Computational Physics · Physics
DP-GEN: A concurrent learning platform for the generation of reliable deep learning based potential energy models
Yuzhi Zhang, Haidi Wang, Weijie Chen, Jinzhe Zeng +3
2020-06-23
Materials Science · Physics
Accurate Deep Potential model for the Al-Cu-Mg alloy in the full concentration space
Wanrun Jiang, Yuzhi Zhang, Linfeng Zhang, Han Wang
2021-07-07
Computational Physics · Physics
DP Compress: a Model Compression Scheme for Generating Efficient Deep Potential Models
Denghui Lu, Wanrun Jiang, Yixiao Chen, Linfeng Zhang +3
2022-08-08
Chemical Physics · Physics
Design, Assessment, and Application of Machine Learning Potential Energy Surfaces
Valerii Andreichev, Sena Aydin, Kai Töpfer, Markus Meuwly +1
2025-11-04
Chemical Physics · Physics
DPA-1: Pretraining of Attention-based Deep Potential Model for Molecular Simulation
Duo Zhang, Hangrui Bi, Fu-Zhi Dai, Wanrun Jiang +2
2023-09-18
Chemical Physics · Physics
Active learning of potential-energy surfaces of weakly-bound complexes with regression-tree ensembles
Yahya Saleh, Vishnu Sanjay, Armin Iske, Andrey Yachmenev +1
2021-10-27
Materials Science · Physics
Deep Potentials for Materials Science
Tongqi Wen, Linfeng Zhang, Han Wang, Weinan E +1
2024-03-28
Chemical Physics · Physics
Exploring accurate potential energy surfaces via integrating variational quantum eigensovler with machine learning
Yanxian Tao, Xiongzhi Zeng, Yi Fan, Jie Liu +2
2022-06-09
Materials Science · Physics
Generator of Neural Network Potential for Molecular Dynamics: Constructing Robust and Accurate Potentials with Active Learning for Nanosecond-scale Simulations
Naoki Matsumura, Yuta Yoshimoto, Tamio Yamazaki, Tomohito Amano +4
2025-05-29
Computational Physics · Physics
Deep Potential generation scheme and simulation protocol for the Li10GeP2S12-type superionic conductors
Jianxing Huang, Linfeng Zhang, Han Wang, Jinbao Zhao +2
2021-03-17
Chemical Physics · Physics
Fidelity of Machine Learned Potentials: Quantitative Assessment for Protonated Oxalate
Chen Qu, Paul L. Houston, Qi Yu, Apurba Nandi +4
2026-04-21
Chemical Physics · Physics
Beyond potential energy surface benchmarking: a complete application of machine learning to chemical reactivity
Xingyi Guan, Joseph Heindel, Taehee Ko, Chao Yang +1
2023-06-16
Chemical Physics · Physics
Neural Network Potentials for Chemistry: Concepts, Applications and Prospects
Silvan Käser, Luis Itza Vazquez-Salazar, Markus Meuwly, Kai Töpfer
2022-12-23
Materials Science · Physics
A Sampling Strategy in Efficient Potential Energy Surface Mapping for Predicting Atomic Diffusivity in Crystals by Machine Learning
Kazuaki Toyoura, Takeo Fujii, Kenta Kanamori, Ichiro Takeuchi
2020-06-24
Materials Science · Physics
Strategies for the Construction of Machine-Learning Potentials for Accurate and Efficient Atomic-Scale Simulations
April M. Miksch, Tobias Morawietz, Johannes Kästner, Alexander Urban +1
2021-05-06
Chemical Physics · Physics
Explicit Electric Potential-Embedded Machine Learning Framework: A Unified Description from Atomic to Electronic Scales
Jingwen Zhou, Yawen Yu, Xuwei Liu, Chungen Liu
2026-04-14
Computational Physics · Physics
End-to-end Symmetry Preserving Inter-atomic Potential Energy Model for Finite and Extended Systems
Linfeng Zhang, Jiequn Han, Han Wang, Wissam A. Saidi +2
2020-07-21
Chemical Physics · Physics
A universal machine learning model for the electronic density of states
Wei Bin How, Pol Febrer, Sanggyu Chong, Arslan Mazitov +4
2026-01-09
Chemical Physics · Physics
Tell machine learning potentials what they are needed for: Simulation-oriented training exemplified for glycine
Fuchun Ge, Ran Wang, Chen Qu, Peikun Zheng +5
2024-04-18
Materials Science · Physics
An Active Learning Interatomic Potential For Defect-Engineered CoCrFeMnNi High-Entropy Alloy
Manish Sahoo, Akash Deshmukh, Yash Kokane, Jayaprakash H M +1
2025-11-18