Deep Potential Molecular Dynamics: a Scalable Model with the Accuracy of Quantum Mechanics

ORAL

Abstract

We introduce a new scheme for molecular simulations, the Deep Potential Molecular Dynamics (DeePMD) method, based on a many-body potential and interatomic forces generated by a carefully crafted deep neural network trained with ab initio data. The neural network model preserves all the natural symmetries in the problem. It is “first principle-based” in the sense that there are no ad hoc components aside from the network model. We show that the proposed scheme provides an efficient and accurate protocol in a variety of systems, including bulk materials and molecules. In all these cases, DeePMD gives results that are essentially indistinguishable from the original data, at a cost that scales linearly with system size.

Presenters

  • Linfeng Zhang

    Program in Applied and Computational Mathmatics, Princeton University

Authors

  • Linfeng Zhang

    Program in Applied and Computational Mathmatics, Princeton University

  • Jiequn Han

    Program in Applied and Computational Mathmatics, Princeton University

  • Han Wang

    Institute of Applied Physics and Computational Mathematics

  • Roberto Car

    Department of Chemistry, Princeton, Department of Chemistry, Princeton Univ, Department of Chemistry , Princeton University, Princeton University, Physics, Princeton University, Department of Chemistry, Princeton University

  • Weinan E

    Program in Applied and Computational Mathmatics, Princeton University