Molecular dynamics simulation with finite electric fields using Perturbed Neural Network Potentials
Kit Joll, Philipp Schienbein, Kevin M. Rosso, Jochen Blumberger

TL;DR
This paper introduces PNNP MD, a neural network-based molecular dynamics method that efficiently simulates systems under electric fields with high accuracy, enabling atomistic insights into field-dependent phenomena.
Contribution
The paper presents a novel neural network approach that combines unperturbed potentials with a perturbation trained on zero-field data to simulate electric field effects efficiently.
Findings
Accurately reproduces dielectric relaxation and IR spectra of water under high fields.
Demonstrates neural networks can extrapolate field responses beyond training data.
Achieves high accuracy comparable to ab-initio methods at reduced computational cost.
Abstract
The interaction of condensed phase systems with external electric fields is crucial in myriad processes in nature and technology ranging from the field-directed motion of cells (galvanotaxis), to energy storage and conversion systems including supercapacitors, batteries and solar cells. Molecular simulation in the presence of electric fields would give important atomistic insight into these processes but applications of the most accurate methods such as ab-initio molecular dynamics are limited in scope by their computational expense. Here we introduce Perturbed Neural Network Potential Molecular Dynamics (PNNP MD) to push back the accessible time and length scales of such simulations at virtually no loss in accuracy. The total forces on the atoms are expressed in terms of the unperturbed potential energy surface represented by a standard neural network potential and a field-induced…
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Taxonomy
TopicsNeural Networks and Applications · Machine Learning in Materials Science
