On the Role of Long-Range Electrostatics in Machine-Learned Interatomic Potentials for Complex Battery Materials

被引:28
|
作者
Staacke, Carsten G. [1 ,2 ,3 ]
Heenen, Hendrik H. [3 ]
Scheurer, Christoph [1 ,2 ,3 ]
Csanyi, Gabor [4 ]
Reuter, Karsten [1 ,2 ,3 ]
Margraf, Johannes T. [1 ,2 ,3 ]
机构
[1] Tech Univ Munich, Chair Theoret Chem, D-85747 Garching, Germany
[2] Tech Univ Munich, Catalysis Res Ctr, D-85747 Garching, Germany
[3] Max Planck Gesell, Fritz Haber Inst, D-14195 Berlin, Germany
[4] Univ Cambridge, Engn Lab, Cambridge CB2 1PZ, England
关键词
machine learning; electrostatics; battery; solid-state electrolyte; locality; ION CONDUCTIVITY; STABILITY; EVOLUTION; INSIGHTS;
D O I
10.1021/acsaem.1c02363
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
Modeling complex energy materials such as solid-state electrolytes (SSEs) realistically at the atomistic level strains the capabilities of state-of-the-art theoretical approaches. On one hand, the system sizes and simulation time scales required are prohibitive for first-principles methods such as the density functional theory. On the other hand, parameterizations for empirical potentials are often not available, and these potentials may ultimately lack the desired predictive accuracy. Fortunately, modern machine learning (ML) potentials are increasingly able to bridge this gap, promising first-principles accuracy at a much reduced computational cost. However, the local nature of these ML potentials typically means that long-range contributions arising, for example, from electrostatic interactions are neglected. Clearly, such interactions can be large in polar materials such as electrolytes, however. Herein, we investigate the effect that the locality assumption of ML potentials has on lithium mobility and defect formation energies in the SSE Li7P3S11. We find that neglecting long-range electrostatics is unproblematic for the description of lithium transport in the isotropic bulk. In contrast, (field-dependent) defect formation energies are only adequately captured by a hybrid potential combining ML and a physical model of electrostatic interactions. Broader implications for ML-based modeling of energy materials are discussed.
引用
收藏
页码:12562 / 12569
页数:8
相关论文
共 50 条
  • [21] Multikernel similarity-based clustering of amorphous systems and machine-learned interatomic potentials by active learning
    Shuaib, Firas
    Ori, Guido
    Thomas, Philippe
    Masson, Olivier
    Bouzid, Assil
    JOURNAL OF THE AMERICAN CERAMIC SOCIETY, 2025, 108 (01)
  • [22] Performance of two complementary machine-learned potentials in modelling chemically complex systems
    Gubaev, Konstantin
    Zaverkin, Viktor
    Srinivasan, Prashanth
    Duff, Andrew Ian
    Kaestner, Johannes
    Grabowski, Blazej
    NPJ COMPUTATIONAL MATERIALS, 2023, 9 (01)
  • [23] Simulation of Phase-Change-Memory and Thermoelectric Materials using Machine-Learned Interatomic Potentials: Sb2Te3
    Konstantinou, Konstantinos
    Mavracic, Juraj
    Mocanu, Felix C.
    Elliott, Stephen R.
    PHYSICA STATUS SOLIDI B-BASIC SOLID STATE PHYSICS, 2021, 258 (09):
  • [24] Performance of two complementary machine-learned potentials in modelling chemically complex systems
    Konstantin Gubaev
    Viktor Zaverkin
    Prashanth Srinivasan
    Andrew Ian Duff
    Johannes Kästner
    Blazej Grabowski
    npj Computational Materials, 9
  • [25] Revealing the role of electrostatics in guiding long-range electron carriers
    Li, Chuan
    Li, Lin
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2013, 246
  • [26] Self-consistent determination of long-range electrostatics in neural network potentials
    Gao, Ang
    Remsing, Richard C.
    NATURE COMMUNICATIONS, 2022, 13 (01)
  • [27] Self-consistent determination of long-range electrostatics in neural network potentials
    Ang Gao
    Richard C. Remsing
    Nature Communications, 13
  • [28] Role of Long-Range Dispersion Forces in Modeling of MXenes as Battery Electrode Materials
    Tygesen, Alexander S.
    Pandey, Mohnish
    Vegge, Tejs
    Thygesen, Kristian S.
    Garcia-Lastra, Juan M.
    JOURNAL OF PHYSICAL CHEMISTRY C, 2019, 123 (07): : 4064 - 4071
  • [29] Making complex scaling work for long-range potentials
    Rescigno, TN
    Baertschy, M
    Byrum, D
    McCurdy, CW
    PHYSICAL REVIEW A, 1997, 55 (06) : 4253 - 4262
  • [30] Nature of the Amorphous-Amorphous Interfaces in Solid-State Batteries Revealed Using Machine-Learned Interatomic Potentials
    Wang, Chuhong
    Aykol, Muratahan
    Mueller, Tim
    CHEMISTRY OF MATERIALS, 2023, 35 (16) : 6346 - 6356