题名 | Uncertainty quantification and inverse modeling for subsurface flow in 3D heterogeneous formations using a theory-guided convolutional encoder-decoder network |
作者 | |
通讯作者 | Zhang,Dongxiao |
发表日期 | 2022-10-01
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DOI | |
发表期刊 | |
ISSN | 0022-1694
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EISSN | 1879-2707
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卷号 | 613 |
摘要 | We build surrogate models for dynamic 3D subsurface single-phase flow problems with multiple vertical producing wells. The surrogate model provides efficient pressure estimation of the entire formation at any timestep given a stochastic permeability field, arbitrary well locations and penetration lengths, and a timestep matrix as inputs. The well production rate or bottom hole pressure can then be determined based on Peaceman's formula. The original surrogate modeling task is transformed into an image-to-image regression problem using a convolutional encoder-decoder neural network architecture. The residual of the governing flow equation in its discretized form is incorporated into the loss function to impose theoretical guidance on the model training process. As a result, the accuracy and generalization ability of the trained surrogate models are significantly improved compared to those of fully data-driven models. They are also shown to possess flexible extrapolation ability to permeability fields with different statistics. The surrogate models are used to conduct uncertainty quantification considering a stochastic permeability field, as well as to infer unknown permeability information based on limited well production data and observation data of formation properties. Results are shown to be in close accordance with those of traditional numerical simulation tools, but computational efficiency is dramatically improved. |
关键词 | |
相关链接 | [Scopus记录] |
收录类别 | |
语种 | 英语
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学校署名 | 通讯
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WOS研究方向 | Engineering
; Geology
; Water Resources
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WOS类目 | Engineering, Civil
; Geosciences, Multidisciplinary
; Water Resources
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WOS记录号 | WOS:000862505600004
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出版者 | |
EI入藏号 | 20223612699912
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EI主题词 | Computation theory
; Computational efficiency
; Convolution
; Convolutional neural networks
; Decoding
; Machine learning
; Network architecture
; Network coding
; Stochastic models
; Stochastic systems
; Uncertainty analysis
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EI分类号 | Information Theory and Signal Processing:716.1
; Computer Theory, Includes Formal Logic, Automata Theory, Switching Theory, Programming Theory:721.1
; Data Processing and Image Processing:723.2
; Artificial Intelligence:723.4
; Control Systems:731.1
; Probability Theory:922.1
; Systems Science:961
|
ESI学科分类 | ENGINEERING
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Scopus记录号 | 2-s2.0-85137165561
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来源库 | Scopus
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引用统计 |
被引频次[WOS]:12
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成果类型 | 期刊论文 |
条目标识符 | http://sustech.caswiz.com/handle/2SGJ60CL/401606 |
专题 | 理学院_深圳国家应用数学中心 工学院 |
作者单位 | 1.Department of Mathematics and Theories,Peng Cheng Laboratory,Shenzhen,Guangdong,518055,China 2.National Center for Applied Mathematics Shenzhen (NCAMS),Southern University of Science and Technology,Shenzhen,Guangdong,518055,China 3.College of Engineering,Peking University,Beijing,100871,China |
通讯作者单位 | 深圳国家应用数学中心 |
推荐引用方式 GB/T 7714 |
Xu,Rui,Zhang,Dongxiao,Wang,Nanzhe. Uncertainty quantification and inverse modeling for subsurface flow in 3D heterogeneous formations using a theory-guided convolutional encoder-decoder network[J]. JOURNAL OF HYDROLOGY,2022,613.
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APA |
Xu,Rui,Zhang,Dongxiao,&Wang,Nanzhe.(2022).Uncertainty quantification and inverse modeling for subsurface flow in 3D heterogeneous formations using a theory-guided convolutional encoder-decoder network.JOURNAL OF HYDROLOGY,613.
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MLA |
Xu,Rui,et al."Uncertainty quantification and inverse modeling for subsurface flow in 3D heterogeneous formations using a theory-guided convolutional encoder-decoder network".JOURNAL OF HYDROLOGY 613(2022).
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条目包含的文件 | 条目无相关文件。 |
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