Modeling Excited-State Dynamics for Polariton Chemistry with Hierarchically Interacting Particle Neural Network

ORAL

Abstract

Chemical reactions inside an optical cavity happen intrinsically in the collective coupling regimes, where many molecules couple to the same cavity simultaneously. However, modeling such a complicated system with an assemble of molecules is computationally expensive. Recently, machine learning (ML) techniques, especially neural networks (NN), have been widely used to predict quantities, like energies and charges. As such, it is a natural choice to combine NN with polariton chemistry simulations. Unfortunately, even for a single molecule, predicting excited states quantities with NN remains a challenging task. In this talk, we present a general protocol to predict excited-state properties, such as energies, transition dipoles, and non-adiabatic coupling vectors (NACR) with the hierarchically interacting particle neural network (HIP-NN), and applying these predictions to excited-state polariton chemistry calculation in the collective coupling regime.

*Authors acknowledge support from the US DOE, Office of Science, Basic Energy Sciences, Chemical Sciences, Geosciences, and Biosciences Division under Triad National Security, LLC ("Triad") contract Grant 89233218CNA000001 (FWP: LANLE3F2).

Presenters

  • Xinyang Li

    • Los Alamos National Laboratory

Authors

  • Xinyang Li

    • Los Alamos National Laboratory
  • Yu Zhang

    • Los Alamos National Laboratory
    • Los Alamos National Lab
  • Sergei Tretiak

    • Los Alamos National Laboratory
    • Los Alamos National Lab
  • Kipton M Barros

    • Los Alamos Natl Lab
    • Theoretical Division and CNLS, Los Alamos National Laboratory
  • Nicholas E Lubbers

    • Los Alamos National Laboratory
  • Alice Allen

    • Los Alamos National Lab
  • Ben T Nebgen

    • Los Alamos Natl Lab
  • Sakib Matin

    • Boston University
    • Los Alamos National Laboratory