (e.g., type (conventional, no till, reduced, strip) and amount of surface of the field that has been tilled), residue (the amount of surface of the field covered by residue), related farming practices (e.g., manure application, nitrogen stabilizers, cover crops) as well as prior crop data (e.g., crop type, harvest date, Actual Production History (APH), yield, tillage practice), current crop data (e.g., planting date, seed(s) type, relative maturity (RM) of planted seed(s), seed population), soil characteristics (pH, OM, CEC) if such information has not already been provided to the agricultural intelligence computer system. For certain questions, such as latest growth stage of crop at which nitrogen can be applied, application equipment, labor costs, the user has the option to provide a plurality of alternative responses to that the agricultural intelligence computer system can optimize the nitrogen application advisor recommendation.
- Using the environmental information, field-specific data, nitrogen application practices and costs, prior crop data, current crop data, and/or soil characteristics, nitrogen
application advisor module 422 identifies the available nitrogen in each field and simulates possible nitrogen application practices, dates, rates, and next date on which workability for a nitrogen application is “Green” taking into account predicted workability and nitrogen loss through leaching, denitrification and volatilization. Nitrogenapplication advisor module 422 generates and displays on the user device a nitrogen application recommendation for the user. The recommendation includes: - 1. The list of fields having enough nitrogen, including for each field the available nitrogen, last application data, and the last nitrogen rate applied.
- 2. The list of fields where nitrogen application is recommended, including for each field the available nitrogen, recommended application practice, recommended application dates, recommended application rate, and next data on which workability for the nitrogen application is “Green.”
- 3. The recommended date of nitrogen application for each field. In some examples the recommended date may be optimized for either yield or return on investment. In some examples the recommended date may be the date at which minimum predicted nitrogen levels in the field will reach a threshold minimum value without intervening nitrogen application. In some examples recommended dates may be excluded or selected based upon available equipment as indicated by the user; for example, where no equipment for applying nitrogen is available past a given growth stage, dates are preferably recommended before the predicted date at which that growth stage will be reached.
- 4. The recommended rate of nitrogen application for each field for each possible or recommended application date. The recommended rate of nitrogen application may be optimized for either yield or return on investment.
- The user has the option of modeling and displaying nitrogen lost (total and divided into losses resulting from volatilization, denitrification, and leaching) and crop use (“uptake”) of nitrogen over a specified time period (predefined or as defined by the user) for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user. The user has the option of modeling and displaying estimated return on investment for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user. The alternative nitrogen application scenarios may be displayed and graphed on the user device along with the original recommendation. The user has the further option of modeling and displaying estimated yield benefit (minimum, average, and maximum) for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user. The user has the further option of modeling and displaying estimated available nitrogen over any time period specified by the user for the recommended nitrogen application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user. The user has the further option of running the nitrogen application advisor (using the nitrogen application advisor) for one or more sub-fields or management zones within a field.
- Agricultural
intelligence computer system 150 is additionally configured to provide agricultural intelligence services related to pest and disease by usingpest advisor module 423. In at least some examples,pest advisor module 423 may be similar toagricultural intelligence modules 158 and 159 (shown inFIG. 1 ).Pest advisor module 423 is configured to identify risks posed to crops by pest damage and/or disease damage. In an example embodiment,pest advisor module 423 identifies risks caused by the pests that cause that the most economic damage to crops in the U.S. Such pests include, for example, corn rootworm, corn earworm, soybean aphid, western bean cutworm, European corn borer, armyworm, bean leaf beetle, Japanese beetle, and twospotted spider mite. In some examples, the pest and disease advisor provides supplemental analysis for each pest segmented by growth stages (e.g., larval and adult stages).Pest advisor module 423 also identifies disease risks caused by the diseases that cause that the most economic damage to crops in the U.S. Such diseases include, for example, Gray Leaf Spot, Northern Leaf Blight, Anthracnose Stalk Rot, Goss's Wilt, Southern Corn Leaf Blight, Eyespot, Common Rust, Anthracnose Leaf Blight, Southern Rust, Southern Virus Complex, Stewart's Leaf Blight, Corn Lethal Necrosis, Headsmut, Diplodia Ear Rot, Fusarium Crown Rot. The pest advisor is also configured to recommend scouting practices and treatment methods to respond to such pest and disease risks.Pest advisor module 423 is also configured to provide alerts based on observations of pests in regions proximate to the user's fields. - In one embodiment,
pest advisor module 423 may receive one or more of the following sets of data for each field identified by the user (as determined from field definition data): - 1. A first set of data points is environmental information. Environmental information includes information related to weather, precipitation, meteorology, crop phenology and pest and disease reporting. In some examples, pest and disease reports may be received from a third-party server or data source such as a university or governmental reporting service.
- 2. A second set of data points is seed characteristic data. Seed characteristic data may include any relevant information related to seeds that are planted or will be planted. Seed characteristic data may include, for example, seed company data, seed cost data, seed population data, seed hybrid data, seed maturity level data, seed disease resistance data, and any other suitable seed data. Seed company data may refer to the manufacturer or provider of seeds. Seed cost data may refer to the price of seeds for a given quantity, weight, or volume of seeds. Seed population data may include the number of seeds planted (or intended to be planted) or the density of seeds planted (or intended to be planted). Seed hybrid data may include any information related to the biological makeup of the seeds (i.e., which plants have been hybridized to form a given seed.) Seed maturity level data may include, for example, a relative maturity level of a given seed (e.g., a comparative relative maturity (“CRM”) value or a silk comparative relative maturity (“silk CRM”)), growing degree units (“GDUs”) until a given stage such as silking, mid-pollination, black layer, or flowering, and a relative maturity level of a given seed at physiological maturity (“Phy. CRM”). Disease resistance data may include any information related to the resistance of seeds to particular diseases. In the example embodiment, disease resistance data includes data related to the resistance to Gray Leaf Spot, Northern Leaf Blight, Anthracnose Stalk Rot, Goss's Wilt, Southern Corn Leaf Blight, Eyespot, Common Rust, Anthracnose Leaf Blight, Southern Rust, Southern Virus Complex, Stewart's Leaf Blight, Corn Lethal Necrosis, Headsmut, Diplodia Ear Rot, and Fusarium Crown Rot. Other suitable seed data may include, for example, data related to, grain drydown, stalk strength, root strength, stress emergence, staygreen, drought tolerance, ear flex, test eight, plant height, ear height, mid-season brittle stalk, plant vigor, fungicide response, growth regulators sensitivity, pigment inhibitors, sensitivity, sulfonylureas sensitivity, harvest timing, kernel texture, emergence, harvest appearance, harvest population, seedling growth, cob color, and husk cover.
- 3. A third set of data points is field-specific data related to planting data. Such field-specific data may include, for example, planting dates, seed type, relative maturity (RM) of planted seed, and seed population.
- 4. A fourth set of data points is field-specific data related to pesticide data. Such field-specific data may include, for example, pesticide application date, pesticide product type (specified by, e.g., EPA registration number), pesticide formulation, pesticide usage rate, pesticide acres tested, pesticide amount sprayed, and pesticide source.
- In some examples, users may be prompted at the user device to answer questions regarding pesticide application practices and costs, such as type of product type, application date, formulation, rate, acres tested, amount, source, costs, latest growth stage of crop at which pesticide can be applied, application equipment, labor costs, expected crop price as well as current crop data (e.g., planting date, seed(s) type, relative maturity (RM) of planted seed(s), seed population) if such information has not already been provided to the agricultural intelligence computer system. Accordingly,
pest advisor module 423 receives such data from user devices. For certain questions, such as latest growth stage of crop at which pesticide can be applied, application equipment, labor costs, the user has the option to provide a plurality of alternative responses to that agriculturalintelligence computer system 150 can optimize the pest and disease advisor recommendation. -
Pest advisor module 423 is configured to receive and process all such sets of data points and received user data and simulate possible pesticide application practices. The simulation of possible pesticide practices includes dates, rates, and next date on which workability for a pesticide application is “Green” taking into account predicted workability.Pest advisor module 423 generates and displays on the user device a scouting and treatment recommendation for the user. The scouting recommendation includes daily (or as specified by the user) times to scout for specific pests and diseases. The user has the option of displaying a specific subset of pests and diseases as well as additional information regarding a specific pest or disease. The treatment recommendation includes the list of fields where a pesticide application is recommended, including for each field the recommended application practice, recommended application dates, recommended application rate, and next data on which workability for the pesticide application is “Green.” The user has the option of modeling and displaying estimated return on investment for the recommended pesticide application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user. The alternative pesticide application scenarios may be displayed and graphed on the user device along with the original recommendation. The user has the further option of modeling and displaying estimated yield benefit (minimum, average, and maximum) for the recommended pesticide application versus one or more alternative scenarios based on a custom application practice, date and rate entered by the user. - Agricultural
intelligence computer system 150 is also configured to provide information regarding the health and quality of areas offields 120. In at least some examples, fieldhealth advisor module 424 may be similar toagricultural intelligence modules 158 and 159 (shown inFIG. 1 ). Fieldhealth advisor module 424 identifies crop health quality over the course of the season and uses such crop health determinations to recommend scouting or investigation in areas of poor field health. More specifically, fieldhealth advisor module 424 receives and processes field image data to determine, identify, and provide index values of biomass health. The index values of biomass health may range from zero (indicating no biomass) to 1 (indicating the maximum amount of biomass). In an example embodiment, the index value has a specific color scheme, so that every image has a color-coded biomass health scheme (e.g., brown areas show the areas in the field with the lowest relative biomass health). In one embodiment, fieldhealth advisor module 424 may receive one or more of the following data points for each field identified by the user (as determined from field definition data): - 1. A first set of data points includes environmental information. Such environmental information includes information related to satellite imagery, aerial imagery, terrestrial imagery and crop phenology.
- 2. A second set of data points includes field-specific data related to field data. Such field-specific data may include field and soil identifiers such as field names, and soil types.
- 3. A third set of data points includes field-specific data related to soil composition data. Such field-specific data may include measurements of the acidity or basicity of soil (e.g., pH levels), soil organic matter levels (“OM” levels), and cation exchange capacity levels (“CEC” levels).
- 4. A fourth set of data points includes field-specific data related to planting data. Such field-specific data may include, for example, planting dates, seed type, relative maturity (RM) of planted seed, and seed population.
- Field
health advisor module 424 receives and processes all such data points (along with field image data) to determine and identify a crop health index for each location in each field identified by the user each time a new field image is available. In an example embodiment, fieldhealth advisor module 424 determines a crop health index as a normalized difference vegetation index (“NDVI”) based on at least one near-infrared (“NIR”) reflectance value and at least one visible spectrum reflectance value at each raster location in the field. In another example embodiment, the crop health index is a NDVI based on multispectral reflectance. - Field
health advisor module 424 generates and displays on the user device the health index map as an overlay on an aerial map for each field identified by the user. In an example embodiment, for each field, the field health advisor module will display field image date, growth stage of crop at that time, soil moisture at that time, and health index map as an overlay on an aerial map for the field. In an example embodiment, the field image resolution is between 5 m and 0.25 cm. The user has the option of modeling and displaying a list of fields based on field image date and/or crop health index (e.g., field with lowest overall health index values to field with highest overall health index values, field with highest overall health index values to field with lowest overall health index values, lowest health index value variability within field, highest health index value variability within field, or as specified by the user). The user also has the option of modeling and displaying a comparison of crop health index for a field over time (e.g., side-by-side comparison, overlay comparison). In an example embodiment, the field health advisor module provides the user with the ability to select a location on a field to get more information about the health index, soil type or elevation at a particular location. In an example embodiment, the field health advisor module provides the user with the ability to save a selected location, the related information, and a short note so that the user can retrieve the same information on the user device while in the field. - Agricultural
intelligence computer system 150 is additionally configured to provide agricultural intelligence services related to timing and mechanisms of harvest usingharvest advisor module 425. In at least some examples,harvest advisor module 425 may be similar toagricultural intelligence modules 158 and 159 (shown inFIG. 1 ) and more specifically to harvestadvisor module 158. - Harvest
advisor computing module 425 is in data communication with agriculturalintelligence computing system 150. Agriculturalintelligence computing system 150 captures and stores fielddefinition data 160, field-specific &environmental data 170, andfield condition data 180 within its memory device. Harvestadvisor computing module 425 receives and processesfield definition data 160, field-specific &environmental data 170, andfield condition data 180 from agriculturalintelligence computing system 150 to provide (i) grain moisture value predictions during drydown of a particular field prior to harvest, (ii) a projected date when the particular field will reach a target moisture value, and (iii) harvest recommendations and planning for one or more fields. More specifically, harvestadvisor computing module 425 is configured to: (i) identify an initial date of a crop within a field (e.g., a black layer date); (ii) identifying an initial moisture value associated with the crop and the initial date; (iii) identify a target harvest moisture value associated with the crop; (iv) receive field condition data associated with the field; (v) compute a target harvest date for the crop based at least in part on the initial date, the initial moisture value, the field condition data, and the target harvest moisture value, wherein the target harvest date indicates a date at which the crop will have a present moisture value approximately equal to the target harvest moisture value; and (vi) display the target harvest date for the crop to the grower for harvest planning. The target harvest moisture value represents the value at whichgrower 110 desires the crop to be when harvested (e.g., at harvest date). Thus, the harvestadvisor computing module 425 assists the grower in projecting approximately when a given field will be ready for harvest by projecting moisture values over time and considering both past weather data and future weather predictions at the given field. - Agricultural
intelligence computer system 150 is additionally configured to provide agricultural intelligence services related to selling and marketing crops usingrevenue advisor module 426. In at least some examples,revenue advisor module 426 may be similar toagricultural intelligence modules 158 and 159 (shown inFIG. 1 ) and more specifically torevenue advisor module 159. -
Revenue advisor module 426 is in data communication with agriculturalintelligence computing system 150. Agriculturalintelligence computing system 150 captures and stores fielddefinition data 160, field-specific &environmental data 170, andfield condition data 180 within its memory device.Revenue advisor module 426 receives and processesfield definition data 160 andfield condition data 180 from agriculturalintelligence computing system 150 to provide (i) daily yield projections at the national, farm, and field level, (ii) current crop prices at the national and local level, (iii) daily revenue projections at the farm and field level, and (iv) daily profit estimates by the field, farm, and acre. More specifically,revenue advisor module 426 is configured to: (i) receivefield condition data 180 andfield definition data 160 from agriculturalintelligence computing system 150 for eachfield 120 ofgrower 110, wherein thefield condition data 180 includes growth stage conditions, field weather conditions, soil moisture, and precipitation conditions, and wherein field definition data includes field identifiers, geographic identifiers, boundary identifiers, and crop identifiers; (ii) receive cost data fromgrower 110, wherein cost data includes costs related to anindividual field 120 or all of the fields associated withgrower 110; (iii) receive crop pricing data from local and national sources; (iv) processfield condition data 180, the crop pricing data, and the cost data to determine yield data, revenue data, and profit data for eachfield 120 ofgrower 110; and (v) output the yield data, revenue data and profit data touser device -
FIG. 5 is an example method for managing agricultural activities in agricultural environment 100 (shown inFIG. 1 ).Method 500 is implemented by agricultural intelligence computer system 150 (shown inFIG. 1 ). Agriculturalintelligence computer system 150 receives 510 a plurality of field definition data. Agriculturalintelligence computer system 150 retrieves 520 a plurality of input data from a plurality ofdata networks intelligence computer system 150 determines 530 a field region based on the field definition data. Agriculturalintelligence computer system 150 identifies 540 a subset of the plurality of input data associated with the field region. Agriculturalintelligence computer system 150 determines 550 a plurality of field condition data based on the subset of the plurality of input data. Agriculturalintelligence computer system 150 provides 560 the plurality of field condition data to the user device. -
FIG. 6 is an example method for recommending agricultural activities in the agricultural environment ofFIG. 1 .Method 500 is implemented by agricultural intelligence computer system 150 (shown inFIG. 1 ). Agriculturalintelligence computer system 150 receives 610 a plurality of field definition data. Agriculturalintelligence computer system 150 retrieves 620 a plurality of input data from a plurality ofdata networks intelligence computer system 150 determines 630 a field region based on the field definition data. Agriculturalintelligence computer system 150 identifies 640 a subset of the plurality of input data associated with the field region. Agriculturalintelligence computer system 150 determines 650 a plurality of field condition data based on the subset of the plurality of input data. Agriculturalintelligence computer system 150 provides 660 the plurality of field condition data to the user device. Agriculturalintelligence computer system 150 determines 670 a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data. Agriculturalintelligence computer system 150 provides 680 a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores. -
FIG. 7 is a diagram of components of one or more example computing devices that may be used in the environment shown inFIG. 5 .FIG. 7 further shows a configuration of databases including at least database 157 (shown inFIG. 1 ).Database 157 is coupled to several separate components within frauddetection computer system 150, which perform specific tasks. - Agricultural
intelligence computer system 150 includes afirst receiving component 701 for receiving a plurality of field definition data, a first retrievingcomponent 702 for retrieving a plurality of input data from a plurality of data networks, a first determiningcomponent 703 for determining a field region based on the field definition data, a first identifyingcomponent 704 for identifying a subset of the plurality of input data associated with the field region, a second determiningcomponent 705 for determining a plurality of field condition data based on the subset of the plurality of input data, a first providingcomponent 706 for providing the plurality of field condition data to the user device, a third determiningcomponent 707 for determining a recommendation score for each of the plurality of field activity options based at least in part on the plurality of field condition data, and a second providingcomponent 708 for providing a recommended field activity option from the plurality of field activity options based on the plurality of recommendation scores. - In an example embodiment,
database 157 is divided into a plurality of sections, including but not limited to, ameteorological analysis section 710, a soil andcrop analysis section 712, and amarket analysis section 714. These sections withindatabase 157 are interconnected to update and retrieve the information as required -
FIGS. 8-30 are example illustrations of information provided by the agricultural intelligence computer system ofFIG. 3 to the user device ofFIG. 2 to facilitate the management and recommendation of agricultural activities. - Referring to
FIG. 8 ,screenshot 800 illustrates a setup screen wherein grower 110 (shown inFIG. 1 ) may provide user information input 402 (shown inFIG. 4 ) to define basic attributes associated with their account. - Referring to
FIGS. 9-11 ,screenshots FIG. 1 ) to view field condition data 180 (shown inFIG. 1 ). As is indicated inscreenshot 900,grower 110 may select particular dates forfield condition data 180 viewing that may be in the past, present, or future and may accordingly provide historic, current, or forecastedfield condition data 180.Grower 110 may accordingly select a particular date and time to viewfield condition data 180 for particular fields 120 (shown inFIG. 1 ).Screenshot 1000 illustrates a consolidated view offield condition data 180 for aparticular field 120 at a particular date. More specifically,field condition data 180 shown includes output of fieldweather data module 411, fieldworkability data module 412, growthstage data module 413, and soilmoisture data module 414.Screenshot 1100 similarly shows output offield precipitation module 415 of aparticular field 120 over a particular time period. As described above and herein, suchfield condition data 180 is determined using a localized method that determines such field conditions uniquely for eachfield 120. -
FIGS. 12 and 13 illustrate suchfield condition data 180 displayed graphically using maps. More specifically, from the view ofscreenshots 1200,grower 110 may select a particular portion of a map to identifyfield condition data 180 for each of fields 120.Screenshot 1300 accordingly illustrates such a display offield condition data 180 for aparticular field 122. - Referring to
FIGS. 14-20 ,screenshots FIG. 1 ) associated with grower 110 (shown inFIG. 1 ). More specifically, inscreenshot 1400grower 110 provides field definition data 160 (shown inFIG. 1 ) to definefields 120, indicated graphically. Accordingly, a plurality offields 120 are illustrated and may be reviewed individually or in any combination to obtain field condition data 180 (shown inFIG. 1 ) and/or recommended agricultural activities 190 (shown inFIG. 1 ). Note thatscreenshot 1400 illustrates thatgrower 110 may own, use, or otherwise manage a plurality offields 120 that are substantially far from one another and associated with unique geographic and meteorological conditions. It will be appreciated that the systems and methods described herein, providing hyper localizedfield condition data 180 and recommendedagricultural activities 190, substantially helpsgrower 110 to identify meaningful distinctions between each offields 120 in order to effectively manage eachfield 120. - In
screenshot 1500, grower 110 (shown inFIG. 1 ) may see a tabular view indicating identifiers for each field 120 (shown inFIG. 1 ) in conjunction with a map view of such fields.Grower 110 may navigate using the tabular view (or the graphical view) to individual actions associated with eachfield 120. Accordingly,screenshot 1600 illustrates enhanced information shown togrower 110 upon selecting a particular field for review from either the tabular view or the graphical view (e.g., by clicking on one of the fields). As is illustrated inscreenshots grower 110 may additionally enhance display (or “zoom in”) to view a smaller subset offields 120. - Referring to
FIGS. 21 and 22 ,screenshots FIG. 1 ) or any other source to identify notes or details associated with planting. More specifically,grower 110 may navigate to a particular date inscreenshot 2400 and view planting notes as displayed inscreenshot 2200. - Referring to
FIG. 23 ,screenshot 2300 presents a tabular view that allows grower 110 (shown inFIG. 1 ) to group or consolidate common land units (“CLUs”) into “field groups”. As a result, data associated with a particular field group may be viewed commonly. In some examples,grower 110 may be interested in viewing and managing particular fields 120 (shown inFIG. 1 ) in particular combinations based on, for example, common crops or geographies. Accordingly, the application and systems described facilitate such effective management. - Referring to
FIGS. 24-30 ,screenshots FIG. 1 ) to view information for a plurality of fields in a tabular format.Screenshots grower 110 may viewfield condition data 180 in common with field-specific & environmental data 170 (shown inFIG. 1 ). For example,screenshot 2400 illustrates, on a per field basis, current cultivated crop, acreage, average yield, tilling practices or methods, and residue levels. By contrast,screenshot 2500 illustrates thatgrower 110 may apply afilter 2510 to identify particular subgroups offields 120 for review based on characteristics including current cultivated crop, acreage, average yield, tilling practices or methods, and residue levels. The field manager tool also enablesgrower 110 to update or edit information.Screenshots grower 110 may update or edit information for previous periods of cultivation. More specifically, inscreenshot 2600, general data may be updated while inscreenshot 2700, planting data may be updated. Similarly, inscreenshot 2800, harvest data may be updated and inscreenshot 2900, nitrogen data may be updated. Inscreenshot 3000, soil characteristics data may be updated. - As used herein, the term “non-transitory computer-readable media” is intended to be representative of any tangible computer-based device implemented in any method or technology for short-term and long-term storage of information, such as, computer-readable instructions, data structures, program modules and sub-modules, or other data in any device. Therefore, the methods described herein may be encoded as executable instructions embodied in a tangible, non-transitory, computer readable medium, including, without limitation, a storage device and/or a memory device. Such instructions, when executed by a processor, cause the processor to perform at least a portion of the methods described herein. Moreover, as used herein, the term “non-transitory computer-readable media” includes all tangible, computer-readable media, including, without limitation, non-transitory computer storage devices, including, without limitation, volatile and nonvolatile media, and removable and non-removable media such as a firmware, physical and virtual storage, CD-ROMs, DVDs, and any other digital source such as a network or the Internet, as well as yet to be developed digital means, with the sole exception being a transitory, propagating signal.
- This written description uses examples to disclose the best mode, and also to enable any person skilled in the art to practice the embodiments, including making and using any devices or systems and performing any incorporated methods. The patentable scope of the disclosure is defined by the claims, and may include other examples that occur to those skilled in the art. Such other examples are intended to be within the scope of the claims if they have structural elements that do not differ from the literal language of the claims, or if they include equivalent structural elements with insubstantial differences from the literal languages of the claims.
Claims (20)
1. A computer-implemented method for providing an improvement in identifying, using an agricultural intelligence computer system in communication with a processor, a memory and a database, disease risks causing disease damage to crop in agricultural fields and determined based on environmental data, seed-specific data, and field-specific data, the method comprising:
receiving, by an agricultural intelligence computer system, a first set of data points including environmental information for an agricultural field;
receiving, by the agricultural intelligence computer system, a second set of data points including seed characteristic data for the agricultural field;
receiving, by the agricultural intelligence computer system, a third set of data points including field-specific data comprising planting data for the agricultural field;
receiving, by the agricultural intelligence computer system, a fourth set of data points including field-specific data comprising pesticide data for the agricultural field;
based on, at least in part, the first set of data points, the second set of data points, the third set of data points, and the fourth set of data points, identifying, by the agricultural intelligence computer system, one or more first disease risks posed to crop and that cause disease damage to the agricultural field.
2. The computer-implemented method of claim 1 , further comprising: based on, at least in part, the first set of data points, the second set of data points, the third set of data points, and the fourth set of data points, identifying, by the agricultural intelligence computer system, one or more second disease risks posed to crops and that cause economic damage to the agricultural field.
3. The computer-implemented method of claim 1 , wherein the environmental information includes information related to weather, precipitation, meteorology, crop phenology, and pest and disease reporting for the agricultural field;
wherein the seed characteristic data include information related to seeds that are planted or will be planted in the agricultural field;
wherein the seed characteristic data include seed company data, seed cost data, seed population data, seed hybrid data, seed maturity level data, and seed disease resistance data;
wherein the seed disease resistance data include information related to resistance of seeds to particular diseases;
wherein the field-specific data include planting dates, seed type data, relative maturity of planted seed data, and seed population data;
wherein the pesticide data include pesticide application date, pesticide product type data, pesticide formulation data, pesticide usage rate data, pesticide acres tested data, pesticide amount sprayed data, and pesticide source data.
4. The computer-implemented method of claim 1 , further comprising:
determining an initial crop moisture level;
receiving a plurality of daily high and low temperatures;
receiving a plurality of crop water usage;
determining a soil moisture level for a field region; and
recommending a plurality of crops for planting based on the determined soil moisture level.
5. The computer-implemented method of claim 1 , further comprising: receiving a plurality of pest risk data wherein each of the plurality of pest risk data includes a pest identifier and a pest location;
receiving a plurality of crop identifiers associated with a plurality of crops;
receiving a plurality of pest spray information associated with the crop identifiers;
determining a pest risk assessment, of a plurality of pest risk assessments, associated with each of the plurality of crops; and
recommending a spray strategy based on the plurality of pest risk assessments.
6. The computer-implemented method of claim 1 , further comprising:
receiving a plurality of historical agricultural activities associated with each of a field region from a user device; and
providing a recommended field activity option based at least in part on the plurality of historical agricultural activities.
7. The computer-implemented method of claim 1 , further comprising: utilizing a grid-based model to obtain localized field condition data.
8. A networked agricultural intelligence system for providing an improvement in identifying, using an agricultural intelligence computer system in communication with a processor, a memory and a database, disease risks causing disease damage to crop in agricultural fields and determined based on environmental data, seed-specific data, and field-specific data, the networked agricultural intelligence system comprising:
a plurality of data network computer systems;
an agricultural intelligence computer system comprising a processor and a memory in communication with said processor, said processor configured to perform:
receiving, by an agricultural intelligence computer system, a first set of data points including environmental information for an agricultural field;
receiving, by the agricultural intelligence computer system, a second set of data points including seed characteristic data for the agricultural field;
receiving, by the agricultural intelligence computer system, a third set of data points including field-specific data comprising planting data for the agricultural field;
receiving, by the agricultural intelligence computer system, a fourth set of data points including field-specific data comprising pesticide data for the agricultural field;
based on, at least in part, the first set of data points, the second set of data points, the third set of data points, and the fourth set of data points, identifying, by the agricultural intelligence computer system, one or more first disease risks posed to crop and that cause disease damage to the agricultural field.
9. The networked agricultural intelligence system in accordance with claim 8 , wherein the processor is further configured to perform: based on, at least in part, the first set of data points, the second set of data points, the third set of data points, and the fourth set of data points, identifying, by the agricultural intelligence computer system, one or more second disease risks posed to crops and that cause economic damage to the agricultural field.
10. The networked agricultural intelligence system in accordance with claim 8 , wherein the environmental information includes information related to weather, precipitation, meteorology, crop phenology, and pest and disease reporting for the agricultural field;
wherein the seed characteristic data include information related to seeds that are planted or will be planted in the agricultural field;
wherein the seed characteristic data include seed company data, seed cost data, seed population data, seed hybrid data, seed maturity level data, and seed disease resistance data;
wherein the seed disease resistance data include information related to resistance of seeds to particular diseases;
wherein the field-specific data include planting dates, seed type data, relative maturity of planted seed data, and seed population data;
wherein the pesticide data include pesticide application date, pesticide product type data, pesticide formulation data, pesticide usage rate data, pesticide acres tested data, pesticide amount sprayed data, and pesticide source data.
11. The networked agricultural intelligence system in accordance with claim 8 , wherein the processor is further configured to perform: determining an initial crop moisture level;
receiving a plurality of daily high and low temperatures;
receiving a plurality of crop water usage;
determining a soil moisture level for a field region; and
recommending a plurality of crops for planting based on the determined soil moisture level.
12. The networked agricultural intelligence system in accordance with claim 8 , wherein the processor is further configured to perform: receiving a plurality of pest risk data wherein each of the plurality of pest risk data includes a pest identifier and a pest location;
receiving a plurality of crop identifiers associated with a plurality of crops;
receiving a plurality of pest spray information associated with the crop identifiers;
determining a pest risk assessment, of a plurality of pest risk assessments, associated with each of the plurality of crops; and
recommending a spray strategy based on the plurality of pest risk assessments.
13. The networked agricultural intelligence system in accordance with claim 8 , wherein the processor is further configured to perform: receiving a plurality of historical agricultural activities associated with each of a field region from a user device; and
providing a recommended field activity option based at least in part on the plurality of historical agricultural activities.
14. The networked agricultural intelligence system in accordance with claim 8 , wherein the processor is further configured to: utilizing a grid-based model to obtain localized field condition data.
15. Non-transitory computer-readable storage media for providing an improvement in recommending agricultural activities determined based on crop-related data and field condition data, the non-transitory computer-readable storage media storing computer-executable instructions embodied thereon, wherein, when executed by at least one processor, the computer-executable instructions cause the processor to perform:
receiving, by an agricultural intelligence computer system, a first set of data points including environmental information for an agricultural field;
receiving, by the agricultural intelligence computer system, a second set of data points including seed characteristic data for the agricultural field;
receiving, by the agricultural intelligence computer system, a third set of data points including field-specific data comprising planting data for the agricultural field;
receiving, by the agricultural intelligence computer system, a fourth set of data points including field-specific data comprising pesticide data for the agricultural field;
based on, at least in part, the first set of data points, the second set of data points, the third set of data points, and the fourth set of data points, identifying, by the agricultural intelligence computer system, one or more first disease risks posed to crop and that cause disease damage to the agricultural field.
16. The computer-readable storage media in accordance with claim 15 , wherein the computer-executable instructions cause the processor to perform: based on, at least in part, the first set of data points, the second set of data points, the third set of data points, and the fourth set of data points, identifying, by the agricultural intelligence computer system, one or more second disease risks posed to crops and that cause economic damage to the agricultural field.
17. The computer-readable storage media in accordance with claim 15 , wherein the environmental information includes information related to weather, precipitation, meteorology, crop phenology, and pest and disease reporting for the agricultural field;
wherein the seed characteristic data include information related to seeds that are planted or will be planted in the agricultural field;
wherein the seed characteristic data include seed company data, seed cost data, seed population data, seed hybrid data, seed maturity level data, and seed disease resistance data;
wherein the seed disease resistance data include information related to resistance of seeds to particular diseases;
wherein the field-specific data include planting dates, seed type data, relative maturity of planted seed data, and seed population data;
wherein the pesticide data include pesticide application date, pesticide product type data, pesticide formulation data, pesticide usage rate data, pesticide acres tested data, pesticide amount sprayed data, and pesticide source data.
18. The computer-readable storage media in accordance with claim 15 , wherein the computer-executable instructions cause the processor to perform: determining an initial crop moisture level;
receiving a plurality of daily high and low temperatures;
receiving a plurality of crop water usage;
determining a soil moisture level for a field region; and
recommending a plurality of crops for planting based on the determined soil moisture level.
19. The computer-readable storage media in accordance with claim 15 , wherein the computer-executable instructions cause the processor to perform: receiving a plurality of pest risk data wherein each of the plurality of pest risk data includes a pest identifier and a pest location;
receiving a plurality of crop identifiers associated with a plurality of crops;
receiving a plurality of pest spray information associated with the crop identifiers;
determining a pest risk assessment, of a plurality of pest risk assessments, associated with each of the plurality of crops; and
recommending a spray strategy based on the plurality of pest risk assessments.
20. The computer-readable storage media in accordance with claim 15 , wherein the computer-executable instructions cause the processor to perform: receiving a plurality of historical agricultural activities associated with each of a field region from a user device; and
providing a recommended field activity option based at least in part on the plurality of historical agricultural activities.
Priority Applications (1)
Application Number | Priority Date | Filing Date | Title |
---|---|---|---|
US17/409,615 US20210383290A1 (en) | 2014-09-12 | 2021-08-23 | Methods and systems for recommending agricultural activities |
Applications Claiming Priority (3)
Application Number | Priority Date | Filing Date | Title |
---|---|---|---|
US201462049937P | 2014-09-12 | 2014-09-12 | |
US14/846,661 US11113649B2 (en) | 2014-09-12 | 2015-09-04 | Methods and systems for recommending agricultural activities |
US17/409,615 US20210383290A1 (en) | 2014-09-12 | 2021-08-23 | Methods and systems for recommending agricultural activities |
Related Parent Applications (1)
Application Number | Title | Priority Date | Filing Date |
---|---|---|---|
US14/846,661 Continuation US11113649B2 (en) | 2014-09-12 | 2015-09-04 | Methods and systems for recommending agricultural activities |
Publications (1)
Publication Number | Publication Date |
---|---|
US20210383290A1 true US20210383290A1 (en) | 2021-12-09 |
Family
ID=55455082
Family Applications (2)
Application Number | Title | Priority Date | Filing Date |
---|---|---|---|
US14/846,661 Active 2036-11-29 US11113649B2 (en) | 2014-09-12 | 2015-09-04 | Methods and systems for recommending agricultural activities |
US17/409,615 Abandoned US20210383290A1 (en) | 2014-09-12 | 2021-08-23 | Methods and systems for recommending agricultural activities |
Family Applications Before (1)
Application Number | Title | Priority Date | Filing Date |
---|---|---|---|
US14/846,661 Active 2036-11-29 US11113649B2 (en) | 2014-09-12 | 2015-09-04 | Methods and systems for recommending agricultural activities |
Country Status (3)
Country | Link |
---|---|
US (2) | US11113649B2 (en) |
AR (1) | AR102816A1 (en) |
WO (1) | WO2016040654A1 (en) |
Cited By (2)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
WO2024137332A1 (en) * | 2022-12-19 | 2024-06-27 | Fmc Corporation | Systems and methods for pest pressure heat maps that convey information relating to genetic markers of resistance to pest control products |
WO2024177971A1 (en) * | 2023-02-21 | 2024-08-29 | Pioneer Hi-Bred Internatonal, Inc. | Automated fungicide spray timing |
Families Citing this family (91)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
US11080798B2 (en) | 2014-09-12 | 2021-08-03 | The Climate Corporation | Methods and systems for managing crop harvesting activities |
US10564316B2 (en) | 2014-09-12 | 2020-02-18 | The Climate Corporation | Forecasting national crop yield during the growing season |
US11762125B2 (en) | 2014-09-12 | 2023-09-19 | Climate Llc | Forecasting national crop yield during the growing season |
US9652840B1 (en) | 2014-10-30 | 2017-05-16 | AgriSight, Inc. | System and method for remote nitrogen monitoring and prescription |
US9734400B2 (en) | 2015-01-30 | 2017-08-15 | AgriSight, Inc. | System and method for field variance determination |
EP3276544A1 (en) | 2016-07-29 | 2018-01-31 | Accenture Global Solutions Limited | Precision agriculture system |
US9638678B2 (en) * | 2015-01-30 | 2017-05-02 | AgriSight, Inc. | System and method for crop health monitoring |
US9880537B2 (en) * | 2015-08-05 | 2018-01-30 | Clearag, Inc. | Customized land surface modeling for irrigation decision support in a crop and agronomic advisory service in precision agriculture |
US11026376B2 (en) * | 2015-08-05 | 2021-06-08 | Dtn, Llc | Customized land surface modeling in a soil-crop system using satellite data to detect irrigation and precipitation events for decision support in precision agriculture |
AU2016294138C1 (en) | 2015-07-15 | 2022-02-24 | Climate Llc | Generating digital models of nutrients available to a crop over the course of the crop's development based on weather and soil data |
CA3015018A1 (en) * | 2016-03-04 | 2017-09-08 | Basf Se | Devices and methods for planning and monitoring agricultural crop growing |
GB201608751D0 (en) * | 2016-05-18 | 2016-06-29 | H L Hutchinson Ltd | System for field analysis and recommendation |
US9881214B1 (en) * | 2016-07-13 | 2018-01-30 | The Climate Corporation | Generating pixel maps from non-image data and difference metrics for pixel maps |
WO2018049288A1 (en) * | 2016-09-09 | 2018-03-15 | Cibo Technologies, Inc. | Systems for learning farmable zones, and related methods and apparatus |
WO2018049289A1 (en) | 2016-09-09 | 2018-03-15 | Cibo Technologies, Inc. | Systems for adjusting agronomic inputs using remote sensing, and related apparatus and methods |
JP6873637B2 (en) * | 2016-09-16 | 2021-05-19 | 株式会社トプコン | Growth information management device, control method of growth information management device, and growth information management program |
EP3673425A1 (en) * | 2017-08-22 | 2020-07-01 | BASF Agro Trademarks GmbH | Yield estimation in the cultivation of crop plants |
PL3688690T3 (en) * | 2017-09-29 | 2024-06-03 | Basf Se | System and method for optimisation of crop protection |
WO2019073472A1 (en) * | 2017-10-13 | 2019-04-18 | Atp Labs Ltd. | System and method for managing and operating an agricultural-origin-product manufacturing supply chain |
WO2019081567A1 (en) * | 2017-10-26 | 2019-05-02 | Basf Se | Yield estimation in the cultivation of crop plants |
US11562444B2 (en) | 2017-11-09 | 2023-01-24 | Climate Llc | Hybrid seed selection and seed portfolio optimization by field |
US11568340B2 (en) | 2017-11-09 | 2023-01-31 | Climate Llc | Hybrid seed selection and seed portfolio optimization by field |
US10779458B2 (en) | 2017-12-01 | 2020-09-22 | International Business Machines Corporation | Monitoring aerial application tasks and recommending corrective actions |
US10477756B1 (en) | 2018-01-17 | 2019-11-19 | Cibo Technologies, Inc. | Correcting agronomic data from multiple passes through a farmable region |
CN108510107B (en) * | 2018-03-07 | 2022-04-15 | 深圳远佳智慧科技有限公司 | Agricultural planting guidance method, electronic equipment and storage medium |
MX2020011572A (en) * | 2018-05-02 | 2021-01-20 | Supplant Ltd | Systems and methods for applying an agricultural practice to a target agricultural field. |
CN108875210B (en) * | 2018-06-05 | 2023-01-03 | 广西师范学院 | Method for establishing potato late blight plot diagnosis and prediction model |
US10907998B2 (en) | 2018-06-13 | 2021-02-02 | Cnh Industrial Canada, Ltd. | System and method for adjusting the sampling rate of a sensor mounted on an agricultural machine |
US20210315150A1 (en) * | 2018-08-16 | 2021-10-14 | Mahindra & Mahindra Limited | Method and systems for generating prescription plans for a region under cultivation |
US11861737B1 (en) * | 2018-08-31 | 2024-01-02 | Climate Llc | Hybrid seed supply management based on prescription of hybrid seed placement |
BR112021007018A2 (en) * | 2018-10-19 | 2021-07-13 | Basf Se | computer-implemented method (1000) to optimize crop protection, computer program product and computer system |
US11672203B2 (en) | 2018-10-26 | 2023-06-13 | Deere & Company | Predictive map generation and control |
US11079725B2 (en) | 2019-04-10 | 2021-08-03 | Deere & Company | Machine control using real-time model |
US11957072B2 (en) | 2020-02-06 | 2024-04-16 | Deere & Company | Pre-emergence weed detection and mitigation system |
US11641800B2 (en) | 2020-02-06 | 2023-05-09 | Deere & Company | Agricultural harvesting machine with pre-emergence weed detection and mitigation system |
US11178818B2 (en) | 2018-10-26 | 2021-11-23 | Deere & Company | Harvesting machine control system with fill level processing based on yield data |
US11240961B2 (en) | 2018-10-26 | 2022-02-08 | Deere & Company | Controlling a harvesting machine based on a geo-spatial representation indicating where the harvesting machine is likely to reach capacity |
US11653588B2 (en) | 2018-10-26 | 2023-05-23 | Deere & Company | Yield map generation and control system |
US11467605B2 (en) | 2019-04-10 | 2022-10-11 | Deere & Company | Zonal machine control |
US12069978B2 (en) | 2018-10-26 | 2024-08-27 | Deere & Company | Predictive environmental characteristic map generation and control system |
US11589509B2 (en) | 2018-10-26 | 2023-02-28 | Deere & Company | Predictive machine characteristic map generation and control system |
WO2020110134A1 (en) * | 2018-11-27 | 2020-06-04 | Mahindra & Mahindra Limited | "methods and systems for applying a remedy for a region under cultivation" |
EP3902386A4 (en) * | 2018-12-24 | 2022-09-28 | Climate LLC | Predictive seed scripting for soybeans |
EP3911570B1 (en) | 2019-01-15 | 2023-04-26 | Tata Consultancy Services Limited | Method and system for plant health estimation |
CN109699230B (en) * | 2019-03-12 | 2021-10-29 | 张掖市农业科学研究院 | Method for treating soil before winter in hybrid rape seed production field |
US11234366B2 (en) | 2019-04-10 | 2022-02-01 | Deere & Company | Image selection for machine control |
US11778945B2 (en) | 2019-04-10 | 2023-10-10 | Deere & Company | Machine control using real-time model |
US11432485B2 (en) * | 2019-06-10 | 2022-09-06 | Smart Rain Systems, LLC | Artificially intelligent irrigation system |
US11684004B2 (en) | 2019-09-30 | 2023-06-27 | Deere & Company | System and method for suggesting an optimal time for performing an agricultural operation |
US11457554B2 (en) | 2019-10-29 | 2022-10-04 | Kyndryl, Inc. | Multi-dimension artificial intelligence agriculture advisor |
WO2021146844A1 (en) * | 2020-01-20 | 2021-07-29 | Telefonaktiebolaget Lm Ericsson (Publ) | Method and apparatus for agricultural management |
US12035648B2 (en) | 2020-02-06 | 2024-07-16 | Deere & Company | Predictive weed map generation and control system |
JP7314825B2 (en) * | 2020-02-07 | 2023-07-26 | 横河電機株式会社 | Prediction device, prediction system, and prediction method |
EP4118597A1 (en) * | 2020-03-13 | 2023-01-18 | BASF Agro Trademarks GmbH | Method and system for determining a plant protection treatment plan of an agricultural plant |
US11477940B2 (en) | 2020-03-26 | 2022-10-25 | Deere & Company | Mobile work machine control based on zone parameter modification |
US11645308B2 (en) | 2020-05-27 | 2023-05-09 | International Business Machines Corporation | Customizing agricultural practices to maximize crop yield |
RS20200817A1 (en) | 2020-07-10 | 2022-01-31 | Inst Biosens Istrazivacko Razvojni Inst Za Informacione Tehnologije Biosistema | System and method for intelligent soil sampling |
US11856900B2 (en) * | 2020-08-12 | 2024-01-02 | Rachio, Inc. | Selective application of consumables via irrigation systems |
US11849671B2 (en) | 2020-10-09 | 2023-12-26 | Deere & Company | Crop state map generation and control system |
US11675354B2 (en) | 2020-10-09 | 2023-06-13 | Deere & Company | Machine control using a predictive map |
US11849672B2 (en) | 2020-10-09 | 2023-12-26 | Deere & Company | Machine control using a predictive map |
US11474523B2 (en) | 2020-10-09 | 2022-10-18 | Deere & Company | Machine control using a predictive speed map |
US11895948B2 (en) | 2020-10-09 | 2024-02-13 | Deere & Company | Predictive map generation and control based on soil properties |
US11650587B2 (en) | 2020-10-09 | 2023-05-16 | Deere & Company | Predictive power map generation and control system |
US11889788B2 (en) | 2020-10-09 | 2024-02-06 | Deere & Company | Predictive biomass map generation and control |
US11592822B2 (en) | 2020-10-09 | 2023-02-28 | Deere & Company | Machine control using a predictive map |
US12013245B2 (en) | 2020-10-09 | 2024-06-18 | Deere & Company | Predictive map generation and control system |
US11711995B2 (en) | 2020-10-09 | 2023-08-01 | Deere & Company | Machine control using a predictive map |
US11845449B2 (en) | 2020-10-09 | 2023-12-19 | Deere & Company | Map generation and control system |
US11864483B2 (en) | 2020-10-09 | 2024-01-09 | Deere & Company | Predictive map generation and control system |
US11983009B2 (en) | 2020-10-09 | 2024-05-14 | Deere & Company | Map generation and control system |
US12069986B2 (en) | 2020-10-09 | 2024-08-27 | Deere & Company | Map generation and control system |
US11927459B2 (en) | 2020-10-09 | 2024-03-12 | Deere & Company | Machine control using a predictive map |
US11874669B2 (en) | 2020-10-09 | 2024-01-16 | Deere & Company | Map generation and control system |
US11844311B2 (en) | 2020-10-09 | 2023-12-19 | Deere & Company | Machine control using a predictive map |
US11635765B2 (en) | 2020-10-09 | 2023-04-25 | Deere & Company | Crop state map generation and control system |
US11727680B2 (en) | 2020-10-09 | 2023-08-15 | Deere & Company | Predictive map generation based on seeding characteristics and control |
US11871697B2 (en) | 2020-10-09 | 2024-01-16 | Deere & Company | Crop moisture map generation and control system |
US11946747B2 (en) | 2020-10-09 | 2024-04-02 | Deere & Company | Crop constituent map generation and control system |
US11825768B2 (en) | 2020-10-09 | 2023-11-28 | Deere & Company | Machine control using a predictive map |
US11889787B2 (en) | 2020-10-09 | 2024-02-06 | Deere & Company | Predictive speed map generation and control system |
US12008663B2 (en) | 2020-11-02 | 2024-06-11 | Texas State University | Comprehensive multi-criteria multi-objective economic analysis tool for growing crops |
US12106560B2 (en) | 2021-01-29 | 2024-10-01 | Iunu, Inc. | Pest infestation detection for horticultural grow operations |
CN113240196A (en) * | 2021-06-04 | 2021-08-10 | 广州极飞科技股份有限公司 | Agricultural meteorological data determining method and device, agricultural management platform and storage medium |
CN113657811B (en) * | 2021-09-01 | 2022-03-11 | 中国水利水电科学研究院 | Well and canal combined irrigation area water saving potential analysis method based on zero excess mining of underground water |
US12082531B2 (en) | 2022-01-26 | 2024-09-10 | Deere & Company | Systems and methods for predicting material dynamics |
CN114509116A (en) * | 2022-03-01 | 2022-05-17 | 金陵科技学院 | STM32 and NB-IoT-based low-power-consumption agricultural monitoring system |
US11861520B2 (en) * | 2022-03-31 | 2024-01-02 | Planet Watchers Ltd. | Crop monitoring system and method thereof |
US12058951B2 (en) | 2022-04-08 | 2024-08-13 | Deere & Company | Predictive nutrient map and control |
EP4435683A1 (en) * | 2023-03-22 | 2024-09-25 | Tata Consultancy Services Limited | Systems and methods for monitoring and managing farm versions and measuring portability to target farms |
CN117708761B (en) * | 2024-02-06 | 2024-05-03 | 四川省亿尚农业旅游开发有限公司 | System and method for raising seedlings of hippeastrum with fusion of multi-index environmental conditions |
Citations (7)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
US5796932A (en) * | 1994-01-14 | 1998-08-18 | Strategic Weather Services | User interface for graphically displaying the impact of weather on managerial planning |
US20020183867A1 (en) * | 2000-04-04 | 2002-12-05 | Nagarjuna Holdings Private Limited | Agricultural management system for providing agricultural solutions and enabling commerce |
US20060004907A1 (en) * | 2004-04-22 | 2006-01-05 | Pape William R | Method and system for private data networks for sharing agricultural item attribute and event data across multiple enterprises and multiple stages of production transformation |
US20080287662A1 (en) * | 2005-06-22 | 2008-11-20 | Zeev Wiesman | Balanites Aegyptiaca Saponins and Uses Thereof |
WO2010128864A1 (en) * | 2009-05-05 | 2010-11-11 | Sinvent As | Energy conversion device |
US20130066666A1 (en) * | 2010-01-22 | 2013-03-14 | Monsanto Technology Llc | Enhancing Performance of Crops Within An Area of Interest |
US20140089045A1 (en) * | 2012-09-27 | 2014-03-27 | Superior Edge, Inc. | Methods, apparatus and systems for determining stand population, stand consistency and stand quality in an agricultural crop and alerting users |
Family Cites Families (58)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
US2840292A (en) | 1955-05-31 | 1958-06-24 | James J Stoddard | Cup support |
US4492111A (en) | 1981-10-07 | 1985-01-08 | Kirkland James L | Rheological penetrometer |
US5467271A (en) | 1993-12-17 | 1995-11-14 | Trw, Inc. | Mapping and analysis system for precision farming applications |
AU1177500A (en) | 1999-03-15 | 2000-10-04 | Kumamoto Technopolis Foundation | Soil survey device and system for precision agriculture |
EP1203955A4 (en) | 1999-07-08 | 2003-07-02 | Omron Tateisi Electronics Co | Soil measuring instrument, soil measurement assisting device and method, recorded medium on which program is recorded, recorded medium on which data is recorded, application amount controller, application amount determining device, method for them, and farm working determination assisting system |
US6535817B1 (en) | 1999-11-10 | 2003-03-18 | The Florida State Research Foundation | Methods, systems and computer program products for generating weather forecasts from a multi-model superensemble |
US6422508B1 (en) | 2000-04-05 | 2002-07-23 | Galileo Group, Inc. | System for robotic control of imaging data having a steerable gimbal mounted spectral sensor and methods |
AU2001271287A1 (en) | 2000-06-05 | 2001-12-17 | Ag-Chem Equipment Company, Inc. | System and method for providing profit analysis for site-specific farming |
US7844475B1 (en) | 2001-02-06 | 2010-11-30 | Makar Enterprises, Inc. | Method for strategic commodity management through mass customization |
US20020133505A1 (en) | 2001-03-14 | 2002-09-19 | Hideki Kuji | System for recommending crops and attachments to farm tractors |
US20030061075A1 (en) | 2001-05-17 | 2003-03-27 | Converium Reinsurance (North America) Inc. | System and method for rating and structuring bands of crop production insurance |
US6853937B2 (en) | 2001-07-06 | 2005-02-08 | Tokyo University Of Agriculture And Technology Tlo Co., Ltd. | Soil characteristics survey device and soil characteristics survey method |
US6549852B2 (en) | 2001-07-13 | 2003-04-15 | Mzb Technologies, Llc | Methods and systems for managing farmland |
US6671698B2 (en) | 2002-03-20 | 2003-12-30 | Deere & Company | Method and system for automated tracing of an agricultural product |
JP3966139B2 (en) | 2002-09-27 | 2007-08-29 | 株式会社日立製作所 | Meteorological quantity estimation method |
US20050027572A1 (en) | 2002-10-16 | 2005-02-03 | Goshert Richard D.. | System and method to evaluate crop insurance plans |
US20050150160A1 (en) | 2003-10-28 | 2005-07-14 | Norgaard Daniel G. | Method for selecting crop varieties |
US7702597B2 (en) | 2004-04-20 | 2010-04-20 | George Mason Intellectual Properties, Inc. | Crop yield prediction using piecewise linear regression with a break point and weather and agricultural parameters |
US20060167926A1 (en) | 2005-01-27 | 2006-07-27 | James Verhey | Vineyard information collection and management system |
US20060282467A1 (en) | 2005-06-10 | 2006-12-14 | Pioneer Hi-Bred International, Inc. | Field and crop information gathering system |
US8527301B2 (en) | 2006-01-20 | 2013-09-03 | Deere & Company | System and method for evaluating risk associated with a crop insurance policy |
US8816262B2 (en) | 2007-07-03 | 2014-08-26 | Kyle H. Holland | Auto-calibration method for real-time agricultural sensors |
NZ562316A (en) | 2007-10-09 | 2009-03-31 | New Zealand Inst For Crop And | Method and system of managing performance of a tuber crop |
US8924030B2 (en) | 2008-01-24 | 2014-12-30 | Cnh Industrial America Llc | Method and apparatus for optimization of agricultural field operations using weather, product and environmental information |
US9285501B2 (en) | 2008-11-04 | 2016-03-15 | Veris Technologies, Inc. | Multiple sensor system and method for mapping soil in three dimensions |
US8311780B2 (en) | 2009-04-23 | 2012-11-13 | Honeywell International Inc. | Enhanced prediction of atmospheric parameters |
WO2011064445A1 (en) | 2009-11-25 | 2011-06-03 | Nokia Corporation | Method and apparatus for agricultural resource mapping |
US8655601B1 (en) | 2010-02-08 | 2014-02-18 | Bowling Green State University | Method and system for detecting phosphorus in soil from reflected light |
US8426211B1 (en) | 2010-02-08 | 2013-04-23 | Bowling Green State University | Method and system for detecting copper in soil from reflected light |
NZ602987A (en) | 2010-04-12 | 2014-10-31 | Avelis Llc | Mineral complex, compositions thereof, and methods of using the same |
US8594897B2 (en) | 2010-09-30 | 2013-11-26 | The Curators Of The University Of Missouri | Variable product agrochemicals application management |
US10115158B2 (en) | 2010-10-25 | 2018-10-30 | Trimble Inc. | Generating a crop recommendation |
US9058633B2 (en) | 2010-10-25 | 2015-06-16 | Trimble Navigation Limited | Wide-area agricultural monitoring and prediction |
US20130144827A1 (en) | 2011-02-03 | 2013-06-06 | Schaffert Manufacturing Company, Inc. | Systems and methods for supporting fertilizer decisions |
US8737694B2 (en) | 2011-02-07 | 2014-05-27 | Southern Minnesota Beet Sugar Cooperative | Organic matter mapping using remotely sensed images |
US20130174040A1 (en) | 2011-12-30 | 2013-07-04 | Jerome Dale Johnson | Methods, apparatus and systems for generating, updating and executing a crop-planting plan |
US20130173321A1 (en) | 2011-12-30 | 2013-07-04 | Jerome Dale Johnson | Methods, apparatus and systems for generating, updating and executing a crop-harvesting plan |
US9183346B2 (en) | 2012-03-12 | 2015-11-10 | Empire Technology Development Llc | Robotic appendages |
WO2013144458A1 (en) | 2012-03-27 | 2013-10-03 | Total Sa | Method for determining mineralogical composition |
US20130332205A1 (en) | 2012-06-06 | 2013-12-12 | David Friedberg | System and method for establishing an insurance policy based on various farming risks |
US20140012504A1 (en) | 2012-06-14 | 2014-01-09 | Ramot At Tel-Aviv University Ltd. | Quantitative assessment of soil contaminants, particularly hydrocarbons, using reflectance spectroscopy |
US20140067745A1 (en) | 2012-08-30 | 2014-03-06 | Pioneer Hi-Bred International, Inc. | Targeted agricultural recommendation system |
RU2616777C1 (en) | 2013-03-22 | 2017-04-18 | ФОСС Аналитикал А/С | System and method of investigation by libs and ir-spectroscopy of absorption |
US20140321714A1 (en) | 2013-04-24 | 2014-10-30 | Billy R. Masten | Methods of enhancing agricultural production using spectral and/or spatial fingerprints |
US9349148B2 (en) | 2013-07-17 | 2016-05-24 | Sigma Space Corp. | Methods and apparatus for adaptive multisensor analisis and aggregation |
US20150237796A1 (en) | 2014-02-24 | 2015-08-27 | Robert Celli | Apparatus and method for localized irrigation and application of fertilizers, herbicides, or pesticides to row crops |
CN103941254A (en) | 2014-03-03 | 2014-07-23 | 中国神华能源股份有限公司 | Soil physical property classification recognition method and device based on geological radar |
US9974226B2 (en) | 2014-04-21 | 2018-05-22 | The Climate Corporation | Generating an agriculture prescription |
US10107770B2 (en) | 2014-06-18 | 2018-10-23 | Texas Tech University System | Portable apparatus for soil chemical characterization |
US10564316B2 (en) | 2014-09-12 | 2020-02-18 | The Climate Corporation | Forecasting national crop yield during the growing season |
US10697951B2 (en) | 2014-12-15 | 2020-06-30 | Textron Systems Corporation | In-soil data monitoring system and method |
US9953241B2 (en) | 2014-12-16 | 2018-04-24 | The Board Of Trustees Of The Leland Stanford Junior University | Systems and methods for satellite image processing to estimate crop yield |
US9087312B1 (en) | 2015-01-23 | 2015-07-21 | Iteris, Inc. | Modeling of costs associated with in-field and fuel-based drying of an agricultural commodity requiring sufficiently low moisture levels for stable long-term crop storage using field-level analysis and forecasting of weather conditions, grain dry-down model, facility metadata, and observations and user input of harvest condition states |
US9076118B1 (en) * | 2015-01-23 | 2015-07-07 | Iteris, Inc. | Harvest advisory modeling using field-level analysis of weather conditions, observations and user input of harvest condition states, wherein a predicted harvest condition includes an estimation of standing crop dry-down rates, and an estimation of fuel costs |
US20160232621A1 (en) | 2015-02-06 | 2016-08-11 | The Climate Corporation | Methods and systems for recommending agricultural activities |
AU2016294138C1 (en) | 2015-07-15 | 2022-02-24 | Climate Llc | Generating digital models of nutrients available to a crop over the course of the crop's development based on weather and soil data |
US10529036B2 (en) | 2016-01-22 | 2020-01-07 | The Climate Corporation | Forecasting national crop yield during the growing season using weather indices |
US11080419B2 (en) | 2019-05-28 | 2021-08-03 | Adara, Inc. | Distributed data rights management for peer data pools |
-
2015
- 2015-09-04 US US14/846,661 patent/US11113649B2/en active Active
- 2015-09-10 WO PCT/US2015/049456 patent/WO2016040654A1/en active Application Filing
- 2015-09-11 AR ARP150102913A patent/AR102816A1/en not_active Application Discontinuation
-
2021
- 2021-08-23 US US17/409,615 patent/US20210383290A1/en not_active Abandoned
Patent Citations (7)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
US5796932A (en) * | 1994-01-14 | 1998-08-18 | Strategic Weather Services | User interface for graphically displaying the impact of weather on managerial planning |
US20020183867A1 (en) * | 2000-04-04 | 2002-12-05 | Nagarjuna Holdings Private Limited | Agricultural management system for providing agricultural solutions and enabling commerce |
US20060004907A1 (en) * | 2004-04-22 | 2006-01-05 | Pape William R | Method and system for private data networks for sharing agricultural item attribute and event data across multiple enterprises and multiple stages of production transformation |
US20080287662A1 (en) * | 2005-06-22 | 2008-11-20 | Zeev Wiesman | Balanites Aegyptiaca Saponins and Uses Thereof |
WO2010128864A1 (en) * | 2009-05-05 | 2010-11-11 | Sinvent As | Energy conversion device |
US20130066666A1 (en) * | 2010-01-22 | 2013-03-14 | Monsanto Technology Llc | Enhancing Performance of Crops Within An Area of Interest |
US20140089045A1 (en) * | 2012-09-27 | 2014-03-27 | Superior Edge, Inc. | Methods, apparatus and systems for determining stand population, stand consistency and stand quality in an agricultural crop and alerting users |
Non-Patent Citations (3)
Title |
---|
E-agriculture. Can Artificial Intelligence help improve agricultural productivity. 12/19/2017 (Year: 2017) * |
Iftikhar Ali, Fiona Cawkwell, Edward Dwyer, Stuart Green, "Modeling Managed Grassland Biomass Estimation by Using Multitemporal Remote Sensing Data—A Machine Learning Approach", IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol. 10, no. 7, pp. 3254-3264, 2016. (Year: 2016) * |
Liebig, M. et al. Greenhouse gas contributions and mitigation potential of agricultural practices in northwestern USA and western Canada. Soil and Tillage Research, Volume 83, Issue 1, August 2005, Pages 25-52. (Year: 2005) * |
Cited By (2)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
WO2024137332A1 (en) * | 2022-12-19 | 2024-06-27 | Fmc Corporation | Systems and methods for pest pressure heat maps that convey information relating to genetic markers of resistance to pest control products |
WO2024177971A1 (en) * | 2023-02-21 | 2024-08-29 | Pioneer Hi-Bred Internatonal, Inc. | Automated fungicide spray timing |
Also Published As
Publication number | Publication date |
---|---|
US20160078375A1 (en) | 2016-03-17 |
AR102816A1 (en) | 2017-03-29 |
US11113649B2 (en) | 2021-09-07 |
WO2016040654A1 (en) | 2016-03-17 |
Similar Documents
Publication | Publication Date | Title |
---|---|---|
US11785879B2 (en) | Methods and systems for managing agricultural activities | |
US11847708B2 (en) | Methods and systems for determining agricultural revenue | |
US20210383290A1 (en) | Methods and systems for recommending agricultural activities | |
US11941709B2 (en) | Methods and systems for managing crop harvesting activities | |
US11893648B2 (en) | Methods and systems for recommending agricultural activities | |
US11797901B2 (en) | Digital modeling of disease on crops on agronomics fields | |
US11587186B2 (en) | Digital modeling and tracking of agricultural fields for implementing agricultural field trials | |
US11818981B2 (en) | Automatically detecting outlier values in harvested data | |
US20170196171A1 (en) | Generating digital models of crop yield based on crop planting dates and relative maturity values | |
UA126557C2 (en) | Forecasting national crop yield during the growing season using weather indices | |
BR112020023684A2 (en) | cross-cultivation study and field targeting |
Legal Events
Date | Code | Title | Description |
---|---|---|---|
STPP | Information on status: patent application and granting procedure in general |
Free format text: DOCKETED NEW CASE - READY FOR EXAMINATION |
|
STPP | Information on status: patent application and granting procedure in general |
Free format text: NON FINAL ACTION MAILED |
|
STPP | Information on status: patent application and granting procedure in general |
Free format text: RESPONSE TO NON-FINAL OFFICE ACTION ENTERED AND FORWARDED TO EXAMINER |
|
STPP | Information on status: patent application and granting procedure in general |
Free format text: FINAL REJECTION MAILED |
|
STCV | Information on status: appeal procedure |
Free format text: NOTICE OF APPEAL FILED |
|
STCB | Information on status: application discontinuation |
Free format text: ABANDONED -- FAILURE TO RESPOND TO AN OFFICE ACTION |