Atomistic modeling of the mechanical properties: the rise of machine learning interatomic potentials

被引:33
|
作者
Mortazavi, Bohayra [1 ,2 ]
Zhuang, Xiaoying [1 ,3 ]
Rabczuk, Timon [4 ]
Shapeev, Alexander V. [5 ]
机构
[1] Leibniz Univ Hannover, Chair Computat Sci & Simulat Technol, Dept Math & Phys, Appelstr 11, D-30167 Hannover, Germany
[2] Leibniz Univ Hannover, Cluster Excellence PhoenixD Photon Opt & Engn Inno, Hannover, Germany
[3] Tongji Univ, Coll Civil Engn, Dept Geotech Engn, 1239 Siping Rd, Shanghai, Peoples R China
[4] Bauhaus Univ Weimar, Inst Struct Mech, Marienstr 15, D-99423 Weimar, Germany
[5] Skolkovo Inst Sci & Technol, Skolkovo Innovat Ctr, Bolshoy Bulvar 30, Moscow 143026, Russia
基金
俄罗斯科学基金会;
关键词
DENSITY-FUNCTIONAL THEORY; THERMAL-CONDUCTIVITY; MOLECULAR-DYNAMICS; GRAPHENE SHEETS; NETWORK; CHEMISTRY; 1ST-PRINCIPLES; STRENGTH; BEHAVIOR;
D O I
10.1039/d3mh00125c
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Since the birth of the concept of machine learning interatomic potentials (MLIPs) in 2007, a growing interest has been developed in the replacement of empirical interatomic potentials (EIPs) with MLIPs, in order to conduct more accurate and reliable molecular dynamics calculations. As an exciting novel progress, in the last couple of years the applications of MLIPs have been extended towards the analysis of mechanical and failure responses, providing novel opportunities not heretofore efficiently achievable, neither by EIPs nor by density functional theory (DFT) calculations. In this minireview, we first briefly discuss the basic concepts of MLIPs and outline popular strategies for developing a MLIP. Next, by considering several examples of recent studies, the robustness of MLIPs in the analysis of the mechanical properties will be highlighted, and their advantages over EIP and DFT methods will be emphasized. MLIPs furthermore offer astonishing capabilities to combine the robustness of the DFT method with continuum mechanics, enabling the first-principles multiscale modeling of mechanical properties of nanostructures at the continuum level. Last but not least, the common challenges of MLIP-based molecular dynamics simulations of mechanical properties are outlined and suggestions for future investigations are proposed.
引用
收藏
页码:1956 / 1968
页数:13
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