Automated generation of machine learning-based atomistic potentials for extreme conditions

ORAL

Abstract

Neural Network (NN) interatomic potentials are a powerful tool for atomistic scale simulations, combining the generality and accuracy of ab-initio methods with costs approaching those of classical potentials. A robust training dataset covering many atomic configurations must be computed with ab-initio methods to train an accurate NN potential. Recently, active learning (AL) algorithms have demonstrated the ability to generate training datasets quickly and efficiently by selecting atomic configurations for which a NN potential has high uncertainty. This facilitates the generation of training datasets through a minimum number of ab-initio calculations with little or no human intervention. A LAMMPS interface for our NN potential, named ANI, has facilitated large-scale GPU-accelerated MD simulations using domain decomposition. Utilizing this interface, we validate an autonomously generated ANI aluminum potential using both static and dynamic simulated properties, including a partial phase diagram. Additionally, we present million-atom shock simulations of aluminum to illustrate robustness and demonstrate extensibility to the prediction of high-pressure phases.

*We acknowledge resources provided by the NNSA ASC program, the LANL LDRD program, and LANL Institutional Computing.

Presenters

  • Ben Nebgen

    • Los Alamos Natl Lab

Authors

  • Ben Nebgen

    • Los Alamos Natl Lab
  • Justin Smith

    • Los Alamos Natl Lab
  • Nithin Mathew

    • Los Alamos National Laboratory
    • Los Alamos Natl Lab
  • Jie Chen

    • Los Alamos Natl Lab
  • Leonid Burakovsky

    • Los Alamos Natl Lab
  • Saryu Fensin

    • Los Alamos Natl Lab
    • Materials Science & Technology, Los Alamos National Laboratory
    • MST-8, Los Alamos National Laboratory
  • Kipton Barros

    • Los Alamos Natl Lab