DeePKS + ABACUS as a Bridge between Expensive Quantum Mechanical Models and Machine Learning Potentials.

Journal: The journal of physical chemistry. A
Published Date:

Abstract

Recently, the development of machine learning (ML) potentials has made it possible to perform large-scale and long-time molecular simulations with the accuracy of quantum mechanical (QM) models. However, for different levels of QM methods, such as density functional theory (DFT) at the meta-GGA level and/or with exact exchange, quantum Monte Carlo, etc., generating a sufficient amount of data for training an ML potential has remained computationally challenging due to their high cost. In this work, we demonstrate that this issue can be largely alleviated with Deep Kohn-Sham (DeePKS), an ML-based DFT model. DeePKS employs a computationally efficient neural network-based functional model to construct a correction term added upon a cheap DFT model. Upon training, DeePKS offers closely matched energies and forces compared with high-level QM method, but the number of training data required is orders of magnitude less than that required for training a reliable ML potential. As such, DeePKS can serve as a bridge between expensive QM models and ML potentials: one can generate a decent amount of high-accuracy QM data to train a DeePKS model and then use the DeePKS model to label a much larger amount of configurations to train an ML potential. This scheme for periodic systems is implemented in a DFT package ABACUS, which is open source and ready for use in various applications.

Authors

  • Wenfei Li
    National Laboratory of Solid State Microstructures, School of Physics, Collaborative Innovation Center of Advanced Microstructures, Nanjing University, Nanjing, China.
  • Qi Ou
    AI for Science Institute, Beijing100080, P. R. China.
  • Yixiao Chen
    Program in Applied and Computational Mathematics, Princeton University, Princeton, New Jersey 08544, United States.
  • Yu Cao
    Department of Neurosurgery, FuShun County Zigong City People's Hospital, Fushun, China.
  • Renxi Liu
    HEDPS, CAPT, College of Engineering and School of Physics, Peking University, Beijing100871, P. R. China.
  • Chunyi Zhang
    Department of Physics, Temple University, Philadelphia, Pennsylvania19122, United States.
  • Daye Zheng
    AI for Science Institute, Beijing100080, P. R. China.
  • Chun Cai
    Guangdong Provincial Engineering Research Center of Intelligent Low-carbon Pollution Prevention and Digital Technology & Guangdong Provincial Key Laboratory of Chemical Pollution and Environmental Safety & MOE Key Laboratory of Theoretical Chemistry of Environment, School of Environment, South China Normal University, Guangzhou 510006, P. R. China.
  • Xifan Wu
    Department of Physics, Temple University, Philadelphia, Pennsylvania19122, United States.
  • Han Wang
    Saw Swee Hock School of Public Health, National University Health System, National University of Singapore, Singapore.
  • Mohan Chen
    National Laboratory of Radar Signal Processing, Xidian University, Xi’an 710071, China.
  • Linfeng Zhang
    Department of Mathematics and Program in Applied and Computational Mathematics, Princeton University, Princeton, NJ 08544, USA.