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DOI10.1029/2019WR026731
Physics-Informed Deep Neural Networks for Learning Parameters and Constitutive Relationships in Subsurface Flow Problems
Tartakovsky, A. M.1; Marrero, C. Ortiz1; Perdikaris, Paris2; Tartakovsky, G. D.1; Barajas-Solano, D.1
2020-05-01
发表期刊WATER RESOURCES RESEARCH
ISSN0043-1397
EISSN1944-7973
出版年2020
卷号56期号:5
文章类型Article
语种英语
国家USA
英文摘要

We present a physics-informed deep neural network (DNN) method for estimating hydraulic conductivity in saturated and unsaturated flows governed by Darcy's law. For saturated flow, we approximate hydraulic conductivity and head with two DNNs and use Darcy's law in addition to measurements of hydraulic conductivity and head to train these DNNs. For unsaturated flow, we approximate unsaturated conductivity function and capillary pressure with DNNs and train these DNNs using measurements of capillary pressure and the Richards equation. Because it is difficult to measure unsaturated conductivity in the field, we assume that no measurements of unsaturated conductivity are available. The proposed approach enforces the partial differential equation (PDE) (Darcy or Richards equation) constraints by minimizing the PDE residual at select points in the simulation domain. We demonstrate that physics constraints increase the accuracy of DNN approximations of sparsely observed functions and allow for training DNNs when no direct measurements of the functions of interest are available. For the saturated conductivity estimation problem, we show that the physics-informed DNN method is more accurate than the state-of-the-art maximum a posteriori probability method. For the unsaturated flow in homogeneous porous media, we find that the proposed method can accurately estimate the pressure-conductivity relationship based on the capillary pressure measurements only, even in the presence of measurement noise.


英文关键词deep neural networks physics-informed machine learning parameter estimation learning constitutive relationships unsaturated flow MAP
领域资源环境
收录类别SCI-E
WOS记录号WOS:000537736400036
WOS关键词ENCODER-DECODER NETWORKS ; UNCERTAINTY QUANTIFICATION ; INVERSE PROBLEMS ; SYSTEMS
WOS类目Environmental Sciences ; Limnology ; Water Resources
WOS研究方向Environmental Sciences & Ecology ; Marine & Freshwater Biology ; Water Resources
引用统计
文献类型期刊论文
条目标识符http://119.78.100.173/C666/handle/2XK7JSWQ/280662
专题资源环境科学
作者单位1.Pacific Northwest Natl Lab, Richland, WA 99352 USA;
2.Univ Penn, Mech Engn & Appl Mech, Philadelphia, PA 19104 USA
推荐引用方式
GB/T 7714
Tartakovsky, A. M.,Marrero, C. Ortiz,Perdikaris, Paris,et al. Physics-Informed Deep Neural Networks for Learning Parameters and Constitutive Relationships in Subsurface Flow Problems[J]. WATER RESOURCES RESEARCH,2020,56(5).
APA Tartakovsky, A. M.,Marrero, C. Ortiz,Perdikaris, Paris,Tartakovsky, G. D.,&Barajas-Solano, D..(2020).Physics-Informed Deep Neural Networks for Learning Parameters and Constitutive Relationships in Subsurface Flow Problems.WATER RESOURCES RESEARCH,56(5).
MLA Tartakovsky, A. M.,et al."Physics-Informed Deep Neural Networks for Learning Parameters and Constitutive Relationships in Subsurface Flow Problems".WATER RESOURCES RESEARCH 56.5(2020).
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