Accurate interatomic force fields via machine learning with covariant kernels

Research output: Contribution to journalArticlepeer-review

171 Citations (Scopus)
252 Downloads (Pure)

Abstract

We present a novel scheme to accurately predict atomic forces as vector quantities, rather than sets of scalar components, by Gaussian process (GP) regression. This is based on matrix-valued kernel functions, on which we impose the requirements that the predicted force rotates with the target configuration and is independent of any rotations applied to the configuration database entries. We show that such covariant GP kernels can be obtained by integration over the elements of the rotation group SO(d) for the relevant dimensionality d. Remarkably, in specific cases the integration can be carried out analytically and yields a conservative force field that can be recast into a pair interaction form. Finally, we show that restricting the integration to a summation over the elements of a finite point group relevant to the target system is sufficient to recover an accurate GP. The accuracy of our kernels in predicting quantum-mechanical forces in real materials is investigated by tests on pure and defective Ni, Fe, and Si crystalline systems.
Original languageEnglish
Article number214302
JournalPhys. Rev. B
Volume95
Issue number21
Early online date8 Jun 2017
DOIs
Publication statusPublished - 8 Jun 2017

Fingerprint

Dive into the research topics of 'Accurate interatomic force fields via machine learning with covariant kernels'. Together they form a unique fingerprint.

Cite this