Wu Jing, Zhou E, Qin Zhenzhen, Zhang Xiaoliang, Qin Guangzhao
State Key Laboratory of Advanced Design and Manufacturing for Vehicle Body, College of Mechanical and Vehicle Engineering, Hunan University, Changsha 410082, People's Republic of China.
International Laboratory for Quantum Functional Materials of Henan, and School of Physics and Microelectronics, Zhengzhou University, Zhengzhou 450001, People's Republic of China.
Nanotechnology. 2022 Apr 20;33(27). doi: 10.1088/1361-6528/ac5cfd.
The negative Poisson's ratio (NPR) is a novel property of materials, which enhances the mechanical feature and creates a wide range of application prospects in lots of fields, such as aerospace, electronics, medicine, etc. Fundamental understanding on the mechanism underlying NPR plays an important role in designing advanced mechanical functional materials. However, with different methods used, the origin of NPR is found different and conflicting with each other, for instance, in the representative graphene. In this study, based on machine learning technique, we constructed a moment tensor potential for molecular dynamics (MD) simulations of graphene. By analyzing the evolution of key geometries, the increase of bond angle is found to be responsible for the NPR of graphene instead of bond length. The results on the origin of NPR are well consistent with the start-of-art first-principles, which amend the results from MD simulations using classic empirical potentials. Our study facilitates the understanding on the origin of NPR of graphene and paves the way to improve the accuracy of MD simulations being comparable to first-principle calculations. Our study would also promote the applications of machine learning interatomic potentials in multiscale simulations of functional materials.
负泊松比(NPR)是材料的一种新奇特性,它增强了材料的力学性能,并在航空航天、电子、医学等众多领域创造了广泛的应用前景。对NPR潜在机制的基本理解在设计先进的机械功能材料中起着重要作用。然而,由于使用的方法不同,人们发现NPR的起源各不相同且相互矛盾,例如在具有代表性的石墨烯中。在本研究中,基于机器学习技术,我们构建了用于石墨烯分子动力学(MD)模拟的矩张量势。通过分析关键几何结构的演变,发现键角的增加而非键长是导致石墨烯出现NPR的原因。关于NPR起源的结果与最新的第一性原理高度一致,修正了使用经典经验势的MD模拟结果。我们的研究有助于理解石墨烯NPR的起源,并为提高与第一性原理计算相当的MD模拟精度铺平了道路。我们的研究还将推动机器学习原子间势在功能材料多尺度模拟中的应用。