Follow
Shaoxing Mo
Shaoxing Mo
Assistant Professor, Nanjing University
Verified email at nju.edu.cn
Title
Cited by
Cited by
Year
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
2732019
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
2012019
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
952020
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
57*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
The system can't perform the operation now. Try again later.
Articles 1–11