WO2021146104A1 - Correlation of multiple wells using subsurface representation - Google Patents
Correlation of multiple wells using subsurface representation Download PDFInfo
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- WO2021146104A1 WO2021146104A1 PCT/US2021/012629 US2021012629W WO2021146104A1 WO 2021146104 A1 WO2021146104 A1 WO 2021146104A1 US 2021012629 W US2021012629 W US 2021012629W WO 2021146104 A1 WO2021146104 A1 WO 2021146104A1
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- simulated
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- well
- subsurface
- matched
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01V—GEOPHYSICS; GRAVITATIONAL MEASUREMENTS; DETECTING MASSES OR OBJECTS; TAGS
- G01V20/00—Geomodelling in general
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06F—ELECTRIC DIGITAL DATA PROCESSING
- G06F30/00—Computer-aided design [CAD]
- G06F30/10—Geometric CAD
- G06F30/13—Architectural design, e.g. computer-aided architectural design [CAAD] related to design of buildings, bridges, landscapes, production plants or roads
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- E—FIXED CONSTRUCTIONS
- E21—EARTH OR ROCK DRILLING; MINING
- E21B—EARTH OR ROCK DRILLING; OBTAINING OIL, GAS, WATER, SOLUBLE OR MELTABLE MATERIALS OR A SLURRY OF MINERALS FROM WELLS
- E21B41/00—Equipment or details not covered by groups E21B15/00 - E21B40/00
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- E—FIXED CONSTRUCTIONS
- E21—EARTH OR ROCK DRILLING; MINING
- E21B—EARTH OR ROCK DRILLING; OBTAINING OIL, GAS, WATER, SOLUBLE OR MELTABLE MATERIALS OR A SLURRY OF MINERALS FROM WELLS
- E21B2200/00—Special features related to earth drilling for obtaining oil, gas or water
- E21B2200/20—Computer models or simulations, e.g. for reservoirs under production, drill bits
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01V—GEOPHYSICS; GRAVITATIONAL MEASUREMENTS; DETECTING MASSES OR OBJECTS; TAGS
- G01V2210/00—Details of seismic processing or analysis
- G01V2210/60—Analysis
- G01V2210/64—Geostructures, e.g. in 3D data cubes
Definitions
- the present disclosure relates generally to the field of correlating multiple wells using subsurface representations.
- Correlation of different wells using well logs and/or well cores may provide insights on whether and/or how different segments of the wells are linked together.
- Lithostratigraphic correlations of wells may result in erroneous representations of the spatial distributions of rock properties and/or internal structure of a reservoir.
- the subsurface representation information may define one or more subsurface representations.
- a subsurface representation may define simulated subsurface configuration of a simulated subsurface region including simulated wells.
- the simulated wells may include a first simulated well, a second simulated well, and/or other simulated wells.
- the simulated subsurface configuration of the simulated subsurface region may define simulated correlation between the simulated wells such that the simulated subsurface configuration of the simulated subsurface region defines simulated correlation between the first simulated well and the second simulated well.
- the well information may define subsurface configuration of wells and spatial arrangement of the wells.
- the wells may include a first well, a second well, and/or other wells.
- the spatial arrangement of the first well and the second well may include the first well separated from the second well by a distance.
- Similarity maps for the wells may be generated based on comparison of the subsurface configuration of the wells with the simulated subsurface configuration of the simulated subsurface region and/or other information. Individual similarity maps may characterize extent of similarity between individual ones of the wells and different locations within the simulated subsurface region.
- the similarity maps may include a first similarity map for the first well, a second similarity map for the second well, and/or other similarity maps for other wells.
- One or more groupings of matched simulated wells within the simulated subsurface region may be identified based on the similarity maps, the spatial arrangement of the wells, and/or other information.
- Individual groupings of matched simulated wells may include a matched simulated well for individual ones of the wells.
- the grouping(s) of matched simulated wells may include a first grouping of matched simulated wells and/or other groupings of matched simulated wells.
- the first grouping of matched simulated wells may include the first simulated well matched to the first well, the second simulated well matched to the second well, and/or other simulated wells matched to other wells.
- Correlation between the wells may be determined based on the simulated correlation between the matched simulated wells and/or other information.
- Correlation between the first well and the second well may be determined based on the simulated correlation between the first simulated well and the second simulated well, and/or other information.
- a system that correlates multiple wells may include one or more electronic storage, one or more processors and/or other components.
- the electronic storage may store subsurface representation information, information relating to subsurface representation, information relating to simulated subsurface configuration, information relating to simulated subsurface region, information relating to simulated well, well information, information relating wells, information relating to subsurface configuration of wells, information relating to spatial arrangement of wells, information relating to similarity maps, information relating to matched simulated wells, information relating to correlation between wells, and/or other information.
- the processor(s) may be configured by machine-readable instructions. Executing the machine-readable instructions may cause the processor(s) to facilitate correlating multiple wells.
- the machine-readable instructions may include one or more computer program components.
- the computer program components may include one or more of a subsurface representation component, a well component, a similarity map component, a matched simulated well component, a correlation component, and/or other computer program components.
- the subsurface representation component may be configured to obtain subsurface representation information and/or other information.
- the subsurface representation information may define one or more subsurface representations.
- a subsurface representation may define simulated subsurface configuration of a simulated subsurface region.
- the simulated subsurface region may include simulated wells.
- the simulated wells may include a first simulated well, a second simulated well, and/or other simulated wells.
- the simulated subsurface configuration of the simulated subsurface region may define simulated correlation between the simulated wells such that the simulated subsurface configuration of the simulated subsurface region defines simulated correlation between the first simulated well and the second simulated well.
- a subsurface representation may be scaled in area size and thickness to match a subsurface region of interest.
- a subsurface representation may include a computational stratigraphy model representation, and the correlation between the wells may include chrono-sequence stratigraphic correlation.
- the subsurface representation information may define multiple subsurface representations. Individual ones of the subsurface representations may be used to provide separate set of correlation between the wells.
- the well component may be configured to obtain well information and/or other information.
- the well information may define subsurface configuration of wells and spatial arrangement of the wells.
- the wells may include a first well, a second well, and/or other wells.
- the spatial arrangement of the first well and the second well may include the first well separated from the second well by a distance.
- the wells may include more than two wells, and the spatial arrangement of the wells may include relative positions of the wells.
- the similarity map component may be configured to generate similarity maps for the wells. The similarity maps may be generated based on comparison of the subsurface configuration of the wells with the simulated subsurface configuration of the simulated subsurface region, and/or other information.
- Individual similarity maps may characterize extent of similarity between individual ones of the wells and different locations within the simulated subsurface region.
- the similarity maps may include a first similarity map for the first well, a second similarity map for the second well, and/or other similarity maps for other wells.
- the matched simulated well component may be configured to identify one or more groupings of matched simulated wells within the simulated subsurface region.
- the grouping(s) of matched simulated wells within the simulated subsurface region may be identified based on the similarity maps, the spatial arrangement of the wells, and/or other information.
- Individual groupings may include a matched simulated well for individual ones of the wells.
- the grouping(s) of matched simulated wells may include a first grouping of matched simulated wells and/or other groupings of matched simulated wells.
- the first grouping of matched simulated wells may include the first simulated well matched to the first well, the second simulated well matched to the second well, and/or other simulated wells matched to other wells.
- the grouping(s) of matched simulated wells may be identified based on the relative positions of the wells and/or other information.
- identification of the grouping(s) of matched simulated wells within the simulated subsurface region based on the similarity maps and the spatial arrangement of the wells may include determination of portions of the similarity maps within which the matched simulated wells are identified.
- the portions of the similarity maps within which the matched simulated wells are identified may be determined based on thresholding of the extent of similarity between the individual ones of the wells and the different locations within the simulated subsurface region, and/or other information.
- the portions of similarity maps may include a first portion of the first similarity map, a second portion of the second similarity map, and/or other portions of other similarity maps.
- the first simulated well may be located within the first portion of the first similarity map and the second simulated well may be located within the second portion of the second similarity map.
- a simulated distance between the first simulated well and the second simulate well may match the distance between the first well and the second well.
- the simulated distance may match the distance based on the simulated distance being within a tolerance distance of the distance.
- multiple groupings of matched simulated wells may be identified within the simulated subsurface region. Individual grouping of matched simulated wells may provide a scenario of correlation between the wells.
- matching quality of individual grouping of matched simulated wells may be determined based on extent of matching of the matched simulated wells with corresponding wells, extent of matching of simulated spatial arrangement of the matched simulated wells with the spatial arrangement of the wells, and/or other information.
- the correlation component may be configured to determine correlation between the wells based on the simulated correlation between the matched simulated wells and/or other information. Correlation between the first well and the second well may be determined based on the simulated correlation between the first simulated well and the second simulated well.
- multiple scenarios of correlation between the wells may be provided based on identification of multiple groupings of matched simulated well within the stimulated surface region and/or other information. Individual grouping of matched simulated wells may provide a scenario of correlation between the wells.
- separate sets of correlation between the wells may be provided based on the subsurface representation information defining multiple subsurface representations and/or other information. Individual ones of the subsurface representations may be used to provide separate set of correlation between the wells.
- FIG. 2 illustrates an example method for correlating multiple wells.
- FIGS. 3A-3D illustrate example segments of two wells.
- FIG. 4 illustrates an example subsurface representation
- FIGS. 5A and 5B illustrate example spatial arrangements of wells.
- FIG. 6 illustrates example similarity maps.
- FIGS. 7 A and 7B illustrate example groupings of matched simulated wells.
- the system 10 may include one or more of a processor 11 , an interface 12 (e.g., bus, wireless interface), an electronic storage 13, and/or other components.
- Subsurface representation information, well information, and/or other information may be obtained by the processor 11.
- the subsurface representation information may define one or more subsurface representations.
- a subsurface representation may define simulated subsurface configuration of a simulated subsurface region including simulated wells.
- the simulated wells may include a first simulated well, a second simulated well, and/or other simulated wells.
- the simulated subsurface configuration of the simulated subsurface region may define simulated correlation between the simulated wells such that the simulated subsurface configuration of the simulated subsurface region defines simulated correlation between the first simulated well and the second simulated well.
- the well information may define subsurface configuration of wells and spatial arrangement of the wells.
- the wells may include a first well, a second well, and/or other wells.
- the spatial arrangement of first well and the second well may include the first well separated from the second well by a distance.
- One or more groupings of matched simulated wells within the simulated subsurface region may be identified by the processor 11 based on the similarity maps, the spatial arrangement of the wells, and/or other information.
- Individual groupings of matched simulated wells may include a matched simulated well for individual ones of the wells.
- the grouping(s) of matched simulated wells may include a first grouping of matched simulated wells and/or other groupings of matched simulated wells.
- the first grouping of matched simulated wells may include the first simulated well matched to the first well, the second simulated well matched to the second well, and/or other simulated wells matched to other wells.
- a well may expose and/or run through different types of materials (e.g., sedimentary rocks) in the ground.
- the materials in the ground may be grouped into related packages. For example, rocks in the ground may be grouped into packages of rocks that are bounded by chronostratigraphic surface and/or sequence stratigraphic boundaries. Rocks may be related based on their depositions by the same flow and/or sediment transport event. Because the flow and the associated sediment transport are highly correlated spatially, the spatial distribution and spatial variabilities of the sedimentary rocks that are produced by the flow and sediment transport may be predicted.
- Lithostratigraphic correlation of wells may include correlation of wells based solely on their physical and/or petrographic features.
- Lithostratigraphic correlation of wells may include correlation of wells that maximize cross correlations between pairs of log signals. That is, lithostratigraphic correlation may correlate wells by looking for similar patterns in the pairs of log signals. For example, segments of different wells may be linked together based on similarity of geo-patterns within the segments. However, such correlation of well segments may erroneously represent spatial distributions of rock properties and/or reservoir internal heterogeneity.
- FIGS. 3C and 3D illustrate alternative spatial distributions of rock properties and/or reservoir internal heterogeneity between the well A 310 and the well B 320.
- the well A 310 and the well B 320 may be drilled into the ground with similar properties/characteristics (e.g., delta lobes of a delta plain).
- the well A 310 and the well B 320 may be physically separated (e.g., separated by fringing parts of the delta lobes) and the segments 312, 314, 316, 318 of the well A 310 may not be connected to the segments 322, 324, 326, 328 of the well B 320.
- the well A 310 and the well B 320 may be drilled into the ground with deposited layers being slanted with respect to the ground 302.
- the segment 312 of the well A 310 may correlate to the segment 328 of the well B 320 (rather than the segment 322).
- the segments 322, 324, 326 of the well B 310 may not correlate to any segments of the well A 310.
- the segments 314, 316, 318 of the well A 310 may or may not correlate to segments of the well B 320 below the segment 328.
- the electronic storage 13 may be configured to include electronic storage medium that electronically stores information.
- the electronic storage 13 may store software algorithms, information determined by the processor 11 , information received remotely, and/or other information that enables the system 10 to function properly.
- the electronic storage 13 may store subsurface representation information, information relating to subsurface representation, information relating to simulated subsurface configuration, information relating to simulated subsurface region, information relating to simulated well, well information, information relating wells, information relating to subsurface configuration of wells, information relating to spatial arrangement of wells, information relating to similarity maps, information relating to matched simulated wells, information relating to correlation between wells, and/or other information.
- the processor 11 may be configured to provide information processing capabilities in the system 10.
- the processor 11 may comprise one or more of a digital processor, an analog processor, a digital circuit designed to process information, a central processing unit, a graphics processing unit, a microcontroller, an analog circuit designed to process information, a state machine, and/or other mechanisms for electronically processing information.
- the processor 11 may be configured to execute one or more machine-readable instructions 100 to facilitate correlating multiple wells.
- the machine-readable instructions 100 may include one or more computer program components.
- the machine-readable instructions 100 may include one or more of a subsurface representation component 102, a well component 104, a similarity map component 106, a matched simulated well component 108, a correlation component 110, and/or other computer program components.
- the subsurface representation component 102 may be configured to obtain subsurface representation information and/or other information. Obtaining subsurface representation information may include one or more of accessing, acquiring, analyzing, determining, examining, identifying, loading, locating, opening, receiving, retrieving, reviewing, selecting, storing, utilizing, and/or otherwise obtaining the subsurface representation information.
- the subsurface representation component 102 may obtain subsurface representation information from one or more locations. For example, the subsurface representation component 102 may obtain subsurface representation information from a storage location, such as the electronic storage 13, electronic storage of a device accessible via a network, and/or other locations.
- a subsurface representation may refer to a computer-generated representation of a subsurface region, such as a one-dimensional, two-dimensional and/or three-dimensional model of the subsurface region.
- a subsurface representation may be representative of the depositional environment of wells (e.g., wells to be correlated).
- a subsurface representation may include geologically plausible arrangement of rock obtained from a modeling process (e.g., stratigraphic forward modeling process).
- a subsurface representation may provide simulated subsurface configuration at different locations within a simulated subsurface region (e.g., provide simulated well log values at locations in a three-dimensional (x-y-z) coordinate system).
- a subsurface region may refer to a part of earth located beneath the surface/located underground.
- a subsurface region may refer to a part of earth that is not exposed at the surface of the ground.
- a subsurface region may be defined in a single dimension (e.g., a point, a line) or in multiple dimensions (e.g., a surface, a volume).
- a subsurface representation may define simulated subsurface configuration of a simulated subsurface region. Simulated subsurface configuration may refer to subsurface configuration simulated within a subsurface representation. A simulated subsurface region may refer to a subsurface region simulated within a subsurface representation. That is, a subsurface representation may define subsurface configuration of a subsurface region simulated by one or more subsurface models. A subsurface representation may be used as and/or may be referred to as a digital analog. In some implementations, the subsurface representation information may define multiple subsurface representations. Individual ones of the subsurface representations may be used to provide separate set of correlation between the wells. That is, multiple subsurface representations may be used to find multiple scenarios of correlations between wells.
- a subsurface model may refer to a computer model (e.g., program, tool, script, function, process, algorithm) that generates subsurface representations.
- a subsurface model may simulate subsurface configuration within a region underneath the surface (subsurface region).
- Subsurface configuration may refer to attribute, quality, and/or characteristics of a subsurface region.
- Subsurface configuration may refer to physical arrangement of materials (e.g., subsurface elements) within a subsurface region.
- Examples of subsurface configuration simulated by a subsurface model may include types of subsurface materials, characteristics of subsurface materials, compositions of subsurface materials, arrangements/configurations of subsurface materials, physics of subsurface materials, and/or other subsurface configuration.
- subsurface configuration may include and/or define types, shapes, and/or properties of materials and/or layers that form subsurface (e.g., geological, petrophysical, geophysical, stratigraphic) structures.
- a computational stratigraphy model may refer to a computer model that simulates depositional and/or stratigraphic processes on a grain size scale while honoring physics-based flow dynamics.
- a computational stratigraphy model may simulate rock properties, such as velocity and density, based on rock-physics equations and assumptions.
- Input to a computational stratigraphy model may include information relating to a subsurface region to be simulated.
- input to a computational stratigraphy model may include paleo basin floor topography, paleo flow and sediment inputs to the basin, and/or other information relating to the basin.
- input to a computational stratigraphy model may include one or more paleo geologic controls, such as climate changes, sea level changes, tectonics and other allocyclic controls.
- Output of a computational stratigraphy model may include one or more subsurface representations.
- a subsurface representation generated by a computational stratigraphy model may be referred to as a computational stratigraphy model representation.
- a computational stratigraphy model may include a forward stratigraphic model.
- a forward stratigraphic model may be an event-based model, a process mimicking model, a reduced physics based model, and/or a fully physics based model (e.g., fully based on physics of flow and sediment transport).
- a forward stratigraphic model may simulate one or more sedimentary processes that recreate the way stratigraphic successions develop and/or are preserved.
- the forward stratigraphic model may be used to numerically reproduce the physical processes that eroded, transported, deposited and/or modified the sediments over variable time periods.
- data may not be used as the anchor points for facies interpolation or extrapolation. Rather, data may be used to test and validate the results of the simulation.
- Stratigraphic forward modelling may be an iterative approach, where input parameters have to be modified until the results are validated by actual data. Usage of other subsurface models and other subsurface representations are contemplated.
- FIG. 4 illustrates an example subsurface representation 400.
- the subsurface representation 400 may define simulated subsurface configuration of a simulated subsurface region.
- the simulated subsurface configuration may be defined within the subsurface representation 400 as a function of spatial location, such as a function of vertical spatial location (e.g., depth), lateral spatial location (e.g., x-y coordinate in map view), and/or other spatial location.
- the subsurface representation 400 may define different types, shapes, and/or properties of materials and/or layers as a function of depth into the ground and as a function of lateral spatial location.
- the simulated subsurface configuration defined within the subsurface representation 400 may simulate the subsurface configuration that would be seen within a volume (e.g., well, reservoir) in the ground.
- a subsurface representation may be representative of a subsurface region of interest.
- the simulated subsurface configuration defined by a subsurface representation may be representative of the subsurface configuration of a reservoir of interest.
- Other subsurface regions of interest are contemplated.
- a subsurface representation may be scaled in area size and thickness to match a subsurface region of interest. For example, lateral size and/or vertical depth of a subsurface representation may be changed to be comparable to the size and thickness of a subsurface region of interest.
- a simulated subsurface region of a subsurface representation may include simulated wells.
- the simulated subsurface region of the subsurface representation 400 may include a first simulated well, a second simulated well, and/or other simulated wells.
- a simulated well may refer to a simulated volume, a simulated hole, and/or a simulated tunnel within the simulated subsurface region.
- a simulated well may refer to a portion of the subsurface representation/simulated subsurface region that includes, runs through, and/or exposes different types of simulated layers.
- a simulated well may be characterized by the simulated layers that are included within and/or surround the simulated well.
- a simulated well may extend along one or more directions.
- a simulated well may include a simulated vertical well, a simulated horizontal well, a simulated deviated well, and/or other type of simulated well.
- Simulated subsurface configuration of a simulated subsurface region may define simulated correlation between simulated wells within the simulated subsurface region. Simulated correlation between simulated wells may refer to correlation simulated between simulated wells within a subsurface representation.
- the subsurface configuration between wells in a subsurface region simulated within a subsurface representation may define the correlation between the wells.
- the simulated subsurface configuration of the simulated subsurface region may describe, identify, quantify, reflect, and/or set forth how different simulated wells within the simulated subsurface region are correlated.
- the subsurface representation 400 (shown in FIG. 4) may include multiple simulate wells in different locations within the simulated subsurface region.
- the simulated subsurface configuration of the subsurface representation 400 may define how the different wells are correlated based on the locations of the wells within the subsurface representation 400 and the connectivity of rocks between the different locations.
- the subsurface representation 400 may include a first simulated well and a second simulated, and the simulated subsurface configuration between the two simulated wells may define simulated correlation between the first simulated well and the second simulated well.
- the well component 104 may obtain well information from one or more hardware components (e.g., a computing device, a component of a computing device) and/or one or more software components (e.g., software running on a computing device).
- Well information may be stored within a single file or multiple files.
- the well information may define subsurface configuration of wells and spatial arrangement of the wells by including information that describes, delineates, identifies, is associated with, quantifies, reflects, sets forth, and/or otherwise defines one or more of content, quality, attribute, feature, and/or other aspects of the surface configuration of the wells and spatial arrangement of the wells.
- the well information may define subsurface configuration of wells by including information that makes up the content of the wells and/or information that is used to identify/determine the content of the wells.
- the well information may include one or more well logs, information determined/extracted from one or more well logs, information determined/extracted from one or more well cores, and/or other information.
- the well information may provide information on one or more properties of the wells, such as rock types, layers, grain sizes, porosity, and/or permeability.
- the well information may define spatial arrangement of wells by including information that sets forth the relative positions of the wells and/or information that is used to identify/determine the relative positions of the wells.
- FIGS. 5A and 5B illustrate example spatial arrangements of wells.
- well 502 and a well 504 may be separated by a distance D1.
- the well 502 and the well 504 may be separated by a distance D1
- the well 502 and a well 506 may be separated by a distance D2
- the well 504 and the well 506 may be separated by a distance D3.
- the spatial arrangements of wells shown in FIGS. 5A and 5B show lateral distances between the wells, this is merely as examples and are not meant to be limiting.
- Relative positions of wells may include difference in lateral locations, difference in vertical locations, and/or difference in other locations of the wells.
- the similarity maps may be generated based on comparison of the subsurface configuration of the wells with the simulated subsurface configuration of the simulated subsurface region, and/or other information. For example, lithological comparison may be performed between the subsurface configuration of the wells with the simulated subsurface configuration of the simulated subsurface region to determine to what extent the simulated subsurface configuration a simulated well matches the subsurface configuration of a well.
- multiple similarity measures/scores may be provided for a simulated well at a particular lateral location, with the different similarity measures/scores reflecting the extent of similarity for different vertical portions (e.g., different vertical segment/package, different length of well) of the well.
- the similarity measures/scores may be generated for different lateral and vertical locations within the simulated surface region to generate a three-dimensional similarity map.
- the comparison of wells to different locations within a simulated subsurface region/subsurface representation may begin at the top of the simulated subsurface region/subsurface representation, at the bottom of the simulated subsurface region/subsurface representation, and/or somewhere in the middle of the simulated subsurface region/subsurface representation. That is, a simulated well may extend from the top of the simulated subsurface region/subsurface representation, extend from the bottom of the simulated subsurface region/subsurface representation, or contained within middle of the simulated subsurface region/subsurface representation.
- the sizes of wells/well portions and simulated wells/simulated well portions that are compared may be different. For example, subsurface configuration of a 10-meter portion of a well may be compared to simulated subsurface configuration of an 8-meter portion and/or a 12-meter portion of a simulated well. Other generation of similarity measure/score and/or similarity maps are contemplated.
- a similarity map may be generated and/or stored as a heat map.
- the extent of similarity may be given within the heat map based on one or more visual characteristics (e.g., intensity, color) of the pixels within the heat map.
- a similarity map may be generated and/or stored as a matrix.
- the matrix may include cells for different positions within the simulated subsurface region, and the similarity measures/scores for the corresponding positions may be stored as one or more values within the cells.
- FIG. 6 illustrates example similarity maps 602, 604, 606.
- Individual ones of the similarity maps 602, 604, 606 may characterize extent of similarity between the corresponding wells and different locations within the simulated subsurface region/subsurface representation.
- the similarity map 602 may characterize extent of similarity between the well 502 and different locations within the simulated subsurface region/subsurface representation
- the similarity map 604 may characterize extent of similarity between the well 504 and different locations within the simulated subsurface region/subsurface representation
- the similarity map 606 may characterize extent of similarity between the well 506 and different locations within the simulated subsurface region/subsurface representation
- a grouping of matched simulated wells may include a first simulated well matched to a first well, a second simulated well matched to a second well, and a third simulated well matched to a third well.
- distance tolerance may allow for variation between the amount of separation of the simulated wells A and B’ and the amount of separate of the wells A and B.
- the distance between the simulated wells A’ and B’ may range between D-Ds and D+Ds, where e is the allowed tolerance of distance error.
- the matched simulated wells may be identified in a sequence. For example, with respect to wells A and B, a simulated well A may first be identified as the matched simulated well for well A. Then, using the location of the simulated well A’, potential locations for the simulated well B’ within the similarity map for well B may be searched to find the simulated well B’ as the matched simulated well for well B. For example, a band of area around the location of the simulated well A’ may be searched to identify the simulated well B’. The band may be located at distance D from the location of the simulated well A and may have a thickness of 2x DE to allow for tolerance in distance error.
- identification of the grouping(s) of matched simulated wells within the simulated subsurface region/subsurface representation based on the similarity maps and the spatial arrangement of the wells may include determination of portions (e.g., two-dimensional area, three-dimensional volume) of the similarity maps within which the matched simulated wells are identified. That is, before the matched simulated wells are identified, the similarity maps may be analyzed to determine in which portions of the similarity maps the extent of similarity is good (high) enough to locate the matched simulated wells.
- portions e.g., two-dimensional area, three-dimensional volume
- the portions of the similarity maps within which the matched simulated wells are identified may be determined based on thresholding of the extent of similarity between the individual ones of the wells and the different locations within the simulated subsurface region/subsurface representation, and/or other information.
- the similarity measure/score for different locations within the similarity map may be compared with one or more threshold values to determine whether the locations are suitable/acceptable or unsuitable/unacceptable for identification of a matched simulated well. Same or different threshold values may be used for different wells and/or different similarity maps.
- a portion 612 within the similarity map 602 may be determined based on thresholding of the extent of similarity between the well 502 and different locations within the simulated subsurface regions/subsurface representation.
- the portion 612 may include the locations within which a matched simulated well for the well 502 may be identified (suitable/acceptable location for matched simulated well corresponding to the well 502).
- a portion 614 within the similarity map 604 may be determined based on thresholding of the extent of similarity between the well 504 and different locations within the simulated subsurface regions/subsurface representation.
- the portion 614 may include the locations within which a matched simulated well for the well 504 may be identified (suitable/acceptable location for matched simulated well corresponding to the well 504).
- a portion 616 within the similarity map 606 may be determined based on thresholding of the extent of similarity between the well 506 and different locations within the simulated subsurface regions/subsurface representation.
- the portion 616 may include the locations within which a matched simulated well for the well 506 may be identified (suitable/acceptable location for matched simulated well corresponding to the well 506).
- a combined similarity map 650 may include the similarity maps 602, 604, 606 stacked on top of each other.
- the combined similarity map 650 may show the relative positions of the portions 612, 614, 616 within the corresponding similarity maps 602, 604, 606.
- FIGS. 7A and 7B illustrate example groupings of matched simulated wells.
- the grouping of matched simulated wells may include a simulated well 702 matched to the well 502, a simulated well 704 matched to the well 504, and a simulated well 706 matched to the well 506.
- the simulated well 702 may be located within the portion 612 of the similarity map 602
- the simulated well 704 may be located within the portion 614 of the similarity map 604
- the simulated well 706 may be located within the portion 616 of the similarity map 606.
- the grouping of matched simulated wells may be identified to honor the spatial arrangement of the wells 502, 504, 506.
- the simulated well 702 and the simulated well 704 may be separated by a distance D1 (or within distance tolerance of D1)
- the simulated well 702 and the simulated well 706 may be separated by a distance D2 (or within distance tolerance of D2)
- the simulated well 704 and the simulated well 706 may be separated by a distance D3 (or within distance tolerance of D3).
- the grouping of matched simulated wells may include a simulated well 712 matched to the well 502, a simulated well 714 matched to the well 504, and a simulated well 716 matched to the well 506.
- the simulated well 712 may be located within the portion 612 of the similarity map 602
- the simulated well 714 may be located within the portion 614 of the similarity map 604
- the simulated well 716 may be located within the portion 616 of the similarity map 606.
- the grouping of matched simulated wells may be identified to honor the spatial arrangement of the wells 502, 504, 506.
- the simulated well 712 and the simulated well 714 may be separated by a distance D1 (or within distance tolerance of D1)
- the simulated well 712 and the simulated well 716 may be separated by a distance D2 (or within distance tolerance of D2)
- the simulated well 714 and the simulated well 716 may be separated by a distance D3 (or within distance tolerance of D3).
- the simulated distances between the simulated wells 702, 704, 706 may match the distances between the wells 502, 504, 506.
- the simulated distances between the simulated wells 712, 714, 716 may match the distances between the wells 502, 504, 506.
- a simulated distance may match the corresponding distance based on the simulated distance being within one or more tolerance distances of the corresponding distance.
- the different groupings of matched simulated wells may include one or more of the simulated wells being located at different locations within the simulated subsurface region/subsurface representation. Individual grouping of matched simulated wells may provide a scenario of correlation between the wells. Thus, multiple scenarios of correlations between wells may be determined from a single simulated subsurface region/subsurface representation by identifying multiple groupings of matched simulated wells.
- the match quality of a grouping of matched simulated wells to wells may be determined based on the extent to which the simulated spatial arrangement of the matched simulated wells matches the spatial arrangement of the wells.
- the matching quality of individual grouping of matched simulated wells may be used to quantify the likelihood of the well correlation provided by the individual grouping of matched simulated wells. That is, the matching quality of a grouping of matched simulated well may indicate the likelihood that the well correlation provided (e.g., predicted, estimated) by the grouping of matched simulated well may match actual and/or realistic correlation between the wells in the real world.
- the correlation component 110 may be configured to determine correlation between the wells based on the simulated correlation between the matched simulated wells and/or other information.
- the simulated subsurface configuration between the matched simulated wells in the simulated subsurface region/subsurface representation may define simulated correlation between the matched simulated wells, and these simulated correlation may be used as and/or used to determine the correlation between the corresponding wells. That is, the simulated subsurface region/subsurface representation including simulated wells may define simulated correlation between the simulated wells, and the simulated correlation between the simulated wells in the simulated subsurface region/subsurface representation may be used to determine correlation between wells in the real world.
- a subsurface representation may include a computational stratigraphy model representation, and the correlation between the wells may include chrono-sequence stratigraphic correlation. That is, the computational stratigraphy model representation may provide simulated chrono- sequence stratigraphic correlation between simulated wells within the representation, and the matching of the real wells to the simulated wells may be used to provide the simulated chrono-sequence stratigraphic correlation between simulated wells as the chrono-sequence stratigraphic correlation between the wells in the real world.
- a simulated well A’ in a simulated subsurface region/subsurface representation may be matched to a well A
- a simulated well B’ in a simulated subsurface region/subsurface representation may be matched to a well B (based on similarity maps for wells A and B and spatial arrangement of the wells A and B).
- the simulated subsurface configuration between the simulated well A’ and the simulated well B’ in the simulated subsurface region/subsurface representation may define simulated correlation between the simulated well A and the simulated well B’.
- the correlation between the well A and the well B may be determined based on the simulated correlation between the simulated well A and the simulated well B’, and/or other information.
- every layer of the deposit in the real well is mapped to a layer in the simulated well, and the connectivity of the layers between the real well is determined using the simulated connectivity of the layers between the simulated wells.
- Using simulated correlation between simulated wells in the subsurface representation as correlation between real wells may results in multiple well correlation to be automatically tied.
- Lithostratigraphic correlation of wells may result in mismatch in correlation. For example, referring to FIG. 5B, lithostratigraphy correlation may be used to determine correlation between the well 502 and the well 504 and determine correlation between the well 504 and the well 506.
- Such correlation determined between the wells 502, 504, 506 may result in mismatch in correlation (devil’s stairs) between the well 502 and the well 506.
- the direct and automated chronostratigraphic correlation between wells as described herein may result in correlation between multiple wells that are automatically tied. For example, referring to FIG. 7A, the grouping of matched simulated wells 702, 704, 706 may result in correlation between the corresponding wells 502, 504, 506 that are automatically tied.
- the matching qualities of different subsurface representations may be determined based on extent of matching of the matched simulated wells with corresponding wells, extent of matching of simulated spatial arrangement of the matched simulated wells with the spatial arrangement of the wells, and/or other information.
- the matching quality of individual subsurface representation may be used to quantify the likelihood of the well correlation provided by the individual subsurface representation. That is, the matching quality of a subsurface representation may indicate the likelihood that the well correlation provided (e.g., predicted, estimated) by the subsurface representation may match actual and/or realistic correlation between the wells in the real world.
- some or all of the functionalities attributed herein to the system 10 may be provided by external resources not included in the system 10.
- External resources may include hosts/sources of information, computing, and/or processing and/or other providers of information, computing, and/or processing outside of the system 10.
- any communication medium may be used to facilitate interaction between any components of the system 10.
- One or more components of the system 10 may communicate with each other through hard-wired communication, wireless communication, or both.
- one or more components of the system 10 may communicate with each other through a network.
- the processor 11 may wirelessly communicate with the electronic storage 13.
- wireless communication may include one or more of radio communication, Bluetooth communication, Wi-Fi communication, cellular communication, infrared communication, or other wireless communication. Other types of communications are contemplated by the present disclosure.
- the processor 11 is shown in FIG. 1 as a single entity, this is for illustrative purposes only. In some implementations, the processor 11 may comprise a plurality of processing units. These processing units may be physically located within the same device, or the processor 11 may represent processing functionality of a plurality of devices operating in coordination. The processor 11 may be separate from and/or be part of one or more components of the system 10. The processor 11 may be configured to execute one or more components by software; hardware; firmware; some combination of software, hardware, and/or firmware; and/or other mechanisms for configuring processing capabilities on the processor 11.
- While computer program components are described herein as being implemented via processor 11 through machine-readable instructions 100, this is merely for ease of reference and is not meant to be limiting. In some implementations, one or more functions of computer program components described herein may be implemented via hardware (e.g., dedicated chip, field-programmable gate array) rather than software. One or more functions of computer program components described herein may be software-implemented, hardware- implemented, or software and hardware-implemented
- the electronic storage media of the electronic storage 13 may be provided integrally (/.e., substantially non-removable) with one or more components of the system 10 and/or as removable storage that is connectable to one or more components of the system 10 via, for example, a port (e.g., a USB port, a Firewire port, etc.) or a drive (e.g., a disk drive, etc.).
- a port e.g., a USB port, a Firewire port, etc.
- a drive e.g., a disk drive, etc.
- the electronic storage 13 may include one or more of optically readable storage media (e.g., optical disks, etc.), magnetically readable storage media (e.g., magnetic tape, magnetic hard drive, floppy drive, etc.), electrical charge-based storage media (e.g., EPROM, EEPROM, RAM, etc.), solid-state storage media (e.g., flash drive, etc.), and/or other electronically readable storage media.
- the electronic storage 13 may be a separate component within the system 10, or the electronic storage 13 may be provided integrally with one or more other components of the system 10 (e.g., the processor 11).
- the electronic storage 13 is shown in FIG. 1 as a single entity, this is for illustrative purposes only.
- the electronic storage 13 may comprise a plurality of storage units. These storage units may be physically located within the same device, or the electronic storage 13 may represent storage functionality of a plurality of devices operating in coordination.
- FIG. 2 illustrates method 200 for correlating multiple wells.
- the operations of method 200 presented below are intended to be illustrative. In some implementations, method 200 may be accomplished with one or more additional operations not described, and/or without one or more of the operations discussed. In some implementations, two or more of the operations may occur substantially simultaneously.
- method 200 may be implemented in one or more processing devices (e.g., a digital processor, an analog processor, a digital circuit designed to process information, a central processing unit, a graphics processing unit, a microcontroller, an analog circuit designed to process information, a state machine, and/or other mechanisms for electronically processing information).
- the one or more processing devices may include one or more devices executing some or all of the operations of method 200 in response to instructions stored electronically on one or more electronic storage media.
- the one or more processing devices may include one or more devices configured through hardware, firmware, and/or software to be specifically designed for execution of one or more of the operations of method 200.
- subsurface representation information may be obtained.
- the subsurface representation information may define one or more subsurface representations.
- a subsurface representation may define simulated subsurface configuration of a simulated subsurface region including simulated wells.
- the simulated wells may include a first simulated well, a second simulated well, and/or other simulated wells.
- the simulated subsurface configuration of the simulated subsurface region may define simulated correlation between the simulated wells such that the simulated subsurface configuration of the simulated subsurface region defines simulated correlation between the first simulated well and the second simulated well.
- operation 202 may be performed by a processor component the same as or similar to the subsurface representation component 102 (Shown in FIG.
- one or more groupings of matched simulated wells within the simulated subsurface region may be identified based on the similarity maps, the spatial arrangement of the wells, and/or other information.
- Individual groupings of matched simulated wells may include a matched simulated well for individual ones of the wells.
- the grouping(s) of matched simulated wells may include a first grouping of matched simulated wells and/or other groupings of matched simulated wells.
- the first grouping of matched simulated wells may include the first simulated well matched to the first well, the second simulated well matched to the second well, and/or other simulated wells matched to other wells.
- operation 208 may be performed by a processor component the same as or similar to the matched simulated well component 108 (Shown in FIG. 1 and described herein).
- correlation between the wells may be determined based on the simulated correlation between the matched simulated wells and/or other information.
- Correlation between the first well and the second well may be determined based on the simulated correlation between the first simulated well and the second simulated well, and/or other information.
- operation 210 may be performed by a processor component the same as or similar to the correlation component 110 (Shown in FIG. 1 and described herein).
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