Chemical Physics · Physics
High-Dimensional Potential Energy Surfaces for Molecular Simulations
Oliver T. Unke, Debasish Koner, Sarbani Patra, Silvan Käser +1
2020-07-08
Chemical Physics · Physics
Force Training Neural Network Potential Energy Surface Models
Christian Devereux, Yoona Yang, Carles Martí, Judit Zádor +2
2023-11-15
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
Computational Physics · Physics
Deep Potential: a general representation of a many-body potential energy surface
Jiequn Han, Linfeng Zhang, Roberto Car, Weinan E
2020-07-20
Chemical Physics · Physics
High-Accuracy Molecular Simulations with Machine-Learning Potentials and Semiclassical Approximations to Quantum Dynamics
Valerii Andreichev, Jindra Dušek, Markus Meuwly, Jeremy O. Richardson
2026-02-24
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
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
Soft Condensed Matter · Physics
Comparing machine learning potentials for water: Kernel-based regression and Behler-Parrinello neural networks
Pablo Montero de Hijes, Christoph Dellago, Ryosuke Jinnouchi, Bernhard Schmiedmayer +1
2023-12-27
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
Chemical Physics · Physics
Cluster Models for Next-Generation, Machine-Learning-Based Energy Functions for Molecular Simulations
JingChun Wang, Meenu Upadhyay, Eric D. Boittier, Kham Lek Chaton +6
2025-09-16
Materials Science · Physics
Representations of Materials for Machine Learning
James Damewood, Jessica Karaguesian, Jaclyn R. Lunger, Aik Rui Tan +3
2023-01-24
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
Machine learning for molecular simulation
Frank Noé, Alexandre Tkatchenko, Klaus-Robert Müller, Cecilia Clementi
2019-11-11
Computational Physics · Physics
Providing Machine Learning Potentials with High Quality Uncertainty Estimates
Zeynep Sumer, James L. McDonagh, Clyde Fare, Ravikanth Tadikonda +3
2025-01-13