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Nanzhe Wang
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Year
Deep learning of subsurface flow via theory-guided neural network
N Wang, D Zhang, H Chang, H Li
Journal of Hydrology 584, 124700, 2020
2322020
Theory-guided hard constraint projection (HCP): A knowledge-based data-driven scientific machine learning method
Y Chen, D Huang, D Zhang, J Zeng, N Wang, H Zhang, J Yan
Journal of Computational Physics 445, 110624, 2021
772021
Deep‐learning‐based inverse modeling approaches: A subsurface flow example
N Wang, H Chang, D Zhang
Journal of Geophysical Research: Solid Earth 126 (2), e2020JB020549, 2021
612021
Efficient uncertainty quantification for dynamic subsurface flow with surrogate by theory-guided neural network
N Wang, H Chang, D Zhang
Computer Methods in Applied Mechanics and Engineering 373, 113492, 2021
612021
Theory-guided auto-encoder for surrogate construction and inverse modeling
N Wang, H Chang, D Zhang
Computer Methods in Applied Mechanics and Engineering 385, 114037, 2021
522021
Weak form theory-guided neural network (TgNN-wf) for deep learning of subsurface single-and two-phase flow
R Xu, D Zhang, M Rong, N Wang
Journal of Computational Physics 436, 110318, 2021
492021
Efficient well placement optimization based on theory-guided convolutional neural network
N Wang, H Chang, D Zhang, L Xue, Y Chen
Journal of Petroleum Science and Engineering 208, 109545, 2022
322022
Efficient Uncertainty Quantification and Data Assimilation via Theory-Guided Convolutional Neural Network
N Wang, H Chang, D Zhang
SPE Journal, 1-29, 2021
292021
Deep-learning based discovery of partial differential equations in integral form from sparse and noisy data
H Xu, D Zhang, N Wang
Journal of Computational Physics 445, 110592, 2021
272021
Surrogate and inverse modeling for two-phase flow in porous media via theory-guided convolutional neural network
N Wang, H Chang, D Zhang
Journal of Computational Physics 466, 111419, 2022
262022
A Lagrangian dual-based theory-guided deep neural network
M Rong, D Zhang, N Wang
Complex & Intelligent Systems 8 (6), 4849-4862, 2022
182022
Deep learning of two-phase flow in porous media via theory-guided neural networks
J Li, D Zhang, N Wang, H Chang
SPE Journal 27 (02), 1176-1194, 2022
162022
Deep learning based closed-loop well control optimization of geothermal reservoir with uncertain permeability
N Wang, H Chang, XZ Kong, D Zhang
Renewable Energy 211, 379-394, 2023
15*2023
Theory-guided full convolutional neural network: An efficient surrogate model for inverse problems in subsurface contaminant transport
T He, N Wang, D Zhang
Advances in Water Resources 157, 104051, 2021
142021
Solution of diffusivity equations with local sources/sinks and surrogate modeling using weak form theory-guided neural network
R Xu, N Wang, D Zhang
Advances in water resources 153, 103941, 2021
102021
Uncertainty quantification and inverse modeling for subsurface flow in 3D heterogeneous formations using a theory-guided convolutional encoder-decoder network
R Xu, D Zhang, N Wang
Journal of Hydrology 613, 128321, 2022
82022
Deep-learning-based upscaling method for geologic models via theory-guided convolutional neural network
N Wang, Q Liao, H Chang, D Zhang
Computational Geosciences 27 (6), 913-938, 2023
42023
压实与嵌入作用下压裂裂缝导流能力模型建立与影响因素分析
陈冬, 王楠哲, 叶智慧, 张佳亮
石油钻探技术 46 (6), 82-89, 2018
42018
GANSim-surrogate: An integrated framework for stochastic conditional geomodelling
S Song, D Zhang, T Mukerji, N Wang
Journal of Hydrology 620, 129493, 2023
3*2023
Inverse modeling for subsurface flow based on deep learning surrogates and active learning strategies
N Wang, H Chang, D Zhang
Water Resources Research 59 (7), e2022WR033644, 2023
22023
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