| 题名 | Theory-guided full convolutional neural network: An efficient surrogate model for inverse problems in subsurface contaminant transport |
| 作者 | |
| 通讯作者 | Zhang,Dongxiao |
| 发表日期 | 2021-11-01
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| DOI | |
| 发表期刊 | |
| ISSN | 0309-1708
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| 卷号 | 157 |
| 摘要 | Identification of the location and strength of a contaminant source in an aquifer is a challenging but crucial task. Efficient surrogate models can be constructed to replace traditional time-consuming simulators while solving this inverse problem. In recent years, with the rapid development of machine learning (ML) algorithms, the artificial neural network (ANN) has been proven to be an efficient way for surrogate modeling. However, it may be difficult for ANN-based algorithms to learn the convection-dispersion equation and predict the contaminant concentration field due to their point-to-point learning scheme. Because of their strong localized features, the concentration fields can be seen as images. In contrast, the convolutional neural network (CNN) can extract spatial information better due to its convolutional structure. Herein, a theory-guided full convolutional neural network (TgFCNN) model is proposed to solve inverse problems in subsurface contaminant transport. TgFCNN can construct robust and reliable surrogate models with limited training realizations, and be further utilized for inverse modeling tasks. The loss function of TgFCNN comprises the residual of governing equations of contaminant transport, as well as data mismatch. Moreover, the iterative ensemble smoother (IES) method is employed to update the parameters while solving the inverse problems. The proposed TgFCNN model is evaluated in four scenarios. The results demonstrate that the TgFCNN model possesses strong generalization and extrapolation abilities, and satisfactory accuracy when estimating unknown contaminant source parameters, as well as the permeability field. The time consumption of the TgFCNN surrogate model for inverse tasks is also greatly reduced compared to using traditional simulators directly. |
| 相关链接 | [Scopus记录] |
| 收录类别 | |
| 语种 | 英语
|
| 学校署名 | 通讯
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| WOS记录号 | WOS:000706998300003
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| EI入藏号 | 20214110997767
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| EI主题词 | Aquifers
; Contamination
; Differential equations
; Groundwater pollution
; Inverse problems
; Iterative methods
; Learning algorithms
; Machine learning
|
| EI分类号 | Groundwater:444.2
; Water Pollution Sources:453.1
; Information Theory and Signal Processing:716.1
; Machine Learning:723.4.2
; Calculus:921.2
; Numerical Methods:921.6
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| ESI学科分类 | ENGINEERING
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| Scopus记录号 | 2-s2.0-85116549417
|
| 来源库 | Scopus
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| 引用统计 |
被引频次[WOS]:16
|
| 成果类型 | 期刊论文 |
| 条目标识符 | http://kc.sustech.edu.cn/handle/2SGJ60CL/253981 |
| 专题 | 工学院_环境科学与工程学院 工学院 |
| 作者单位 | 1.College of Engineering,Peking University,Beijing,100871,China 2.School of Environmental Science and Engineering,Southern University of Science and Technology,Shenzhen,518055,China 3.Intelligent Energy Laboratory,Peng Cheng Laboratory,Shenzhen,518000,China |
| 通讯作者单位 | 环境科学与工程学院 |
| 推荐引用方式 GB/T 7714 |
He,Tianhao,Wang,Nanzhe,Zhang,Dongxiao. Theory-guided full convolutional neural network: An efficient surrogate model for inverse problems in subsurface contaminant transport[J]. ADVANCES IN WATER RESOURCES,2021,157.
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| APA |
He,Tianhao,Wang,Nanzhe,&Zhang,Dongxiao.(2021).Theory-guided full convolutional neural network: An efficient surrogate model for inverse problems in subsurface contaminant transport.ADVANCES IN WATER RESOURCES,157.
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| MLA |
He,Tianhao,et al."Theory-guided full convolutional neural network: An efficient surrogate model for inverse problems in subsurface contaminant transport".ADVANCES IN WATER RESOURCES 157(2021).
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| 条目包含的文件 | 条目无相关文件。 | |||||
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