Stress and heat flux via automatic differentiation

05/02/2023
by   Marcel F. Langer, et al.
0

Machine-learning potentials provide computationally efficient and accurate approximations of the Born-Oppenheimer potential energy surface. This potential determines many materials properties and simulation techniques usually require its gradients, in particular forces and stress for molecular dynamics, and heat flux for thermal transport properties. Recently developed potentials feature high body order and can include equivariant semi-local interactions through message-passing mechanisms. Due to their complex functional forms, they rely on automatic differentiation (AD), overcoming the need for manual implementations or finite-difference schemes to evaluate gradients. This study demonstrates a unified AD approach to obtain forces, stress, and heat flux for such potentials, and provides a model-independent implementation. The method is tested on the Lennard-Jones potential, and then applied to predict cohesive properties and thermal conductivity of tin selenide using an equivariant message-passing neural network potential.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/25/2023

Heat flux for semi-local machine-learning potentials

The Green-Kubo (GK) method is a rigorous framework for heat transport si...
research
04/11/2022

Learning Local Equivariant Representations for Large-Scale Atomistic Dynamics

A simultaneously accurate and computationally efficient parametrization ...
research
06/10/2023

TensorNet: Cartesian Tensor Representations for Efficient Learning of Molecular Potentials

The development of efficient machine learning models for molecular syste...
research
02/12/2023

Data efficiency and extrapolation trends in neural network interatomic potentials

Over the last few years, key architectural advances have been proposed f...
research
03/08/2023

Ewald-based Long-Range Message Passing for Molecular Graphs

Neural architectures that learn potential energy surfaces from molecular...
research
05/13/2022

The Design Space of E(3)-Equivariant Atom-Centered Interatomic Potentials

The rapid progress of machine learning interatomic potentials over the p...

Please sign up or login with your details

Forgot password? Click here to reset