Neural Network-Based Simulation Method to Examine Ion Behaviors under Electric Fields: Application to Ion Migration in Amorphous Li<sub>3</sub>PO<sub>4</sub>

Q4 Materials Science
Koji SHIMIZU, Ryuji OTSUKA, Satoshi WATANABE
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Abstract

We developed a neural network-based model to predict the Born effective charges from atomic structures. By combining forces due to an applied electric field, expressed as a product of the Born effective charge and the electric field, and forces evaluated by a neural network potential (NNP), a simulation scheme of ion dynamics under an electric field was proposed. Taking Li3PO4 as a prototype, we demonstrated the validity of our computation scheme. Using the constructed model of the Born effective charge predictor and NNP based on density functional (perturbation) theory calculation data, molecular dynamics (MD) simulations under a uniform electric field of 0.1 V/Å were performed. We obtained an enhanced mean square displacement of Li along the electric field, which seems physically reasonable. In addition, we found that the external forces along the direction perpendicular to the electric field, which originated from the off-diagonal components of the Born effective charges, had a non-negligible effect on the Li motion. Furthermore, we observed a more susceptive response of Li to the electric field in an amorphous structure.
基于神经网络的电场作用下离子行为模拟方法:在非晶态Li<sub>3</sub>PO<sub>4</sub>中的应用
我们开发了一个基于神经网络的模型来预测原子结构的玻恩有效电荷。将外加电场产生的力(表示为Born有效电荷与电场的乘积)与神经网络电位(NNP)计算的力结合起来,提出了电场作用下离子动力学的模拟方案。以Li3PO4为原型,验证了计算方案的有效性。利用Born有效电荷预测器和基于密度泛函(微扰)理论计算数据的NNP模型,进行了0.1 V/Å均匀电场下的分子动力学模拟。我们得到了Li沿电场方向均方位移的增强,这在物理上是合理的。此外,我们发现沿垂直于电场方向的外力,来自玻恩有效电荷的非对角线分量,对Li运动有不可忽略的影响。此外,我们观察到Li在非晶结构中对电场的更敏感的响应。
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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CiteScore
0.40
自引率
0.00%
发文量
112
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