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Ultra-fast interpretable machine-learning potentials

Materials Science

Ultra-fast interpretable machine-learning potentials

S. R. Xie, M. Rupp, et al.

Discover the groundbreaking research by Stephen R. Xie, Matthias Rupp, and Richard G. Hennig, introducing ultra-fast machine-learning potentials that drastically enhance the efficiency and accuracy of all-atom dynamics simulations, making them viable for large systems and long time scales.... show more
Abstract
All-atom dynamics simulations are an indispensable quantitative tool in physics, chemistry, and materials science, but large systems and long simulation times remain challenging due to the trade-off between computational efficiency and predictive accuracy. To address this challenge, we combine effective two- and three-body potentials in a cubic B-spline basis with regularized linear regression to obtain machine-learning potentials that are physically interpretable, sufficiently accurate for applications, as fast as the fastest traditional empirical potentials, and two to four orders of magnitude faster than state-of-the-art machine-learning potentials. For data from empirical potentials, we demonstrate the exact retrieval of the potential. For data from density functional theory, the predicted energies, forces, and derived properties, including phonon spectra, elastic constants, and melting points, closely match those of the reference method. The introduced potentials might contribute towards accurate all-atom dynamics simulations of large atomistic systems over long-time scales.
Publisher
npj Computational Materials
Published On
Sep 02, 2023
Authors
Stephen R. Xie, Matthias Rupp, Richard G. Hennig
Tags
machine-learning potentials
all-atom dynamics
computational efficiency
long simulations
interatomic potentials
material science
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