Exciting DeePMD: Learning excited-state energies, forces, and non-adiabatic couplings.

J Chem Phys

Department of Physics, Rutgers University, Newark, New Jersey 07102, USA.

Published: October 2024

We extend the DeePMD neural network architecture to predict electronic structure properties necessary to perform non-adiabatic dynamics simulations. While learning the excited state energies and forces follows a straightforward extension of the DeePMD approach for ground-state energies and forces, how to learn the map between the non-adiabatic coupling vectors (NACV) and the local chemical environment descriptors of DeePMD is less trivial. Most implementations of machine-learning-based non-adiabatic dynamics inherently approximate the NACVs, with an underlying assumption that the energy-difference-scaled NACVs are conservative fields. We overcome this approximation, implementing the method recently introduced by Richardson [J. Chem. Phys. 158, 011102 (2023)], which learns the symmetric dyad of the energy-difference-scaled NACV. The efficiency and accuracy of our neural network architecture are demonstrated through the example of the methaniminium cation CH2NH2+.

Download full-text PDF

Source
http://dx.doi.org/10.1063/5.0227523DOI Listing

Publication Analysis

Top Keywords

energies forces
12
neural network
8
network architecture
8
non-adiabatic dynamics
8
exciting deepmd
4
deepmd learning
4
learning excited-state
4
excited-state energies
4
non-adiabatic
4
forces non-adiabatic
4

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!