Követés
Shaoxing Mo
Shaoxing Mo
Assistant Professor, Nanjing University
E-mail megerősítve itt: nju.edu.cn
Cím
Hivatkozott rá
Hivatkozott rá
Év
Deep convolutional encoder‐decoder networks for uncertainty quantification of dynamic multiphase flow in heterogeneous media
S Mo, Y Zhu, N Zabaras, X Shi, J Wu
Water Resources Research 55 (1), 703-728, 2019
2742019
Deep autoregressive neural networks for high‐dimensional inverse problems in groundwater contaminant source identification
S Mo, N Zabaras, X Shi, J Wu
Water Resources Research 55 (5), 3856-3881, 2019
2022019
Integration of adversarial autoencoders with residual dense convolutional networks for estimation of non‐Gaussian hydraulic conductivities
S Mo, N Zabaras, X Shi, J Wu
Water Resources Research 56 (2), e2019WR026082, 2020
962020
Bayesian convolutional neural networks for predicting the terrestrial water storage anomalies during GRACE and GRACE-FO gap
S Mo, Y Zhong, E Forootan, N Mehrnegar, X Yin, J Wu, W Feng, X Shi
Journal of Hydrology 604, 127244, 2022
58*2022
A Taylor expansion‐based adaptive design strategy for global surrogate modeling with applications in groundwater modeling
S Mo, D Lu, X Shi, G Zhang, M Ye, J Wu, J Wu
Water Resources Research 53 (12), 10802-10823, 2017
512017
Hydrogeophysical Characterization of Nonstationary DNAPL Source Zones by Integrating a Convolutional Variational Autoencoder and Ensemble Smoother
X Kang, A Kokkinaki, PK Kitanidis, X Shi, J Lee, S Mo, J Wu
Water Resources Research 57 (2), e2020WR028538, 2021
302021
An adaptive Kriging surrogate method for efficient uncertainty quantification with an application to geological carbon sequestration modeling
S Mo, X Shi, D Lu, M Ye, J Wu
Computers & Geosciences 125, 69-77, 2019
292019
Hydrological Droughts of 2017–2018 Explained by the Bayesian Reconstruction of GRACE (‐FO) Fields
S Mo, Y Zhong, E Forootan, X Shi, W Feng, X Yin, J Wu
Water Resources Research 58 (9), e2022WR031997, 2022
112022
Deep learning based optimization under uncertainty for surfactant-enhanced DNAPL remediation in highly heterogeneous aquifers
J Du, X Shi, S Mo, X Kang, J Wu
Journal of Hydrology 608, 127639, 2022
82022
Water storage changes (2003–2020) in the Ordos Basin, China, explained by GRACE data and interpretable deep learning
Z Hu, S Tang, S Mo, X Shi, X Yin, Y Sun, X Liu, L Duan, P Miao, T Liu, ...
Hydrogeology Journal 32 (1), 307-320, 2024
12024
Uncertainty quantification of CO2 plume migration in highly channelized aquifers using probabilistic convolutional neural networks
L Feng, S Mo, AY Sun, J Wu, X Shi
Advances in Water Resources 183, 104607, 2024
2024
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Cikkek 1–11