A theoretical case study of the generalization of machine-learned potentials

被引:2
|
作者
Wang, Yangshuai [1 ]
Patel, Shashwat [2 ]
Ortner, Christoph [1 ]
机构
[1] Univ British Columbia, Dept Math, Vancouver, BC V6T1Z2, Canada
[2] Indian Inst Technol Madras, Dept Met & Mat Engn, Chennai, Tamil Nadu, India
关键词
Error analysis; Model generalization; Machine-learned potentials; Crystal defects; Dislocations; ELECTRONIC-STRUCTURE CALCULATIONS; UNCERTAINTY QUANTIFICATION; ATOMISTIC SIMULATIONS; BOUNDARY-CONDITIONS; DEFECTS; FRAMEWORK; SURFACES; ERROR; ORDER; MODEL;
D O I
10.1016/j.cma.2024.116831
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Machine -learned interatomic potentials (MLIPs) are typically trained on datasets that encompass a restricted subset of possible input structures, which presents a potential challenge for their generalization to a broader range of systems outside the training set. Nevertheless, MLIPs have demonstrated impressive accuracy in predicting forces and energies in simulations involving intricate and complex structures. In this paper we aim to take steps towards rigorously explaining the excellent observed generalization properties of MLIPs. Specifically, we offer a comprehensive theoretical and numerical investigation of the generalization of MLIPs in the context of dislocation simulations. We quantify precisely how the accuracy of such simulations is directly determined by a few key factors: the size of the training structures, the choice of training observations (e.g., energies, forces, virials), and the level of accuracy achieved in the fitting process. Notably, our study reveals the crucial role of fitting virials in ensuring the consistency of MLIPs for dislocation simulations. Our series of careful numerical experiments encompassing screw, edge, and mixed dislocations, supports existing best practices in the MLIPs literature but also provides new insights into the design of data sets and loss functions.
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页数:23
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