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Shih-Han Wang
Shih-Han Wang
Virginia Tech Department of Chemical Engineering
Verified email at vt.edu
Title
Cited by
Cited by
Year
Infusing theory into deep learning for interpretable reactivity prediction
SH Wang, HS Pillai, S Wang, LEK Achenie, H Xin
Nature communications 12 (1), 5288, 2021
732021
Interpretable machine learning of chemical bonding at solid surfaces
N Omidvar, HS Pillai, SH Wang, T Mou, S Wang, A Athawale, ...
The Journal of Physical Chemistry Letters 12 (46), 11476-11487, 2021
332021
Interpretable design of Ir-free trimetallic electrocatalysts for ammonia oxidation with graph neural networks
HS Pillai, Y Li, SH Wang, N Omidvar, Q Mu, LEK Achenie, ...
Nature communications 14 (1), 792, 2023
242023
Large scale benchmark of materials design methods
K Choudhary, D Wines, K Li, KF Garrity, V Gupta, AH Romero, JT Krogel, ...
arXiv preprint arXiv:2306.11688, 2023
122023
Analysis of a looped high pressure steam pipeline network in a large-scale refinery
SH Wang, WJ Wang, CY Chang, CL Chen
Industrial & Engineering Chemistry Research 54 (37), 9222-9229, 2015
52015
Transient response analysis of high pressure steam distribution networks in a refinery
CY Chang, SH Wang, YC Huang, CL Chen
2017 6th International Symposium on Advanced Control of Industrial Processes …, 2017
42017
Interpretable Machine Learning for Catalytic Materials Design toward Sustainability
H Xin, T Mou, HS Pillai, SH Wang, Y Huang
Accounts of Materials Research 5 (1), 22-34, 2023
22023
Infusing theory into machine learning for interpretable reactivity prediction
SH Wang, H Somarajan Pillai, S Wang, LEK Achenie, H Xin
arXiv e-prints, arXiv: 2103.15210, 2021
22021
Explainable AI for optimizing oxygen reduction on Pt monolayer core–shell catalysts
N Omidvar, SH Wang, Y Huang, HS Pillai, A Athawale, S Wang, ...
Electrochemical Science Advances, e202300028, 2024
2024
Interpretable Design of Multimetallic Catalysts for Ammonia Electrooxidation with Deep Learning
SH Wang, H Pillai, Y Li, L Achenie, G Wu, H Xin
2023 AIChE Annual Meeting, 2023
2023
Theory-Infused Neural Network for Interpretable Reactivity Prediction
SH Wang, H Pillai, S Wang, LEK Achenie, H Xin
2022 AIChE Annual Meeting, 2022
2022
Discovery of Pt Trimetallic Electrocatalysts for Ammonia Oxidation with Interpretable Deep Learning
H Pillai, Y Li, SH Wang, Q Mu, C Pokrywka, LEK Achenie, ...
2022 AIChE Annual Meeting, 2022
2022
Infusing Theory into Deep Learning for Interpretable Stability Prediction of Transition Metal Alloys
Y Huang, SH Wang, H Xin
2022 AIChE Annual Meeting, 2022
2022
Accelerating Catalytic Materials Discovery for Ammonia Electrooxidation Via Interpretable Deep Learning
HS Pillai, Y Li, SH Wang, Q Mu, LEK Achenie, G Wu, H Xin
The 27th North American Catalysis Society Meeting, 2022
2022
Accelerating Ammonia Electrooxidation Catalyst Discovery through Interpretable Machine Learning
H Pillai, SH Wang, LEK Achenie, H Xin
2021 AIChE Annual Meeting, 2021
2021
Physics Informed Machine Learning of Chemisorption at Metal Surfaces
SH Wang, S Wang, N Omidvar, L Achenie, H Xin
2020 Virtual AIChE Annual Meeting, 2020
2020
Development of Physics-Informed Neural Network Potentials for Molecular Simulations
SH Wang, H Xin, L Achenie
2019 AIChE Annual Meeting, 2019
2019
A Control Strategy for Thermostating and Barostating Molecular Dynamics Simulations
SH Wang, Achenie, L. E. K.
2019 AIChE Annual Meeting, 2019
2019
PID Control Strategy for Thermostating and Barostating Molecular Dynamics Simulation
SH Wang, L Achenie
2018 AIChE Annual Meeting, 2018
2018
Analysis of a Looped Steam Pipe Network
SH Wang, WJ Wang, CL Chen
Chemical Engineering Transactions 45, 511-516, 2015
2015
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