Physics infused machine learning force fields for 2D materials monolayers

Yang Yang, Bo Xu, Hongxiang Zong
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Abstract

Large-scale atomistic simulations of two-dimensional (2D) materials rely on highly accurate and efficient force fields. Here, we present a physics-infused machine learning framework that enables the efficient development and interpretability of interatomic interaction models for 2D materials. By considering the characteristics of chemical bonds and structural topology, we have devised a set of efficient descriptors. This enables accurate force field training using a small dataset. The machine learning force fields show great success in describing the phase transformation and domain switching behaviors of monolayer Group IV monochalcogenides, e.g., GeSe and PbTe. Notably, this type of force field can be readily extended to other non-transition 2D systems, such as hexagonal boron nitride (h BN), leveraging their structural similarity. Our work provides a straightforward but accurate extension of simulation time and length scales for 2D materials.
二维材料单层的物理注入机器学习力场
二维(2D)材料的大规模原子模拟依赖于高精度和高效的力场。在这里,我们提出了一个物理注入的机器学习框架,使二维材料的原子相互作用模型的有效开发和可解释性。考虑到化学键和结构拓扑的特点,我们设计了一套有效的描述符。这使得使用小数据集进行精确的力场训练成为可能。机器学习力场在描述单层IV族单硫属化合物(如GeSe和PbTe)的相变和畴切换行为方面取得了巨大成功。值得注意的是,这种类型的力场可以很容易地扩展到其他非过渡二维体系,如六方氮化硼(h BN),利用它们的结构相似性。我们的工作为二维材料的模拟时间和长度尺度提供了一个简单而准确的扩展。
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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