中文版 | English
Title

Surrogate and inverse modeling for two-phase flow in porous media via theory-guided convolutional neural network

Author
Corresponding AuthorChang,Haibin; Zhang,Dongxiao
Publication Years
2022-10-01
DOI
Source Title
ISSN
0021-9991
EISSN
1090-2716
Volume466
Abstract
The theory-guided convolutional neural network (TgCNN) framework, which can incorporate discretized governing equation residuals into the training of convolutional neural networks (CNNs), is extended to two-phase porous media flow problems in this work. The two principal variables of the considered problem, pressure and saturation, are approximated simultaneously with two CNNs, respectively. Pressure and saturation are coupled with each other in the governing equations, and thus the two networks are also mutually conditioned in the training process by the discretized governing equations, which also increases the difficulty of model training. The coupled and discretized equations can provide valuable information in the training process. With the assistance of theory-guidance, the TgCNN surrogates can achieve better accuracy than ordinary CNN surrogates in two-phase flow problems. Moreover, a piecewise training strategy is proposed for the scenario with varying well controls, in which the TgCNN surrogates are constructed for different segments on the time dimension and stacked together to predict solutions for the whole time-span. For scenarios with larger variance of the formation property field, the TgCNN surrogates can also achieve satisfactory performance. The constructed TgCNN surrogates are further used for inversion of permeability fields by combining them with the iterative ensemble smoother (IES) algorithm, and sufficient inversion accuracy is obtained with improved efficiency.
Keywords
URL[Source Record]
Indexed By
EI ; SCI
Language
English
SUSTech Authorship
Corresponding
Funding Project
Shenzhen Key Laboratory of Natural Gas Hydrates[ZDSYS20200421111201738]
WOS Research Area
Computer Science ; Physics
WOS Subject
Computer Science, Interdisciplinary Applications ; Physics, Mathematical
WOS Accession No
WOS:000885956800002
Publisher
EI Accession Number
20222812351914
EI Keywords
Convolution ; Convolutional neural networks ; Inverse problems ; Iterative methods ; Porous materials
ESI Classification Code
Fluid Flow, General:631.1 ; Information Theory and Signal Processing:716.1 ; Numerical Methods:921.6 ; Materials Science:951
ESI Research Field
PHYSICS
Scopus EID
2-s2.0-85133738819
Data Source
Scopus
Citation statistics
Cited Times [WOS]:6
Document TypeJournal Article
Identifierhttp://kc.sustech.edu.cn/handle/2SGJ60CL/355886
DepartmentNational Center for Applied Mathematics, SUSTech Shenzhen
Affiliation
1.BIC-ESAT,ERE,and SKLTCS,College of Engineering,Peking University,Beijing,100871,China
2.School of Energy and Mining Engineering,China University of Mining and Technology (Beijing),Beijing,100083,China
3.National Center for Applied Mathematics Shenzhen (NCAMS),Southern University of Science and Technology,Shenzhen,Guangdong,518055,China
4.Department of Mathematics and Theories,Peng Cheng Laboratory,Shenzhen,Guangdong,518000,China
Corresponding Author AffilicationNational Center for Applied Mathematics, SUSTech Shenzhen
Recommended Citation
GB/T 7714
Wang,Nanzhe,Chang,Haibin,Zhang,Dongxiao. Surrogate and inverse modeling for two-phase flow in porous media via theory-guided convolutional neural network[J]. JOURNAL OF COMPUTATIONAL PHYSICS,2022,466.
APA
Wang,Nanzhe,Chang,Haibin,&Zhang,Dongxiao.(2022).Surrogate and inverse modeling for two-phase flow in porous media via theory-guided convolutional neural network.JOURNAL OF COMPUTATIONAL PHYSICS,466.
MLA
Wang,Nanzhe,et al."Surrogate and inverse modeling for two-phase flow in porous media via theory-guided convolutional neural network".JOURNAL OF COMPUTATIONAL PHYSICS 466(2022).
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