Ying Penghua, Natan Amir, Hod Oded, Urbakh Michael
Department of Physical Chemistry, School of Chemistry, The Raymond and Beverly Sackler Faculty of Exact Sciences and The Sackler Center for Computational Molecular and Materials Science, Tel Aviv University, Tel Aviv 6997801, Israel.
Department of Physical Electronics, Tel Aviv University, Tel Aviv 6997801, Israel.
ACS Nano. 2024 Apr 9;18(14):10133-10141. doi: 10.1021/acsnano.3c13099. Epub 2024 Mar 28.
Surface defects and their mutual interactions are anticipated to affect the superlubric sliding of incommensurate layered material interfaces. Atomistic understanding of this phenomenon is limited due to the high computational cost of ab initio simulations and the absence of reliable classical force-fields for molecular dynamics simulations of defected systems. To address this, we present a machine-learning potential (MLP) for bilayer defected graphene, utilizing state-of-the-art graph neural networks trained against many-body dispersion corrected density functional theory calculations under iterative configuration space exploration. The developed MLP is utilized to study the impact of interlayer bonding on the friction of bilayer defected graphene interfaces. While a mild effect on the sliding dynamics of aligned graphene interfaces is observed, the friction coefficients of incommensurate graphene interfaces are found to significantly increase due to interlayer bonding, nearly pushing the system out of the superlubric regime. The methodology utilized herein is of general nature and can be adapted to describe other homogeneous and heterogeneous defected layered material interfaces.
表面缺陷及其相互作用预计会影响非 commensurate 层状材料界面的超润滑滑动。由于从头算模拟的计算成本高昂,且缺乏用于缺陷系统分子动力学模拟的可靠经典力场,对这一现象的原子尺度理解受到限制。为解决这一问题,我们提出了一种针对双层缺陷石墨烯的机器学习势(MLP),利用在迭代配置空间探索下针对多体色散校正密度泛函理论计算训练的先进图神经网络。所开发的MLP用于研究层间键合对双层缺陷石墨烯界面摩擦的影响。虽然观察到对齐的石墨烯界面的滑动动力学受到轻微影响,但发现非 commensurate 石墨烯界面的摩擦系数由于层间键合而显著增加,几乎使系统超出超润滑状态。本文所采用的方法具有通用性,可适用于描述其他均匀和非均匀的缺陷层状材料界面。