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First-Principles Multiscale Modeling of Mechanical Properties in Graphene/Borophene Heterostructures Empowered by Machine-Learning Interatomic Potentials

机译:石墨烯/硼丙烷异质结构中力学性能的第一原理模型赋予机器学习的内部势能

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摘要

Density functional theory calculations are robust tools to explore the mechanical properties of pristine structures at their ground state but become exceedingly expensive for large systems at finite temperatures. Classical molecular dynamics (CMD) simulations offer the possibility to study larger systems at elevated temperatures, but they require accurate interatomic potentials. Herein the authors propose the concept of first-principles multiscale modeling of mechanical properties, where ab initio level of accuracy is hierarchically bridged to explore the mechanical/failure response of macroscopic systems. It is demonstrated that machine-learning interatomic potentials (MLIPs) fitted to ab initio datasets play a pivotal role in achieving this goal. To practically illustrate this novel possibility, the mechanical/failure response of graphene/borophene coplanar heterostructures is examined. It is shown that MLIPs conveniently outperform popular CMD models for graphene and borophene and they can evaluate the mechanical properties of pristine and heterostructure phases at room temperature. Based on the information provided by the MLIP-based CMD, continuum models of heterostructures using the finite element method can be constructed. The study highlights that MLIPs were the missing block for conducting first-principles multiscale modeling, and their employment empowers a straightforward route to bridge ab initio level accuracy and flexibility to explore the mechanical/failure response of nanostructures at continuum scale.
机译:密度函数理论计算是鲁棒工具,用于探讨其地位上原始结构的机械性能,但对于有限温度的大型系统变得非常昂贵。经典分子动力学(CMD)模拟提供了在高温下研究较大系统的可能性,但它们需要准确的内部电位。在此,作者提出了一种机械性能的第一原理MultiScipe MultiScie Multiming的概念,其中AB Initio精度水平是分层桥接以探讨宏观系统的机械/故障响应。据证明,安装在AB Initio数据集的机器学习的内部潜力(MLIPS)在实现这一目标方面发挥了关键作用。为了实际说明这种新的可能性,研究了石墨烯/硼酚共源性化学杂交的机械/破坏响应。结果表明,MLIPS方便地优于石墨烯和硼烯的流行CMD型号,它们可以在室温下评估原始和异质结构的机械性能。基于由基于MLIP的CMD提供的信息,可以构建使用有限元方法的外性结构的连续体模型。该研究突出显示MLIPS是进行多尺度建模的丢失块,其就业使得桥接AB初始精度和灵活性探讨连续尺度纳米结构的机械/故障响应的直接路线。

著录项

  • 来源
    《Advanced Materials》 |2021年第35期|2102807.1-2102807.9|共9页
  • 作者单位

    Leibniz Univ Hannover Dept Math & Phys Computat Sci & Simulat Technol Inst Photon Appelstr 11 D-30167 Hannover Germany|Leibniz Univ Hannover Cluster Excellence PhoenixD Photon Opt & Engn Inn D-30169 Hannover Germany;

    Isfahan Univ Technol Dept Mech Engn Esfahan 8415683111 Iran;

    Skolkovo Innovat Ctr Skolkovo Inst Sci & Technol Nobel St 3 Moscow 143026 Russia;

    Tongji Univ Dept Geotech Engn Coll Civil Engn Shanghai 1239 Peoples R China;

    Leibniz Univ Hannover Dept Math & Phys Computat Sci & Simulat Technol Inst Photon Appelstr 11 D-30167 Hannover Germany;

    Skolkovo Innovat Ctr Skolkovo Inst Sci & Technol Nobel St 3 Moscow 143026 Russia;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    first-principles calculations; machine learning; mechanical; failure response; multiscale modeling;

    机译:第一原理计算;机器学习;机械;故障响应;多尺度建模;
  • 入库时间 2022-08-19 03:03:35

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