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Zhenze Yang
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Year
Artificial intelligence and machine learning in design of mechanical materials
K Guo, Z Yang, CH Yu, MJ Buehler
Materials Horizons 8 (4), 1153-1172, 2021
3182021
Deep learning model to predict complex stress and strain fields in hierarchical composites
Z Yang, CH Yu, MJ Buehler
Science Advances 7 (15), eabd7416, 2021
1902021
Metallic Bond-Enabled Wetting Behavior at the Liquid Ga/CuGa2 Interfaces
Y Cui, F Liang, Z Yang, S Xu, X Zhao, Y Ding, Z Lin, J Liu
ACS applied materials & interfaces 10 (11), 9203-9210, 2018
1122018
End-to-end deep learning method to predict complete strain and stress tensors for complex hierarchical composite microstructures
Z Yang, CH Yu, K Guo, MJ Buehler
Journal of the Mechanics and Physics of Solids 154, 104506, 2021
842021
Liquid metal corrosion effects on conventional metallic alloys exposed to eutectic gallium–indium alloy under various temperature states
Y Cui, Y Ding, S Xu, Z Yang, P Zhang, W Rao, J Liu
International Journal of Thermophysics 39, 1-14, 2018
422018
Generative design, manufacturing, and molecular modeling of 3D architected materials based on natural language input
YC Hsu, Z Yang, MJ Buehler
APL Materials 10 (4), 2022
342022
Hierarchical multiresolution design of bioinspired structural composites using progressive reinforcement learning
CH Yu, BY Tseng, Z Yang, CC Tung, E Zhao, ZF Ren, SS Yu, PY Chen, ...
Advanced Theory and Simulations 5 (11), 2200459, 2022
262022
Words to Matter: De novo Architected Materials Design Using Transformer Neural Networks
Z Yang, MJ Buehler
Frontiers in Materials 8, 740754, 2021
252021
Generative multiscale analysis of de novo proteome-inspired molecular structures and nanomechanical optimization using a VoxelPerceiver transformer model
Z Yang, YC Hsu, MJ Buehler
Journal of the Mechanics and Physics of Solids 170, 105098, 2023
212023
Linking atomic structural defects to mesoscale properties in crystalline solids using graph neural networks
Z Yang, MJ Buehler
Npj Computational Materials 8 (1), 198, 2022
192022
Screening and understanding Li adsorption on two-dimensional metallic materials by learning physics and physics-simplified learning
S Gong, S Wang, T Zhu, X Chen, Z Yang, MJ Buehler, Y Shao-Horn, ...
JACS Au 1 (11), 1904-1914, 2021
192021
Rapid mechanical property prediction and de novo design of three-dimensional spider webs through graph and GraphPerceiver neural networks
W Lu, Z Yang, MJ Buehler
Journal of Applied Physics 132 (7), 2022
152022
High‐Throughput Generation of 3D Graphene Metamaterials and Property Quantification Using Machine Learning
Z Yang, MJ Buehler
Small Methods 6 (9), 2200537, 2022
132022
Fill in the blank: transferrable deep learning approaches to recover missing physical field information
Z Yang, MJ Buehler
Advanced Materials 35 (23), 2301449, 2023
122023
Fracture at the two-dimensional limit
B Ni, D Steinbach, Z Yang, A Lew, B Zhang, Q Fang, MJ Buehler, J Lou
Mrs Bulletin 47 (8), 848-862, 2022
72022
De novo design of polymer electrolytes with high conductivity using gpt-based and diffusion-based generative models
Z Yang, W Ye, X Lei, D Schweigert, HK Kwon, A Khajeh
arXiv preprint arXiv:2312.06470, 2023
32023
A self-improvable Polymer Discovery Framework Based on Conditional Generative Model
X Lei, W Ye, Z Yang, D Schweigert, HK Kwon, A Khajeh
arXiv preprint arXiv:2312.04013, 2023
22023
Learning from Nature to Achieve Material Sustainability: Generative AI for Rigorous Bio-inspired Materials Design
RK Luu, S Arevalo, W Lu, B Ni, Z Yang, SC Shen, J Berkovich, YC Hsu, ...
An MIT Exploration of Generative AI, 2024
12024
Water contact angles on charged surfaces in aerosols
YT Shen, T Lin, ZZ Yang, YF Huang, JY Xu, S Meng
Chinese Physics B 31 (5), 056801, 2022
12022
End-to-End Deep Learning Approach to Predict Complex Stress and Strain Fields Directly from Microstructural Images
MJ Buehler, CH Yu, Z Yang
US Patent App. 17/646,505, 2022
2022
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