EP3701449A1 - Estimation du rendement de production de plantes cultivées - Google Patents

Estimation du rendement de production de plantes cultivées

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Publication number
EP3701449A1
EP3701449A1 EP18788783.1A EP18788783A EP3701449A1 EP 3701449 A1 EP3701449 A1 EP 3701449A1 EP 18788783 A EP18788783 A EP 18788783A EP 3701449 A1 EP3701449 A1 EP 3701449A1
Authority
EP
European Patent Office
Prior art keywords
weather
measures
field
data
course
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.)
Pending
Application number
EP18788783.1A
Other languages
German (de)
English (en)
Inventor
Ole Peters
Gang Zhao
Holger Hoffmann
Eva HILL
Ahmed Karim DHAOUADI
Christian BITTER
Fabian Johannes SCHAEFER
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
BASF Agro Trademarks GmbH
Original Assignee
BASF Agro Trademarks GmbH
Priority date (The priority date 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 date listed.)
Filing date
Publication date
Priority claimed from PCT/EP2018/072662 external-priority patent/WO2019038325A1/fr
Application filed by BASF Agro Trademarks GmbH filed Critical BASF Agro Trademarks GmbH
Publication of EP3701449A1 publication Critical patent/EP3701449A1/fr
Pending legal-status Critical Current

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Classifications

    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION 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
    • G06Q10/00Administration; Management
    • G06Q10/04Forecasting or optimisation specially adapted for administrative or management purposes, e.g. linear programming or "cutting stock problem"
    • AHUMAN NECESSITIES
    • A01AGRICULTURE; FORESTRY; ANIMAL HUSBANDRY; HUNTING; TRAPPING; FISHING
    • A01DHARVESTING; MOWING
    • A01D91/00Methods for harvesting agricultural products
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01WMETEOROLOGY
    • G01W1/00Meteorology
    • G01W1/10Devices for predicting weather conditions
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION 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
    • G06Q10/00Administration; Management
    • G06Q10/06Resources, workflows, human or project management; Enterprise or organisation planning; Enterprise or organisation modelling
    • G06Q10/063Operations research, analysis or management
    • G06Q10/0631Resource planning, allocation, distributing or scheduling for enterprises or organisations
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION 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
    • G06Q50/00Information and communication technology [ICT] specially adapted for implementation of business processes of specific business sectors, e.g. utilities or tourism
    • G06Q50/02Agriculture; Fishing; Forestry; Mining
    • GPHYSICS
    • G16INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR SPECIFIC APPLICATION FIELDS
    • G16BBIOINFORMATICS, i.e. INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR GENETIC OR PROTEIN-RELATED DATA PROCESSING IN COMPUTATIONAL MOLECULAR BIOLOGY
    • G16B5/00ICT specially adapted for modelling or simulations in systems biology, e.g. gene-regulatory networks, protein interaction networks or metabolic networks

Definitions

  • the present invention relates to the technical field of cultivation of crops, in particular the preparation of forecasts of expected yield.
  • the yield of a grown crop is determined by a variety of parameters. Some of these may affect a farmer, such as tillage, variety, time and density of sowing, implementation of pest control measures, nutrient application, irrigation, and timing of harvest. Other parameters such as the weather are hardly influenceable.
  • the present invention provides such information to a farmer.
  • a first subject of the invention is a method preferably for determining expected yields in the cultivation of crops by means of a computer system, such as a server, in particular a server and a local or mobile computer system, comprising the steps
  • step (G) repeated execution of steps (B), (C), (D), (E) and (F) taking into account the actual course of the weather prevailing up to the moment in which the steps were carried out, the pests actually occurring and actually implemented measures, wherein preferably for step (B) weather data concerning an actual or prevailing course of the weather and for the steps (C), (D), (E) detected field-specific data, in particular harmful organism data concerning actually occurred Schadorgansimen, growth data concerning the real course of the actually occurring growth and / or action data relating to actually performed measures are provided, wherein preferably at least two different weather patterns in step (B) are predicted, and the steps (C), (D), (E) for each of the at least two different weather patterns be performed.
  • Another object of the present invention is a computer system preferably for determining expected yields in the cultivation of crops, comprising
  • (A) means for identifying a field on which cultivated plants are or are to be cultivated, wherein position data, in particular geocoordinates, are preferably provided, or a detection module which is configured to provide position data, in particular geocoordinates,
  • (B) means for providing a prediction of a weather pattern for the field for the upcoming or current growing period of crops to the planned harvest, taking into account the previous weather history, preferably the previous weather history and the predicted weather course merge seamlessly, or a weather module konfigu - is a prediction of a weather history for the field for the upcoming or current
  • (C) means for providing a prediction for the occurrence of one or more chimeras in the predicted weather history field, or a pest module configured to provide a prediction for the occurrence of one or more pests in the predicted weather history field .
  • (E) means for calculating the expected yields in the cultivation of the crops, assuming that the predictions of steps (B) and (C) arrive and the measures identified in step (D) are performed, or a yield module that is configured to calculate expected yields of crops on the assumption that the forecasts of steps (B) and (C) will be received and that the measures identified in step (D) will be carried out;
  • (F) means for displaying or providing the expected revenue, or an interface configured to display or provide expected revenue;
  • the computer system is configured to include steps (B), (C), (D), (E) and (F) taking into account the real course of the weather prevailing at the time of performing the steps occurring pest organisms and the measures actually carried out repeatedly,
  • step (B) weather data concerning an actual or prevailing course of the weather and for the steps (C), (D), (E) detected field-specific data, in particular harmful organism data concerning actually occurred pest organisms, growth data relating to the real Course of actual growth and / or policy data relating to actions actually taken, preferably predicting at least two different weather patterns in step (B), and steps (C), (D), (E) for each of the at least two different weather patterns are performed.
  • a further subject of the present invention is a computer program product preferably for determining expected yields in the cultivation of crops, comprising a computer-readable data carrier and program code stored on the data carrier and, when executed on a computer system, causing the computer system to perform the following steps :
  • step (E) calculate the expected yields of crops, assuming that the predictions of steps (B) and (C) are received and that the measures identified in step (D) are carried out
  • step (B) weather data concerning an actual or prevailing course of the weather and for the steps (C), (D), (E) detected field-specific data, in particular derive harmful organism data relating to actually occurring harmful organisms, growth data relating to the actual course of the growth actually occurring and / or measures data relating to measures actually carried out, preferably wherein at least two different weather patterns are predicted in step (B), and steps (C), ( D), (E) are performed for each of the at least two different weather patterns.
  • the inventive method is used to support a farmer in the cultivation of crop plants in a field.
  • field is understood to mean a spatially delimitable area of the earth's surface that is used for agriculture by planting crops, nourishing them and harvesting them in such a field.
  • cultiva plant is understood to mean a plant that is purposefully cultivated by the intervention of humans as a useful or ornamental plant.
  • the field is identified on which cultivated plants are grown or to be grown, and which is considered in the course of the method according to the invention in more detail.
  • the identification is based on geo-coordinates, which uniquely determine the position of the field.
  • the method according to the invention is usually carried out with the aid of a computer program installed on a computer system.
  • the geocoordinates of the field are therefore transferred to the computer program.
  • a user of the computer program could enter the geo-coordinates via a keyboard.
  • the user of the computer program can display geographic maps on a computer screen and draws the boundaries of the field to be viewed in such a map, for example with a computer mouse.
  • the area of the earth's surface is determined, which is considered in the further course of the method according to the invention.
  • (B) Prediction of a weather course In a further step, a prediction is made for the course of the weather for the pending or ongoing cultivation period of the crop until the planned harvest, taking into account the previous weather history, preferably the previous weather history and the predicted weather course seamlessly merge.
  • the purpose of weather forecasting is to predict as accurately as possible the distribution and corresponding probabilities of weather events for the upcoming or current growing season.
  • the weather for the next few days for example up to nine days
  • forecasts of the weather for a time in a few weeks or months, for example greater than nine days are comparatively inaccurate in the future.
  • historical weather data are therefore well suited to use trends that have been frequently observed in recent years as a basis for predicting future weather.
  • weather forecasts for the near future may be obtained from a variety of commercial suppliers.
  • seasonal weather forecasts are used. These predictions can be based on global, regional and global-regional coupled dynamic circulation models and / or the multi-annual statistics of historical weather data and / or a dynamic projection (circulation model) of individual climate variables combined with the stochastic weather simulation of other variables and / or pure stochastic Weather simulations based.
  • the seasonal forecasts may be provided by commercial providers and / or research facilities.
  • the decision on what kind of seasonal prediction is made depends on the predictive power of the models. For this an index such as e.g. the Brier score can be used. Below a certain limit, below which the added benefit of the modeled weather forecast is not significant compared to the long-term climate statistics, seasonal weather forecasts based on the long-term climate statistics are preferred.
  • a plurality of weather forecasts are created, which preferably cover the spectrum of the weather patterns that have occurred in recent years.
  • a probability for its occurrence is determined and indicated for each weather course, so that the weather patterns can be compared with each other.
  • prediction risks for one or more harmful organisms are determined in the prediction.
  • a "harmful organism” is meant an organism that appears in the cultivation of crops and can damage the crop, adversely affect the harvest of the crop, or compete with the crop for natural resources, such as weeds, grass weeds, animal pests such as beetles, caterpillars and worms, fungi and pathogens (eg bacteria and viruses) Even though viruses are not among the organisms from a biological point of view, they should nevertheless fall under the term harmful organism in the present case.
  • Drechslera tritici-repentis https://gd.eppo.int/taxon/PYRNTR) and Fusarium spp.
  • weeds refers to plants of the spontaneous vegetation (Segetalflora) in cultivated plant stands, grassland or gardens, which are not cultivated there and, for example, from the seed potential of the soil or over To come to development.
  • the term is not limited to herbs in the true sense, but also includes grasses, ferns, mosses or woody plants.
  • weed grass (plural: grass weeds) is often used to clarify a distinction to the herbaceous plants. This text uses the term weed as a generic term, which is to grasp the term weed grass.
  • Forecast models for the occurrence of one or more harmful organisms can be used, for example, which are described in the prior art.
  • the commercially available decision support system "expert” uses for prognosis data on the crops grown or grown (stage of development, growing conditions, plant protection measures), weather conditions (temperature, duration of sunshine, wind speed, precipitation) as well as the known harmful organisms / diseases (economic limits, pest / Disease pressure) and calculates a risk of infestation on the basis of these data (Newe M., Meier H., Johnen A., Volk T .: proPlant expert.com - an online consultation system on crop protection in cereals, rape, potatoes and sugarbeet.) EPPO Bulletin 2003, 33, 443-449; Johnen A., Williams LH., Nilsson C, Klukowski Z., Luik A., Ulber B .: The ProPlant Decision Support System: Phenological Models for the Major Pests of Oilseed Rape and Their Key Parasitoids in Europe, Biocontrol-Based Integrated Management
  • Predicting harmful organisms may also take into account actual past infestations.
  • the determination of infestation risks for those harmful organisms that have occurred in the past on the field under consideration and / or neighboring fields is preferably based on the determination of infestation risks for those harmful organisms that have occurred in the past on the field under consideration and / or neighboring fields.
  • the determination of the infestation risks is preferably site-specific. It is conceivable, for example, that due to their position some subareas of the field are particularly frequently and / or particularly severely affected by a harmful organism and / or that infestation with a harmful organism often starts from one or more defined subareas.
  • one or more digital maps of the field are generated in order to predict the course of the weather, in which the risk for infestation with one or more harmful organisms is or are plotted on a site-specific basis.
  • a defined harmful organism to generate a series of digital maps, for example a map for each month of the year, and to display on the maps by means of a color coding the risk of infestation of the subarea with the harmful organism in the month under consideration and the predicted weather.
  • the color "red” could stand for a risk of infestation greater than 90% and the color "green” for a risk of infestation less than 10%.
  • 10% and 90% different money and orange tones are used.
  • Other / further types of representation are conceivable.
  • “Damage threshold” is a term used in agriculture, forestry and horticulture, and indicates the infestation density with pathogens, diseases or the stocking of weeds, from which combating becomes economically sensible - up to this value is the additional economic effort through control If the infestation or the weed infection exceeds this value, the control costs are at least offset by the expected additional yield.
  • the damage threshold can be very different. In the case of harmful organisms or diseases which can only be combated with great effort and with negative side effects for further production, the damage threshold can be very high. However, if even a small infestation can become a source of spread that threatens to destroy the entire production, the damage threshold can be very low.
  • agricultural measures for the pending or current growing period of crops are determined until the planned harvest.
  • the term "agricultural measure” is understood to mean any measure in the crop field that is necessary or economically and / or ecologically sensible in order to obtain a crop product, examples of which are: tillage (eg plowing), spreading of the seed (Sowing), irrigation, application of growth regulators, control of weeds / grass weeds, application of nutrients (eg by fertilization), control of harmful organisms, crops.
  • the agricultural measures are measures for chemical culture management (application of pesticides or growth regulators), in particular the reduction of the predicted risk of infestation with a harmful organism.
  • the determination of the measures is preferably done site specific.
  • crop protection agent is understood to mean an agent which serves to protect plants or plant products from harmful organisms or to prevent their action, to destroy unwanted plants or plant parts, to inhibit unwanted growth of plants or to prevent such growth, and / or In other ways than nutrients, to influence the life processes of plants
  • crop protection agents are herbicides, fungicides and pesticides (eg insecticides).
  • those measures are determined which have a maximum benefit / cost ratio.
  • identifying the measures it is preferable to consider legal aspects and aspects of environmental protection. For example, it is conceivable that a selected crop protection product may be applied only at certain times and / or in certain maximum amounts. These and similar limitations are preferably taken into account when determining the measures.
  • the determination of the measures can be done, for example, based on the cultivated plants grown or grown. For example, it is conceivable that a user inputs information about the cultivated plants to be cultivated or grown in the computer system according to the invention, such as e.g. the name of the species, the date of sowing and the like. The computer system then determines, e.g.
  • the computer system preferably determines time periods in the future on the basis of stored information in which the measures should be usefully carried out.
  • the predicted weather course and / or the predicted occurrence of harmful organisms can be taken into account. For example, it would not make sense to harvest a crop when rain is predicted. Furthermore, an application of a control agent for a harmful organism would only be useful if there is a significant risk for the occurrence of the harmful organism.
  • the yields that are to be expected when cultivating the crops under the conditions of the scenarios considered are determined.
  • plant growth model is understood to mean a mathematical model that describes the growth of a plant as a function of intrinsic (genetics) and extrinsic (environmental) factors.
  • Plant growth models exist for a variety of crops Books i) "Mathematical Modeling and Simulation” by Marco Günther and Kai Velten, published by Wiley-VCH Verlag in October 2014 (ISBN: 978-3-527-41217-4), and ii) "Working with Dynamic Crop Models” by Daniel Wallach, David Makowski, James W. Jones and Francois Brun., Published 2014 in Academic Press (Elsevier), USA.
  • the plant growth model typically simulates the growth of an inventory of crops over a defined period of time. It is also conceivable to use a model based on a single plant, which simulates the energy and substance flows in the individual organs of the plant. In addition, mixed models can be used.
  • the growth of a crop is determined primarily by the local weather conditions over the life of the plant (quantity and spectral distribution of the incident sunbeams, temperature gradients, precipitation amounts, wind input), the condition of the soil and the nutrient supply.
  • the cultural measures already taken and any infestation with harmful organisms can exert an influence on plant growth and can be taken into account in the growth model.
  • the plant growth models are i.d.R. so-called dynamic process-based models (see “Working with Dynamic Crop Models” by Daniel Wallach, David Makowski, James W. Jones and Francois Brun., published 2014 in Academic Press (Elsevier), USA), but can also be entirely or partially rule-based or
  • the models are usually so-called point models, where the models are usually calibrated so that the output reflects the spatial representation of the input, is the input collected at one point in space, or interpolated for a point in space or estimated, it is generally assumed that the model output is valid for the entire adjoining field
  • point models calibrated at the field level to other, generally coarser, scales is known (see, for example, H. Hoffmann et al .: Impact of spatial soil and climate input data aggregation on regional yield simulations., 2016, PLoS ONE 1 1 (4): e0151782.
  • Weather daily rainfall sums, radiation sums, daily minimum and maximum air temperature, and ground temperature, soil temperature, wind speed, etc.
  • Soil Soil Type, Soil Texture, Soil Type, Field Capacity, Permanent Wilt Point, Organic Carbon, Mineral Nitrogen Content, Soil Storage, Van Genuchten Parameters, etc.
  • Cultivated plant species, variety, variety-specific parameters such as Specific leaf area index, temperature sums, maximum root depth, etc.
  • Cultivation measures seed, sowing date, sowing density, sowing depth, fertilizer, fertilizer amount, number of manure dates, fertilizing date, tillage, crop residues, crop rotation, distance to field of same culture in the previous year, irrigation, etc.
  • the prediction of the temporal evolution of cultivated crops is preferably carried out on a specific area.
  • the calculation of the expected yields is based on the assumption that the previously determined forecasts arrive (weather history, occurrence of harmful organisms) and that the identified agricultural measures are carried out.
  • the purpose of an agricultural measure may be to prevent the occurrence of a predicted harmful organism or to reduce the risk.
  • the statement "assuming that the predictions of steps (B) and (C) arrive and the measures determined in step (D) are performed” means that the weather history as predicted occurs a risk of occurrence
  • the identified agricultural measures will be implemented and will succeed, resulting in a reduced risk of pest organisms occurring in the control of pest organisms (which risk may also be negligible if the identified agricultural objective is to prevent the occurrence of harmful organisms).
  • the calculation of the expected yields may also be based on the assumption that the previously identified agricultural measures will not be taken. It is conceivable that the user of the computer program product according to the invention can study the influence of the measures on the expected yields on the computer by, for example, deselecting recommended measures and the computer program then calculates how the yield changes if the deselected measure is not performed. Preferably, the selection and deselection of measures is done site specific.
  • the expected returns are displayed to a user on a display device.
  • the display device is a screen that is part of the computer system according to the invention.
  • the expected yield is displayed for individual partial surfaces and / or the entire field.
  • the display can be graphically supported, e.g. with the help of bar graphs or the like.
  • the user can thus look at different scenarios on the computer screen and see what returns will result when a particular predicted weather history actually becomes real and / or what returns result when certain actions are taken or not taken.
  • the expected yields are preferably displayed on the computer screen in the form of digital maps, specifically for each area.
  • a prediction of the future weather course is created, which seamlessly follows the previous actual weather course, ie there are no jumps in the course of a parameter that describes the weather (temperature, air pressure, humidity, etc.).
  • the probability of occurrence of one or more harmful organisms is calculated for the determined weather history (past and future). It identifies agricultural measures that should be carried out on the field. In determining the agricultural measures, the determined weather course and / or the predicted harmful organisms can be taken into account.
  • the expected yields of cultivated crops are calculated, assuming that the weather forecast for the future is effective, that the risk of predicted harmful organisms actually exists as predicted, and that the identified agricultural measures are actually carried out; and successful, ie that the results to be achieved by the measures actually materialize.
  • the calculated returns are displayed to the user. The repetition can be initiated, for example, by the user of the computer system according to the invention whenever the user wishes to receive an updated yield determination.
  • the computer program product according to the invention is preferably configured such that it is automatically updated. Updating means that the actual course of weather up to the time of the respective update, the actual occurrence of harmful organisms and the measures actually taken are included in the calculation of the expected returns. For example, the update may automatically occur whenever the user launches or invokes the computer program. It is also conceivable, however, that the update takes place at a fixed time, for example every day or every week. However, it is also conceivable that an update takes place irregularly, for example whenever there is a significant deviation of the real from the predicted conditions.
  • step (B), (C), (D), (E) and (F) are repeated.
  • the user has run the computer program product according to the invention a first time at a first time and have the yields calculated for a predicted weather course and under the condition that the recommended measures from step (D) are actually taken.
  • the user calls the inventive computer program product again.
  • the computer program product according to the invention determines the actual weather profile and adapts the prediction for the risk of contamination to the actual weather profile.
  • one or more updated weather forecasts are created and the corresponding infestation risks are also updated.
  • model runs can be adapted to the reality with the aid of further observed state variables. Examples of such an adaptation are the adaptation of the model runs
  • NDVI NDVI
  • LAI leaf area index
  • a computer system includes one or more computers.
  • the term computer is understood to mean a universally program-controlled automaton for information processing.
  • a computer has at least one input unit via which data and control commands can be entered (mouse, trackpad, keyboard, scanner, webcam, joystick, microphone, barcode reader, etc.), a processing unit comprising main memory and processor, with which data and commands are processed , and an output unit to send data from the system (eg, screen, printer, speakers, etc.).
  • Today's computers are often subdivided into desktop computers, portable computers, laptops, notebooks, netbooks and tablet computers, and so-called handhelds (eg, smartphones, smartwatches).
  • a user Via an input unit, a user can select a field for which a yield forecast is to be created.
  • the computer system may provide the user with a digital map.
  • an input unit such as a computer mouse
  • the Netzer can change the section of the map and zoom in on the map or zoom out of the map, so that he can be displayed on the map a specific field.
  • the user can select a specific field by drawing field border.
  • field boundaries are automatically detected by means of image analysis and the user can select a detected field, for example by clicking with the mouse.
  • the user specifies by means of an input unit the cultivated plants which are (are) to be grown in the field.
  • the computer system of the present invention may be configured to self-generate weather forecasts or obtain weather forecasts over a connected network (e.g., the internal) from a provider.
  • a connected network e.g., the internal
  • the computer system according to the invention is designed such that it obtains weather forecasts from a provider.
  • the computer system according to the invention in such a case comprises a receiving unit for receiving weather forecasts for the specified field or region in which the specified field is located.
  • the computer system is connected to a network (e.g., the Internet).
  • the computer system according to the invention can also be connected to one or more databases in which information about the cultivated plants to be cultivated / cultivated is stored, such as agricultural measures for the crop plants.
  • the computer system according to the invention can be designed such that it can calculate probabilities for the occurrence of harmful organisms on the basis of the predicted weather course.
  • a forecasting model may be installed such that data characterizing the weather history (such as temperature history, precipitation, etc.) is received as an input parameter and outputs probabilities of occurrence of harmful organisms during the growing period as output quantities.
  • the computer system according to the invention accesses a prognosis model via the network in order to have infestation risks determined and obtained.
  • the computer system according to the invention preferably has a unit for calculating yields, which may be part of the processing unit.
  • Part of the yield calculation unit is again a plant growth model.
  • the yield calculation unit uses the weather history determined for the growing season as an input to calculate plant growth over the growing season using the plant growth model. Predicted harmful organisms and identified agricultural measures are also considered as input variables. The result is a yield forecast. If several weather patterns and / or different agricultural measures have been taken into account, there are correspondingly more yield forecasts.
  • the computer system has a display device (e.g., a screen) on which it can display the yield forecasts to a user.
  • a display device e.g., a screen
  • FIG. 1 shows an exemplary distributed computer system comprising a server, a local computer system, a mobile computer system, an agricultural machine and a satellite system.
  • FIG. 2 shows an exemplary method for determining the expected yields during cultivation of the crop using the decentralized computer system and in particular the server of FIG. 1,
  • FIG. 3 shows an exemplary method for updating the expected yields during cultivation of the cultivated plant with the aid of the decentralized computer system and in particular the server of FIG. 1
  • FIG. 4 shows a further exemplary method for updating the expected yields during cultivation of the cultivated plant with the aid of the decentralized computer system and in particular the server of FIG. 1.
  • FIG. 1 shows an exemplary distributed computer system 10 comprising a server 12, a local computer system 14, a mobile computer system 16, an agricultural machine 18, and a satellite system 20.
  • the server 12 may be a cloud server that provides an IT infrastructure for storage space, processing power or application software.
  • local computer systems 14 such as a desktop computer or mobile computer systems 16 such as a smartphone, drone, portable digital assistant (PDA), laptop or tablet can communicate over a network 22 such as the Internet.
  • agricultural machines 18 or satellite systems 20 may communicate with the server.
  • the local computer system 14 may act as a client and include a web-based application that orchestrates communication with the server 12. For example, requests for revenue determination are sent to the server 12, or requested data, such as determined revenues and scenarios for the determination, are received by the server 12.
  • the request for yield determination may comprise position data of the field, time data, field-specific data, in particular growth data, harmful organism data or action data.
  • the local computer system 14 may serve to visualize data on a screen, such as the determined yields and the assumptions or scenarios that led to the determined yields.
  • the mobile computer system 16 such as the smartphone, laptop, or tablet, may act as a client and include a web-based application that orchestrates communication with the server 12.
  • the mobile computer system 16, such as a smartphone or a drone can be deployed directly in the field to communicate field-specific data to the server 12.
  • a camera of the mobile computer system 16 can be used to generate image data.
  • local image data of the field can be detected with the aid of the mobile computer system 16 and transmitted to the server 12 in order to determine approximately yield forecasts.
  • the image data can be used to extract growth, infestation or agricultural measures using image and / or object analysis methods.
  • the image data can accordingly act as growth data, infestation data and / or action data, for example to determine yield forecasts.
  • credit scores can be captured with the aid of the mobile computer system 16 and transmitted to the server 12 in order to determine approximately yield forecasts.
  • agricultural machinery 18 can detect agricultural measures via sensors incorporated therein.
  • an agricultural machine 18 for sowing seed may capture position data of the application, type of seed, amount of seed applied, and time of application.
  • an agricultural harvesting machine 18 for harvesting crop protection agents may detect position data of the application, type of plant protection product, amount of plant protection product applied and time of application.
  • measures data can be recorded that, for example, specify seeding measures, fertilizer measures, soil tillage measures, crop protection measures or irrigation measures.
  • the detected action data can be transmitted to the server 12 in order to determine approximately yield forecasts.
  • measured values of satellite systems 20 can be detected and transmitted to the server 12.
  • Earth observation satellites for remote sensing can be acquired based on different measurement techniques, such as LI DAR, RADAR, hyper- or multispectral spectrometry or photography, weather data, or field-specific data such as growth data, infestation data, and / or policy data.
  • growth data can be extracted from satellite images, such as the biomass of a field or the leaf area index.
  • Navigation satellites can be used for locating or determining position data.
  • the acquired weather data or the detected field-specific data can be transmitted to an external database 24, which can be accessed by the server 12, or the acquired weather data or field-specific data can be transmitted directly to the server 12.
  • the server 12 may include an acquisition module 26 for sending and receiving data over a network, such as the Internet. Via the acquisition module 26, the server 12 may be connected to other network-enabled devices 14, 16, 18, 20, such as a desktop computer 14, a smartphone 16, an agricultural machine 18, or a satellite system 20 via a network such as the Internet. Thus, field-specific data may be transmitted via the acquisition module 26 from the mobile computer system 16, the agricultural machine 18, or the satellite system 20.
  • the server 12 is configured to determine the expected yield on the field to be considered.
  • the server comprises, in particular, a weather data module 28, a harmful organisms module 30, a measures module 32 and an income module 34.
  • the acquisition module 26 provides, for example, position data, time data, weather data, field-specific data or historical data.
  • the weather module 28 provides, for example, models for determining the weather profile and determines a predicted weather course, as described in Figures 2 to 4.
  • the weather module 28 may be in communication with the detection module 26, which provides corresponding weather data.
  • the harmful organism module 30 provides, for example, models for the occurrence of harmful organisms and determines a risk of infection, as described in FIGS. 2 to 4.
  • the pest organism module 30 may be in communication with the detection module 26, which provides corresponding pest organism data.
  • the action module 32 provides, for example, models for determining agricultural lent measures and determines agricultural measures, as described in FIGS. 2 to 4.
  • the action module 32 may be in communication with the capture module 26, which provides appropriate policy data.
  • the yield module 34 provides, for example, models for determining the expected yields and determines the expected yields as described in FIGS. 2 to 4.
  • the revenue module 34 may be in communication with the acquisition module 26, which provides corresponding growth data.
  • FIG. 2 shows an exemplary method for determining the expected yields during cultivation of the crop plants with the aid of the decentralized computer system 10 and in particular with the aid of the server 12 of FIG. 1.
  • the method as shown in FIG. 2 can be carried out before or at the time of sowing.
  • the current time is then before or at the sowing time and the method can be used in particular for planning the pending cultivation period.
  • position data identifying the field and time data specifying the current time and / or harvest time are provided.
  • the position data and time data may be generated on a local or mobile computer system 14, 16 and transmitted to the server 12.
  • the current time may specify a given time or the current time as detected by the local or mobile computer system 14, 16, for example.
  • the harvest time can specify a given time of the planned harvest or, with the help of a growth model, the optimal time of the planned harvest can be determined.
  • position data are detected with the aid of a mobile computer system 16, which comprises a position sensor, such as a GPS sensor.
  • a mobile computer system 16 which comprises a position sensor, such as a GPS sensor.
  • position data can be provided by means of an input module, such as a keyboard, a computer mouse or a touch-sensitive screen, of the local or mobile computer system 14, 16.
  • the position data can be transmitted from the local or mobile computer system 14, 16 to the server 12.
  • geographic maps such as satellite maps, may be provided on the local or mobile computer system 14, 16 to specify the field to be viewed.
  • the geocoordinates may include coordinates of the field boundary or a base coordinate and an associated field boundary shape.
  • weather data may be provided for the current time and for previous times that are before the current time.
  • the period of the previous time points can refer to the year of the pending cultivation period.
  • the weather data may be data collected in weather stations, such as temperature, sunshine duration, wind speed, precipitation, daily precipitation totals, radiation totals, daily minimum and maximum air temperature. temperature, near the ground, soil temperature.
  • the weather data may be transmitted by weather measuring stations to the server 12 or to an external database 24 accessible to the server. From the weather data, an actual or previous weather history can be determined up to the current time.
  • a predicted weather profile for a prediction period can be determined at least on the basis of the weather data provided up to the current time or the previous weather profile.
  • the prediction period may include a period between the current time and the harvest time.
  • the forecast period can consist of a period between the current time and the harvest time.
  • the prediction of the course of the weather for the upcoming cultivation period of the crops until harvest time can thus be carried out taking into account the previous weather history, preferably the previous weather history and the predicted weather course seamlessly merge.
  • the purpose of weather forecasting is to predict as accurately as possible the distribution and relative probabilities of weather events for the upcoming growing season.
  • the weather for the next few days can be predicted comparatively accurately, while predictions of the weather for a time in a few weeks or months, for example greater than nine days, are comparatively inaccurate in the future. Therefore, for periods when the weather can only be inaccurately predicted, historical weather data may be well suited to use trends that have been frequently observed in previous years as a basis for predicting future weather.
  • weather forecasts for the near future may be obtained from a variety of commercial suppliers.
  • the predicted weather history may include a short-term predicted weather history from the current time to a first time after the current time or for the near future or a period from the current time to a few days, up to about 9 days after the current time.
  • Such briefly predicted weather patterns from the current time to a first time after the current time can be provided by an external database 24, which can be accessed by the server 12, and transmitted to the server 12 or determined on the server 12 ,
  • predicted weather patterns are determined on the basis of dynamic weather models and possibly taking into account the previous weather history or the weather data at the current time.
  • the predicted weather history may include a long-term predicted weather history until the scheduled harvest time from about the first time after the current time to the scheduled harvest time, where the long-term weather history is the distant future or a period from the current time or from the end - point, about the 9th day, of the short-term predicted weather course until the harvest time covers.
  • the more distant future eg more than one week or more than 9 days
  • seasonal weather forecasts are used.
  • predictions can be based on global, regional and globally-regional coupled dynamic circulation models and / or the multi-annual statistics of historical weather data and / or a dynamic projection (circulation model) of individual climate variables combined with the stochastic weather simulation of other variables and / or pure stochastic weather simulations based. Deciding what kind of seasonal prediction will be used may depend on the predictive power of the models. An index such as the Brier Score can be used for this. Below a certain limit, below which the added benefit of the modeled weather forecast over the long-term climate statistics or multi-annual statistics of historical weather data is not significant, seasonal weather forecasts based on the long-term climate statistics or multi-annual statistics of historical weather data can be preferred.
  • the long-term predicted weather course can follow the briefly predicted weather course, preferably connect seamlessly.
  • the short-term and long-term predicted weather patterns are determined such that they can be combined in a time series, preferably in a seamlessly passing time series.
  • a seamless transition designates that no jumps or other irregularities, which do not originate from the weather course itself and thus are artificial, occur in the predicted weather course in order to generate as robust and realistic forecasts as possible.
  • the long-term predicted weather profile follows the briefly predicted weather profile in such a way that the predicted weather course has a continuous course.
  • At least two or more predicted weather events or projections for the prediction period are determined based on the weather data provided up to the current time.
  • three predicted weather patterns can be determined, whereby a mean, a worst and a most favorable predicted weather course are determined.
  • a typical, eg the most probable, or a medium weather history, e.g. B. a mean of the weather patterns of a defined period of time, for example, the last three, four, five, six, seven, eight, nine, ten years, are determined.
  • certain seasonal weather forecasts that appear more likely than others may be determined.
  • a prediction for a - favorable weather history and / or an unfavorable weather pattern is made from agricultural perspective.
  • several weather forecasts can be created, which preferably cover the spectrum of the weather patterns that have occurred in recent years.
  • a probability of its occurrence can be determined for each weather course, so that the Weather patterns and the resulting yield estimates can be compared with each other.
  • the various weather history sections are merged into seamless time series ("seamless prediction").
  • the predicted weather history is determined such that the actual or previous weather history and the predicted weather history merge seamlessly
  • the actual or previous weather course and the predicted weather course can be summarized by a seamlessly merging time series, in which a seamless transition means that no jumps or other irregularities occur in the combined weather course in order to generate robust and realistic predictions the course of the weather is determined in such a way that the previous course of the weather, combined with the predicted weather course, results in a continuous progression
  • the occurrence of jumps or irregularities should be related in particular to the point of connection between the actual or previous weather course and the predicted weather course.
  • a seamless transition can be achieved by, for example, taking into account such years of historical weather data having a similar actual or past weather history as the previous or actual weather history up to the present time for the growing period to be considered.
  • model-based or dynamic approaches only those solutions for the predicted weather course can be taken into account, which seamlessly follow the actual or previous weather course up to the current time for the cultivation period to be considered.
  • periods of similar or matching statistics and matching transition without jumps lined up with appropriate weather conditions.
  • the time series of the individual time segments can be model-based or generated dynamically. If at least two predicted weather profiles are determined, each of the predicted weather profiles is determined in such a way that the actual or previous weather profile up to the current time for the cultivation period to be considered and the respective predicted weather profile for the prediction period can be combined in a seamlessly passing time series.
  • an infestation risk for the prediction period is determined based on the predicted weather course or multiple infestation risks in each case based on the at least two or more weather profiles (n).
  • prognosis models based on historical pest information can be used for this purpose.
  • the historical pest organism data may include satellite data, local image data or scores collected for the field under consideration or for an environment in a radius of several kilometers (km), approximately 1 to 10 km, around the field to be inspected.
  • the his- Toric pest data may have been transferred to the external database 24 accessible to the server 12 and transmitted directly to the server 12.
  • the historical harmful organism data and the associated prognosis models can thus be provided by an external database 24, which can be accessed by the server 12, or directly by the server 12.
  • one or more digital maps of the field are generated for prediction of the risk of infection, in which the risk for infestation with one or more harmful organisms is drawn in or specified on a site-specific basis.
  • area-specific refers to a division of the field to be considered into partial areas which have different characteristics influencing the risk of infestation.
  • a defined harmful organism to generate a series of digital maps, for example a map for each month of the year, and to display on the maps by means of color coding the risk of infestation of the partial area with the harmful organism in the one considered Month and / or predicted weather.
  • the color "red” could stand for a risk of infestation greater than 90% and the color "green” for a risk of infestation less than 10%.
  • agricultural measures for the prediction period are determined based on the predicted weather course and / or the predicted infestation risk. Corresponding different agricultural measures can be determined for different predicted weather patterns. For example, if the risk of fungal infestation increases at a first time for a first predicted weather pattern and exceeds the threshold level at a second time, an injection is determined at the second time. For example, if the risk of fungal infestation increases at a first time for a second predicted weather pattern and then decreases again due to the weather conditions, then in the case of the second predicted weather pattern no injection action is taken at the second time.
  • the expected yield of the crop at harvest time is determined on the basis of the predicted weather pattern, the predicted infestation risk and possibly the agricultural measures for the prediction period.
  • at least two or more predicted weather patterns can be assumed.
  • an expected yield can be calculated for each weather course.
  • a decision support can be generated, in which the effects of the weather on the risk of infestation and the resulting agricultural measures are predicted on the basis of the expected yield.
  • the calculation of the expected yields can be made under the assumption that the previously determined forecasts arrive (weather history, occurrence of harmful organisms) and the identified agricultural measures are carried out. It can be taken into account that there may be an interaction between the occurrence of harmful organisms and agricultural measures.
  • an agricultural measure may be to prevent the occurrence of a predicted harmful organism or to reduce the risk.
  • the statement "assuming that the previously determined predictions arrive" that the weather history as predicted means a risk for the occurrence of harmful organisms as predicted though due to the predicted weather history, but that the detected agricultural measures carried out will be successful, leading to a reduced risk of harmful organisms in terms of control of harmful organisms (the risk may also be negligible if the identified agricultural objective is to prevent the occurrence of harmful organisms).
  • the determination of the expected yields may also be made under the assumption that the previously identified agricultural measures will not be taken. Thus, the benefits of the identified agricultural measures and their impact on the expected yield can be made clear.
  • the determined expected yields for at least two or more predicted weather patterns, for the appropriately determined infestation risks and / or the correspondingly determined agricultural measures can be provided, for example, on the server side and transmitted, for example, to be displayed on the local or mobile computer system 14, 16 become.
  • the method can be used in particular for planning the upcoming cultivation period, for example to select the sowing time, to plan the agricultural measures or to forecast the planned optimal harvest time.
  • FIG. 3 shows an exemplary method for updating the expected yields during cultivation of the cultivated plant with the aid of the decentralized computer system 10 and, in particular, with the aid of the server 12 of FIG. 1.
  • the method as shown in Figure 3, be performed after the sowing time and before or after the scheduled harvest time.
  • the current time is then after the sowing time in the current growing period and before or after the planned harvest time of the current growing season.
  • the method can thus be used in particular for planning during the current growing period or for the retrospective evaluation after the growing period.
  • position data identifying the field and time data specifying the current time and / or harvest time are provided, as well as field-specific data acquired during the growing period.
  • the position data and time data are provided and used as described in connection with FIG.
  • field-specific data are provided which relate to the actual state of the field to be considered.
  • Field specific data includes, for example, pest organism data, policy data, and / or growth data.
  • the harmful organism data specify the real course of the actually occurring harmful organisms
  • the action data the real course of the measures actually carried out
  • the field-specific data, as described in connection with FIG. 1, are preferably detected.
  • field-specific data for the current time and past times in the current growing period that are before the current time can be provided.
  • field-specific data can be provided from further fields relating to analogous conditions. Analogous conditions may be present, for example, with respect to seeding, variety, weather, soil or pre-crop.
  • weather data for the current time and for past times in the current growing period, which are before the current time can be provided. The weather data provided are provided and used as described in connection with FIG.
  • a predicted weather profile for a prediction period can be determined on the basis of the weather data provided up to the current time.
  • the prediction of the course of the weather for the current cultivation period of the crop until the harvest time can thus be carried out taking into account the previous weather history, preferably the previous weather history and the predicted weather course seamlessly merge.
  • the predicted weather course or the at least two or more predicted weather profiles is / are determined, as described in connection with FIG. 2, on the basis of the weather data provided up to the current time.
  • a risk of infestation for the prediction period is determined based on the predicted weather course or infestation risks based on at least two or more predicted weather profiles (n).
  • the risk of infection is determined as described in connection with FIG.
  • harmful organism data and / or measures data can be taken into account in order to determine the risk of infestation on the basis of the actual course of the actually occurring harmful organisms and / or the actual course of the measures actually carried out.
  • the predicted infestation risk for the prediction period is determined based on the predicted weather history and based on pest organism data for the field to be considered.
  • the harmful organism data may include, for example, satellite data or image data on the basis of which an infestation can be detected.
  • the satellite data may be provided to the server 12 directly or transmitted to the server 12 directly via a satellite or indirectly via an external server or database 24 accessible to the server 12.
  • the image data can be transmitted via a mobile computer system 16, such as a smartphone or a tablet, with a Camera are provided to the server 12 or transmitted to the server 12.
  • the pest organism data may also include pest organism data in a radius of several kilometers (km), about 1 to 10 km, around the field to be observed.
  • the harmful organism data may also include those of other fields under analogous conditions. Thus, the risk of infection can be adapted to the real conditions during the growing season.
  • a fourth step S9 agricultural measures for the prediction period are determined based on the predicted weather course and / or the determined infestation risk.
  • the agricultural measures are determined as described in connection with FIG. Measures data may additionally be taken into account in order to determine agricultural measures for the prediction period on the basis of the measures actually taken in the course of the cultivation period so far.
  • the expected yields in the cultivation of the crops at harvest time are determined on the basis of the predicted weather pattern, the predicted infestation risk and the agricultural measures.
  • the expected yields are determined in the fifth step S1 1, as described in connection with Figure 2.
  • growth data can be taken into account in order to determine the expected yields on the basis of the actual course of the actually occurred growth.
  • a plant growth model can be used, which can be checked and, if necessary, adapted on the basis of the growth data.
  • the plant growth model simulates the growth of a crop of crops over a defined period of time. It is also conceivable to use a model based on a single plant, which simulates the energy and substance flows in the individual organs of the plant. In addition, mixed models can be used.
  • the growth of a crop in addition to the genetic characteristics of the plant mainly by the prevailing over the life of the plant local weather conditions (quantity and spectral distribution of incident sunbeams, temperature gradients, rainfall, wind input) determines the condition of the soil and nutrient supply.
  • Soil Soil Type, Soil Texture, Soil Type, Field Capacity, Permanent Wilt Point, Organic Carbon, Mineral Nitrogen Content, Soil Density, Van Genuchten Parameters, etc.
  • Cultivated Plant Species, Variety, Variety Specific Parameters such as Specific Leaf Area Index, Temperature Totals, Maximum Root Depth, etc.
  • Cultivation measures seed, sowing date, sowing density, sowing depth, fertilizer, fertilizer amount, number of fertilizer dates, fertilizing date, tillage, crop residues, crop rotation, distance to field of the same culture in the previous year, irrigation, u.a.
  • the prediction of the temporal evolution of cultivated crops is preferably made site specific for the field to be considered.
  • FIG. 4 shows a further exemplary method for determining the expected yield during cultivation of the crop with the aid of the decentralized computer system 10 of FIG. 1, the yield being determined on the basis of predetermined agricultural measures.
  • the method as shown in Figure 4, be performed before or after the sowing time.
  • the current time is then before or after the sowing time of the current growing period or before or after a planned harvest time of the current growing period.
  • the procedure can thus be used in particular for planning before or during the current growing season and for the retrospective evaluation of the past cultivation period.
  • the method according to FIG. 4 is carried out analogously to the method described in FIGS. 2 and 3 with analogous method steps S1 1 to S15.
  • defined action data are provided which predetermine the agricultural measures.
  • defined action data can be generated, for example, in a web-based application on the local or mobile computer system 14, 16 on the basis of a predetermined selection of agricultural measures.
  • the defined action data may be provided to the server 12.
  • the agricultural measures may be specified for the specific area to be considered.
  • the determination of the expected returns is based on the measures prescribed via the defined action data. If the procedure for determining the expected yields has already been carried out at least once for the field under consideration and / or for the growing period, the predefined measures for a previous determination of the agricultural measures can be adopted. Furthermore, a user may be offered, for example, on the client side agricultural measures, for example from a previous determination of the agricultural measures or from all available agricultural measures. The user can then choose about client-side agricultural measures. Based on the selection, defined action data can be generated and transmitted from the local or mobile computer system 14, 16 to the server 12. The procedure Ren for determining the expected yields can then be carried out server-side based on the predetermined measures.
  • the defined action data may specify in whole or in part agricultural measures for the prediction period. If agricultural measures are specified for the complete forecast period or if appropriately defined measures are provided, the step of determining the agricultural measures can be completely or partially omitted. If agricultural measures are specified for a first part of the forecast period or if correspondingly defined measures are provided, the procedure for determining expected yields will determine agricultural measures for a second part of the forecasting period. Here, the second part of the forecast period is different from the first part. In the second part of the forecast period, no further agricultural measures are specified. The method according to FIG. 4 thus makes it possible to determine the expected yields for different scenarios concerning the agricultural measures.
  • the method according to the invention makes it possible to define additional scenarios relating to the agricultural measures.
  • the management of the field under consideration can be simplified before and during the growing season.
  • a decision support can be provided that enables efficient management of the field under consideration.
  • Embodiment 1 a method comprising the steps
  • step (F) calculating the expected yields of crops under the assumption that the forecasts given in steps (C) and / or (D) are received and that the measures identified in step (E) are carried out and / or not carried out
  • Embodiment 2 The method of Embodiment 1, in which, in step (C), using the historical weather data provided in step (B), a weather forecast is generated which represents a mean weather pattern to be expected for the location of the field.
  • Embodiment 3 The method of Embodiment 1 or 2, wherein a plurality of weather forecasts are generated in step (C) using the historical weather data provided in step (B), one of which results in a comparatively high crop yield of cultivated crops and one at a time comparatively low crop yield of cultivated crops.
  • Embodiment 4 The method of any one of Embodiments 1 to 3, in which, in step (C), using the historical weather data provided in step (B), a plurality of weather forecasts are prepared which are the spectrum of the weather patterns as occurred in recent years. cover.
  • Embodiment 5 The method of one of Embodiments 1 to 4, in which the expected yields for each predicted weather history are calculated in step (F).
  • Embodiment 6 The method of Embodiments 1 to 5, in which, in step (D), risks for infestation of the field with one or more harmful organisms are calculated for each predicted weather course.
  • Embodiment 7 The method of Embodiments 1 to 6, wherein an agricultural measure in step (E) is a measure for controlling one or more harmful organisms.
  • Embodiment 8 The method of Embodiments 1 to 7, wherein in step (E), a measure for controlling one or more harmful organisms is determined when the risk of attack by a harmful organism exceeds a threshold level
  • Embodiment 9 A computer system comprising
  • (A) means of identifying a field on which crops are or will be grown
  • (C) means for providing a weather forecast for the field for the pending or current growing period of the crops
  • (D) means for providing prediction of pest infestation events for the predicted weather history
  • Embodiment 10 means for displaying the expected returns.
  • a computer program product comprising a computer readable medium and program code stored on the volume and executed on a computer system causes the computer system to perform the following steps:
  • step (F) calculating the expected yields of crops under the assumption that the forecasts given in steps (C) and / or (D) are received and that the measures identified in step (E) are carried out and / or not carried out
  • Embodiment 1 The computer program product of Embodiment 10 configured to allow a user to select and deselect agricultural measures on a display device by operating an input device and to calculate the yield on selection of an agricultural measure in case the selected agricultural crop is selected Measure is calculated, and the income from the deselection of an agricultural measure is calculated in case the selected agricultural measure is not carried out.
  • Embodiment 12 The computer program product of Embodiment 10 or 1 1 configured to incorporate the weather history actually occurred up to the time of using the computer program, the actual occurrence of pest infestation events, and the actions actually taken in the calculation of the expected returns.
  • Embodiment 13 The computer program product of Embodiment 10 to 12 configured to perform one or more of the methods recited in Claims 1 to 6.
  • field is understood to mean a spatially delimitable area of the earth's surface which is used for agriculture by cultivating, feeding and harvesting crops in such a field the people is purposefully cultivated as a useful or ornamental plant.
  • the field is identified on which cultivated plants are to be cultivated or cultivated, and which is considered in greater detail in the course of the method according to the invention.
  • the identification is based on geo-coordinates, which uniquely determine the position of the field.
  • the present method is usually performed by means of a computer program installed on a computer system.
  • the geocoordinates of the field are therefore transferred to the computer program.
  • a user of the computer program could enter the geo-coordinates via a keyboard.
  • the user of the computer program can display geographic maps on a computer screen and draws the boundaries of the field to be viewed in such a map, for example with a computer mouse.
  • the area of the earth's surface is determined, which in the further course of the earth
  • historical weather data is provided for the field.
  • historical weather data is provided by commercial providers.
  • a prediction for the course of the weather for the pending or ongoing cultivation period is determined. Whether a weather forecast is prepared for the upcoming growing period of the crops to be cultivated in the field or for the current growing period of the crops cultivated in the field depends on when the prediction is made: before the beginning of the growing period or after the start of the growing period. It is conceivable that several predictions are made. It is conceivable that using the historical weather data, a typical, ie mean weather course is determined.
  • the goal in predicting the weather can be to predict the weather as precisely as possible for the upcoming or ongoing growing season.
  • the weather for the next few days can be predicted comparatively accurately, while forecasts of the weather for a time in a few weeks or months in the future are comparatively inaccurate. Therefore, for periods when the weather can only be inaccurately predicted, historical meteorological data are well suited to use trends that have been frequently observed in previous years as a basis for predicting future weather.
  • a plurality of weather forecasts are created, which preferably include the spectrum of the weather patterns as used in the past. covered years ago.
  • a probability for its occurrence is determined and indicated for each weather course, so that the weather patterns can be compared with each other.
  • a prediction for the occurrence of one or more pest infestations takes place.
  • prediction risks for one or more harmful organisms are determined in the prediction.
  • a "harmful organism” means an organism that can appear in the cultivation of crops and damage the crop, adversely affect the harvest of the crop, or compete for natural resources with the crop.
  • harmful organisms are weeds, grass weeds, animal pests such as beetles, caterpillars and worms, fungi and pathogens (eg bacteria and viruses)
  • weed plural : Weeds
  • weed are plants of the spontaneous accompanying vegetation (Segetalflora) in cultivated plant stands, grassland or garden plants, which are not cultivated there and come for example from the seminal potential of the soil or via Zuflug to the development.
  • weed grass (plural: grass weeds) is often used to clarify a distinction to the herbaceous plants.
  • weeds is used as a generic term, which should also include the term weed grass Forecast pest infestation can be used, for example, in predictive models as described in the prior art
  • the commercially available decision support system "expert” uses data on the cultivated plants grown or grown (stage of development, growing conditions, plant protection measures) for weather forecasting to predict pest infestation (Temperature, duration of sunshine, wind speed, precipitation) and the known pests / diseases (economic limits, pest / disease pressure) and calculates based on these data a risk of infection (Newe M., Meier H., Johnen A., Volk T .: proPlant expert.com - an online consulta - system on crop protection cereals, rape, potatoes and sugarbeet.
  • the determination of the infestation risks is preferably site-specific. It is conceivable, for example, that due to their position, some subareas of the field are particularly frequently and / or particularly severely affected by a pest infestation and / or that the infestation with a pest organism frequently starts from one or more defined subareas.
  • one or more digital maps of the field are used to predict the weather history in which the risk for infestation with one or more harmful organisms is / are marked on a site-specific basis.
  • a defined pest to generate a series of digital maps, for example a map for each month of the year, and to display on the maps by color coding what the risk of infestation of the patch with the pest in the one considered Month and at the predicted weather history.
  • the color "red” could stand for a risk of infestation greater than 90% and the color "green” for a risk of infestation less than 10%.
  • the range between 10% and 90% different tones of money and orange could be used.
  • Other / further types of representation are conceivable.
  • Deective threshold is a term used in agriculture, forestry and horticulture, and indicates infestation density with pathogens, diseases or stocking with weeds Up to this value, the additional economic effort through control is greater than the crop loss to be feared If the infestation or the weeding exceeds this value, the control costs are at least offset by the expected additional yield In the case of pests or diseases that can only be combated with great effort and with negative side effects for further production, the threshold for damage can be very high, but even a small infestation can lead to it a source of spread that threatens to destroy all production, the damage threshold can be very low. There are many examples in the prior art for determining damage thresholds (see, for example, Claus M.
  • Brodersen Information in Damage Threshold Models, GIL Reports, Volume 7, pages 26 to 36, http://www.gilnet.de/Publikationen/ 7_26.pdf).
  • agricultural measures to increase the yield of cultivated crops are determined.
  • the term "agricultural measure” is understood to mean any measure in the crop field that is necessary or economically and / or ecologically sensible in order to obtain a crop product, examples of which are: tillage (eg plowing), spreading of the seed (Seeding), irrigation, weed / weed removal, fertilising, pest control, harvesting, etc.
  • the agricultural measures are measures to control the predicted pest infestations, and in particular the selection of a suitable plant protection product.
  • the determination of the time when the plant protection product should be applied and the determination of the amount of plant protection agent to be applied are preferably determined on a site-specific basis n, which serves to protect plants or plant products from harmful organisms or to prevent their action, to destroy unwanted plants or plant parts, to inhibit undesirable growth of plants or to prevent such growth, and / or in a manner other than nutrients the life processes of To influence plants.
  • Examples of crop protection agents are herbicides, fungicides and pesticides (eg insecticides).
  • those measures are determined which have a maximum benefit / cost ratio. at The determination of the measures will preferably take into account legal aspects and aspects of environmental protection.
  • a selected crop protection product may be applied only at certain times and / or in certain maximum amounts. These and similar limitations are preferably taken into account when determining the measures.
  • the yields that are to be expected when cultivating the crops under the conditions of the scenarios considered are determined. For this a plant growth model can be used.
  • plant growth mode H is understood to mean a mathematical model describing the growth of a plant as a function of intrinsic (genetics) and extrinsic (environmental) factors.
  • Vegetable growth models exist for a large number of crop plants Plant growth models, for example, include the books i) "Mathematical Modeling and Simulation” by Marco Günther and Kai Velten, published by Wiley-VCH Verlag in October 2014 (ISBN: 978-3-527-41217-4), and ii) "Working with Dynamic Crop Models "by Daniel Wallach, David Makowski, James W. Jones and Francois Brun., Published in Academic Press (Elsevier), USA in 2014.
  • the plant growth model typically simulates the growth of a crop of crops over a defined period of time Using a model based on a single plant that simulates the energy and material fluxes in the individual organs of the plant It is also possible to use mixed models.
  • the growth of a crop in addition to the genetic characteristics of the plant mainly by the prevailing over the life of the plant local weather conditions (quantity and spectral distribution of incident sunbeams, temperature gradients, rainfall, wind input) determines the condition of the soil and nutrient supply. Also, the cultural measures already taken and any infestation with harmful organisms can exert an influence on plant growth and can be taken into account in the growth model.
  • the plant growth models are usually so-called dynamic process-based models (see “Working with Dynamic Crop Models” by Daniel Wallach, David Makowski, James W. Jones and Francois Brun., Published 2014 in Academic Press (Elsevier), USA), but can also be entirely
  • the models are usually so-called point models, where the models are usually calibrated so that the output reflects the spatial representation of the input, is the input collected at one point in the room or is it used for one Point in space interpolated or estimated, it is generally assumed that the model output is valid for the entire adjacent field.
  • point models calibrated at the field level to other, usually coarser, scales is known (see, for example, H. Hoffmann et al.
  • Soil Soil Type, Soil Texture, Soil Type, Field Capacity, Permanent Wilt Point, Organic Carbon, Mineral Nitrogen Content, Soil Storage, Van Genuchten Parameters, etc.
  • Cultivated plant species, variety, variety-specific parameters such as Specific leaf area index, temperature sums, maximum root depth, etc.
  • Cultivation measures seed, sowing date, sowing density, sowing depth, fertilizer, fertilizer amount, number of manure dates, fertilizing date, tillage, crop residues, crop rotation, distance to field of same culture in the previous year, irrigation, etc.
  • the prediction of the temporal evolution of cultivated crops is preferably carried out on a specific area.
  • the calculation of the expected yields is based on the assumption that the previously determined forecasts arrive (weather history, pest infestation events).
  • the calculation of the expected income is further based on the assumption that the previously identified agricultural measures are taken and / or that they are not taken. It is conceivable that the user of the computer program product can study the influence of the measures on the expected yields on the computer, for example by deselecting recommended measures and then computing the computer program how the yield changes if the exempted measure is not carried out.
  • the selection and deselection of measures is done site specific.
  • the expected revenues are displayed to a user on a display device.
  • the display device is a screen that is part of the present computer system.
  • the expected yield is displayed for individual partial surfaces and / or the entire field.
  • the display can be graphically supported, eg with the aid of bar graphs or the like. The user can thus look at different scenarios on the computer and see what returns will result when a particular predicted weather history actually becomes real and / or what returns result when certain actions are taken or not taken.
  • the expected yields are displayed on the surface of the area in the form of digital maps on the computer.
  • said steps (C), (D), (E), (F) and (G) are repeated, wherein the prevailing until the respective time of performing the steps course of the weather, actually occurred pest infestations and actually agricultural measures are taken into account.
  • the present computer program product is preferably configured to be automatically updated. Updating means that the actual course of weather up to the time of the respective update, the actual occurrence of pest infestations and the measures actually taken (eg to combat pest infestations) are included in the calculation of the expected returns.
  • the update can be automatic whenever the user starts or calls the computer program. It is also conceivable, however, that the update takes place at a fixed time, for example every day or every week. It is also conceivable, however, that an update is made irregularly, for example, whenever there is a significant change. softness of the real from the predicted conditions. In an update, the above steps (C), (D), (E), (F) and (G) are repeated.
  • step (E) Assuming the user has run the present computer program product for a first time at a first time, and has the proceeds calculated for a predicted weather history and on the condition that the recommended actions of step (E) are actually taken. At a later second time, the user retrieves the present computer program product. In the meantime, there has been a definite course of weather that affects plant growth of cultivated crops and / or the risk of pest infestation.
  • the present computer program product determines the actual weather course and adjusts the prediction for the pest infestation risk to the actual weather course.
  • one or more updated weather forecasts are created and the corresponding pest infestation risks are also updated. Based on the updated pest infestation risks, new measures to control pests are identified. Finally, an updated expected return is calculated and displayed.

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Abstract

La présente invention concerne le domaine technique de la production de plantes cultivées, en particulier l'établissement de pronostics relatifs au rendement attendu.
EP18788783.1A 2017-10-26 2018-10-24 Estimation du rendement de production de plantes cultivées Pending EP3701449A1 (fr)

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EP17198464 2017-10-26
PCT/EP2018/072662 WO2019038325A1 (fr) 2017-08-22 2018-08-22 Estimation du rendement de production de plantes cultivées
PCT/EP2018/079132 WO2019081567A1 (fr) 2017-10-26 2018-10-24 Estimation du rendement de production de plantes cultivées

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CA2987761A1 (fr) * 2017-12-06 2019-06-06 South Country Equipment Ltd. Prevision de potentiel de rendement de recolte fondee sur l'eau
US11589509B2 (en) * 2018-10-26 2023-02-28 Deere & Company Predictive machine characteristic map generation and control system
JP7281133B2 (ja) * 2019-07-04 2023-05-25 オムロン株式会社 植物の栽培管理システム及び、植物の栽培管理装置
AR121562A1 (es) * 2020-03-13 2022-06-15 Basf Agro Trademarks Gmbh Método y sistema para determinar un plan de tratamiento fitosanitario de una planta agrícola
CN111915096B (zh) * 2020-08-14 2021-03-09 中国科学院地理科学与资源研究所 基于作物模型、遥感数据和气候预测信息的作物产量早期预报技术
WO2022087400A1 (fr) * 2020-10-23 2022-04-28 Dowdy Crop Innovations, LLC Systèmes et procédés de gestion de culture
CN112840977A (zh) * 2020-12-31 2021-05-28 航天信息股份有限公司 一种基于小麦关键生育时期预测小麦产量的方法及系统
CN112836903B (zh) * 2021-03-25 2022-01-28 中化现代农业有限公司 病虫害风险预测方法
US11823448B2 (en) 2021-04-29 2023-11-21 International Business Machines Corporation Agricultural crop identification using satellite and crop rotation
JP2024518837A (ja) * 2021-05-19 2024-05-07 ビーエーエスエフ アグロ トレードマークス ゲーエムベーハー 遺伝データに基づいて有効性調整モデルを介して圃場を処置するための処置パラメータ(作物保護製品など)のランキングを決定する方法
CN116579521B (zh) * 2023-05-12 2024-01-19 中山大学 产量预测时间窗口确定方法、装置、设备及可读存储介质
CN116485040B (zh) * 2023-06-13 2023-09-08 中国农业大学 种子活力预测方法、系统、电子设备及存储介质
CN117636056B (zh) * 2023-12-13 2024-06-18 中南大学 基于大数据的农业信息监控方法及系统

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US10115158B2 (en) * 2010-10-25 2018-10-30 Trimble Inc. Generating a crop recommendation
US11113649B2 (en) * 2014-09-12 2021-09-07 The Climate Corporation Methods and systems for recommending agricultural activities

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