MACHINE LEARNING POTENTIALS FOR GRAPHENE

被引:0
|
作者
Singh, Akash [1 ]
Li, Yumeng [1 ]
机构
[1] Univ Illinois, Urbana, IL 61801 USA
关键词
Artificial Neural Network (ANN); Density Functional Theory (DFT); Molecular Dynamics Simulation; 2D Materials; Symmetry Functions; Machine Learning Potentials;
D O I
暂无
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
Graphene has been one of the most researched material in the world for the past two decades due to its unique combination of mechanical, thermal and electrical properties. Graphene exists in a stable two dimensional (2D) structure with hexagonal carbon rings. This special 2D structure of graphene enables it to exhibit a wide range of peculiar material properties like high Young's modulus, high specific strength, and electrical conductivity etc. However, it is extremely challenging and costly to investigate graphene solely based on experimental tests. Atomistic simulations are powerful computational techniques for characterizing materials at small length and time scales with a fraction of cost relative to experimental testing. High fidelity atomistic simulations like Density Functional Theory (DFT) simulations, and ab initio molecular dynamic simulations have higher accuracy in predicting 2D material properties but are computationally expensive. Classic molecular dynamics (MD) simulations adopt empirical interatomic potentials which drastically reduce the computational time but has lower simulation accuracy. To bridge the gap between these two type of simulation techniques, a new artificial neural network potential is developed, for graphene in this study, to enable the characterization of 2D materials using classic MD simulations with a comparable accuracy of first principles simulation. This is expected to accelerate the discovery and design of novel graphene based functional materials. In the present study mechanical and thermal properties of graphene are investigated using the machine learning potentials by conducting MD simulations. To validate the accuracy of machine learning potentials mechanical properties such as Young's modulus, ultimate tensile strength and thermal properties such as coefficient of thermal expansion and lattice parameter are evaluated for graphene and compared with existing literature.
引用
收藏
页数:10
相关论文
共 50 条
  • [21] Machine learning potentials for extended systems: a perspective
    Jörg Behler
    Gábor Csányi
    The European Physical Journal B, 2021, 94
  • [22] Machine Learning Interatomic Potentials for Heterogeneous Catalysis
    Tang, Deqi
    Ketkaew, Rangsiman
    Luber, Sandra
    CHEMISTRY-A EUROPEAN JOURNAL, 2024, 30 (60)
  • [23] Machine learning approach to the recognition of nanobubbles in graphene
    Song, Taegeun
    Myoung, Nojoon
    Lee, Hunpyo
    Park, Hee Chul
    APPLIED PHYSICS LETTERS, 2021, 119 (19)
  • [24] Machine Learning Guided Synthesis of Flash Graphene
    Beckham, Jacob L.
    Wyss, Kevin M.
    Xie, Yunchao
    McHugh, Emily A.
    Li, John Tianci
    Advincula, Paul A.
    Chen, Weiyin
    Lin, Jian
    Tour, James M.
    ADVANCED MATERIALS, 2022, 34 (12)
  • [25] Predicting the Multiphotonic Absorption in Graphene by Machine Learning
    Garcia-Cordova, Jose Zahid
    Arano-Martinez, Jose Alberto
    Mercado-Zuniga, Cecilia
    Martinez-Gonzalez, Claudia Lizbeth
    Torres-Torres, Carlos
    AI, 2024, 5 (04) : 2203 - 2217
  • [26] Small-data-based machine learning interatomic potentials for graphene grain boundaries enabled by structural unit model
    Guo, Ruiqiang
    Li, Guotai
    Tang, Jialin
    Wang, Yinglei
    Song, Xiaohan
    CARBON TRENDS, 2023, 11
  • [27] Adaptive loss weighting for machine learning interatomic potentials
    Ocampo, Daniel
    Posso, Daniela
    Namakian, Reza
    Gao, Wei
    COMPUTATIONAL MATERIALS SCIENCE, 2024, 244
  • [29] Machine Learning in Production - Potentials, Challenges and Exemplary Applications
    Mayr, Andreas
    Kisskalt, Dominik
    Meiners, Moritz
    Lutz, Benjamin
    Schaefer, Franziska
    Seidel, Reinhardt
    Selmaier, Andreas
    Fuchs, Jonathan
    Metzner, Maximilian
    Blank, Andreas
    Franke, Joerg
    7TH CIRP GLOBAL WEB CONFERENCE - TOWARDS SHIFTED PRODUCTION VALUE STREAM PATTERNS THROUGH INFERENCE OF DATA, MODELS, AND TECHNOLOGY (CIRPE 2019), 2019, 86 : 49 - 54
  • [30] Beyond potentials: Integrated machine learning models for materials
    Michele Ceriotti
    MRS Bulletin, 2022, 47 : 1045 - 1053