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US20210174583A1 - Generation of subsurface representations using layer-space - Google Patents

Generation of subsurface representations using layer-space
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US20210174583A1
US20210174583A1US16/706,602US201916706602AUS2021174583A1US 20210174583 A1US20210174583 A1US 20210174583A1US 201916706602 AUS201916706602 AUS 201916706602AUS 2021174583 A1US2021174583 A1US 2021174583A1
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subsurface
tiles
representations
conditioning
space
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Lewis LI
Tao Sun
Sebastien B. Strebelle
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Chevron USA Inc
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Chevron USA Inc
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Abstract

Data in physical space may be converted to layer space before performing modeling to generate one or more subsurface representations. Computational stratigraphy model representations that define subsurface configurations as a function of depth in the physical space may be converted to the layer space so that the subsurface configurations are defined as a function of layers. Conditioning information that defines conditioning characteristics as the function of depth in the physical space may be converted to the layer space so that the conditioning characteristics are defined as the function of layers. Modeling may be performed in the layer space to generate subsurface representations within layer space, and the subsurface representations may be converted into the physical space.

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Claims (20)

1. A system for generating representations of subsurface, the system comprising: one or more physical processors configured by machine-readable instructions to:
obtain representation information, the representation information defining a set of computational stratigraphy model representations, the set of computational stratigraphy model representations defining subsurface configurations in a physical space such that the subsurface configurations are defined as a function of depth, wherein the set of computational stratigraphy model representations are generated layer-by-layer using a forward stratigraphic model that simulates one or more sedimentary processes;
obtain conditioning information, the conditioning information defining one or more conditioning characteristics in the physical space such that the one or more conditioning characteristics are defined as the function of depth;
convert the set of computational stratigraphy model representations from the physical space to a layer space such that the subsurface configurations are defined as a function of layers, wherein the set of computational stratigraphy model representations are converted from the physical space to the layer space based on the layer-by-layer generation of the set of computational stratigraphy model representations by the forward stratigraphic model;
convert the conditioning information from the physical space to the layer space such that the one or more conditioning characteristics are defined as the function of layers;
perform modeling within the layer space based on the set of computational stratigraphy model representations within the layer space and the one or more conditioning characteristics within the layer space to generate multiple subsurface representations within the layer space, the multiple subsurface representations including regions of the subsurface configurations defined by the set of computational stratigraphy model representations based on the one or more conditioning characteristics, wherein the performance of the modeling within the layer space includes simultaneous simulation of both subsurface structures and subsurface properties using the regions of the subsurface configurations defined by the set of computational stratigraphy model representations, the multiple subsurface representations generated to include different subsurface structures and subsurface properties such that the multiple subsurface representations define different subsurface configurations; and
convert the multiple subsurface representations from the layer space to the physical space.
7. The system ofclaim 1, wherein performance of the modeling includes:
for an individual subsurface representation, generating a simulation domain to define one or more properties of interest and a cell thickness for individual cells;
populating the simulation domain with the one or more conditioning characteristics;
partitioning the simulation domain into tiles, individual tiles having a core region and a peripheral region, wherein at least some of the peripherical region of an individual tile overlaps with the core region of a neighboring tile, further wherein the tiles include a set of partially populated tiles and a set of unpopulated tiles, the set of partially populated tiles including one or more partially populated tiles populated with at least one of the one or more conditioning characteristics and the set of unpopulated tiles including one or more unpopulated tiles not populated with any of the one or more conditioning characteristics;
filling individual partially populated tiles based on partially populated tile matching regions of the subsurface configurations, the partially populated tile matching regions determined based on matching with the one or more conditioning characteristics within the individual partially populated tiles; and
filling individual unpopulated tiles based on unpopulated tile matching regions of the subsurface configurations, the unpopulated tile matching regions determined based on continuity with one or more neighboring tiles;
wherein the individual partially populated tiles are filled prior to filling of the individual unpopulated tiles.
11. A method for generating representations of subsurface, the method comprising:
obtaining representation information, the representation information defining a set of computational stratigraphy model representations, the set of computational stratigraphy model representations defining subsurface configurations in a physical space such that the subsurface configurations are defined as a function of depth, wherein the set of computational stratigraphy model representations are generated layer-by-layer using a forward stratigraphic model that simulates one or more sedimentary processes;
obtaining conditioning information, the conditioning information defining one or more conditioning characteristics in the physical space such that the one or more conditioning characteristics are defined as the function of depth;
converting the set of computational stratigraphy model representations from the physical space to a layer space such that the subsurface configurations are defined as a function of layers, wherein the set of computational stratigraphy model representations are converted from the physical space to the layer space based on the layer-by-layer generation of the set of computational stratigraphy model representations by the forward stratigraphic model;
converting the conditioning information from the physical space to the layer space such that the one or more conditioning characteristics are defined as the function of layers;
performing modeling within the layer space based on the set of computational stratigraphy model representations within the layer space and the one or more conditioning characteristics within the layer space to generate multiple subsurface representations within the layer space, the multiple subsurface representations including regions of the subsurface configurations defined by the set of computational stratigraphy model representations based on the one or more conditioning characteristics, wherein the performance of the modeling within the layer space includes simultaneous simulation of both subsurface structures and subsurface properties using the regions of the subsurface configurations defined by the set of computational stratigraphy model representations, the multiple subsurface representations generated to include different subsurface structures and subsurface properties such that the multiple subsurface representations define different subsurface configurations; and
converting the multiple subsurface representations from the layer space to the physical space.
17. The method ofclaim 11, wherein performance of the modeling includes:
for an individual subsurface representation, generating a simulation domain to define one or more properties of interest and a cell thickness for individual cells;
populating the simulation domain with the one or more conditioning characteristics;
partitioning the simulation domain into tiles, individual tiles having a core region and a peripheral region, wherein at least some of the peripherical region of an individual tile overlaps with the core region of a neighboring tile, further wherein the tiles include a set of partially populated tiles and a set of unpopulated tiles, the set of partially populated tiles including one or more partially populated tiles populated with at least one of the one or more conditioning characteristics and the set of unpopulated tiles including one or more unpopulated tiles not populated with any of the one or more conditioning characteristics;
filling individual partially populated tiles based on partially populated tile matching regions of the subsurface configurations, the partially populated tile matching regions determined based on matching with the one or more conditioning characteristics within the individual partially populated tiles; and
filling individual unpopulated tiles based on unpopulated tile matching regions of the subsurface configurations, the unpopulated tile matching regions determined based on continuity with one or more neighboring tiles;
wherein the individual partially populated tiles are filled prior to filling of the individual unpopulated tiles.
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EP20895849.6AEP4070290B1 (en)2019-12-062020-11-20Generation of subsurface representations using layer-space
PCT/US2020/061489WO2021113091A1 (en)2019-12-062020-11-20Generation of subsurface representations using layer-space
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EP4070290A1 (en)2022-10-12
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AU2020397825A1 (en)2022-06-09
US11010969B1 (en)2021-05-18
AU2020397825B2 (en)2023-05-18
WO2021113091A1 (en)2021-06-10

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