Stress and heat flux via automatic differentiation

Marcel F. Langer, J. Frank, Florian Knoop
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引用次数: 1

Abstract

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 discusses how to use AD to efficiently 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.
应力和热通量通过自动分化
机器学习势能提供了Born-Oppenheimer势能面计算效率和精确的近似值。这种势决定了许多材料的性质,模拟技术通常需要它的梯度,特别是分子动力学的力和应力,以及热传输性质的热通量。最近发展的势具有高体序,可以包括通过消息传递机制的等变半局部相互作用。由于其复杂的功能形式,它们依赖于自动微分(AD),克服了手动实现或有限差分方案来评估梯度的需要。本研究讨论了如何使用AD有效地获得这些势的力、应力和热通量,并提供了一个独立于模型的实现。在Lennard-Jones电位上对该方法进行了测试,然后利用等变信息传递神经网络电位预测了硒化锡的内聚性和导热性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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