Neural network representation of electronic structure from ab initio molecular dynamics

Sci Bull (Beijing). 2022 Jan;67(1):29-37. doi: 10.1016/j.scib.2021.09.010. Epub 2021 Sep 17.

Abstract

Despite their rich information content, electronic structure data amassed at high volumes in ab initio molecular dynamics simulations are generally under-utilized. We introduce a transferable high-fidelity neural network representation of such data in the form of tight-binding Hamiltonians for crystalline materials. This predictive representation of ab initio electronic structure, combined with machine-learning boosted molecular dynamics, enables efficient and accurate electronic evolution and sampling. When it is applied to a one-dimension charge-density wave material, carbyne, we are able to compute the spectral function and optical conductivity in the canonical ensemble. The spectral functions evaluated during soliton-antisoliton pair annihilation process reveal significant renormalization of low-energy edge modes due to retarded electron-lattice coupling beyond the Born-Oppenheimer limit. The availability of an efficient and reusable surrogate model for the electronic structure dynamical system will enable calculating many interesting physical properties, paving the way to previously inaccessible or challenging avenues in materials modeling.

Keywords: Electronic structure; Neural network; Tight-binding model; ab initio molecular dynamics.

MeSH terms

  • Electronics
  • Electrons
  • Molecular Dynamics Simulation*
  • Neural Networks, Computer
  • Quantum Theory*