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GPUMD: A package for constructing accurate machine-learned potentials and performing highly efficient atomistic simulations.

Authors :
Fan, Zheyong
Wang, Yanzhou
Ying, Penghua
Song, Keke
Wang, Junjie
Wang, Yong
Zeng, Zezhu
Xu, Ke
Lindgren, Eric
Rahm, J. Magnus
Gabourie, Alexander J.
Liu, Jiahui
Dong, Haikuan
Wu, Jianyang
Chen, Yue
Zhong, Zheng
Sun, Jian
Erhart, Paul
Su, Yanjing
Ala-Nissila, Tapio
Source :
Journal of Chemical Physics. 9/21/2022, Vol. 157 Issue 11, p1-26. 26p.
Publication Year :
2022

Abstract

We present our latest advancements of machine-learned potentials (MLPs) based on the neuroevolution potential (NEP) framework introduced in Fan et al. [Phys. Rev. B 104, 104309 (2021)] and their implementation in the open-source package gpumd. We increase the accuracy of NEP models both by improving the radial functions in the atomic-environment descriptor using a linear combination of Chebyshev basis functions and by extending the angular descriptor with some four-body and five-body contributions as in the atomic cluster expansion approach. We also detail our efficient implementation of the NEP approach in graphics processing units as well as our workflow for the construction of NEP models and demonstrate their application in large-scale atomistic simulations. By comparing to state-of-the-art MLPs, we show that the NEP approach not only achieves above-average accuracy but also is far more computationally efficient. These results demonstrate that the gpumd package is a promising tool for solving challenging problems requiring highly accurate, large-scale atomistic simulations. To enable the construction of MLPs using a minimal training set, we propose an active-learning scheme based on the latent space of a pre-trained NEP model. Finally, we introduce three separate Python packages, viz., gpyumd, calorine, and pynep, that enable the integration of gpumd into Python workflows. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00219606
Volume :
157
Issue :
11
Database :
Academic Search Index
Journal :
Journal of Chemical Physics
Publication Type :
Academic Journal
Accession number :
159237902
Full Text :
https://doi.org/10.1063/5.0106617