图神经网络力场预测固态性能的可推广性

IF 2.9 4区 工程技术 Q1 MULTIDISCIPLINARY SCIENCES
Shaswat Mohanty, Yifan Wang, Wei Cai
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引用次数: 0

摘要

机器学习力场(MLFFs)有望为复杂分子系统的从头算模拟提供一种计算效率高的替代方案。然而,确保它们在训练数据之外的泛化性对于它们在固体材料研究中的广泛应用至关重要。这项工作研究了基于Lennard-Jones Argon训练的基于图神经网络(GNN)的MLFF描述训练过程中未明确包括的固态现象的能力。在预测零温度和有限温度下完美面心立方(FCC)晶体结构的声子态密度(PDOS)方面评估了MLFF的性能。此外,利用直接分子动力学(MD)模拟和串法评估了不完美晶体中的空位迁移率和能垒。值得注意的是,培训数据中没有空缺配置。这些结果证明了MLFF能够捕获基本的固态特性,并且与参考数据非常吻合,即使是不可见的配置。进一步讨论了数据工程策略,以增强MLFFs的泛化性。本文提出了一套用于评价MLFF在描述完美晶体和不完美晶体方面性能的基准测试和工作流程,为MLFF在复杂固态材料研究中的可靠应用铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalizability of Graph Neural Network Force Fields for Predicting Solid‐State Properties
Machine‐learned force fields (MLFFs) promise to offer a computationally efficient alternative to ab initio simulations for complex molecular systems. However, ensuring their generalizability beyond training data is crucial for their wide application in studying solid materials. This work investigates the ability of a graph neural network (GNN)‐based MLFF, trained on Lennard–Jones Argon, to describe solid‐state phenomena not explicitly included during training. The MLFF's performance is assessed in predicting phonon density of states (PDOS) for a perfect face‐centered cubic (FCC) crystal structure at both zero and finite temperatures. Additionally, vacancy migration rates and energy barriers are evaluated in an imperfect crystal using direct molecular dynamics (MD) simulations and the string method. Notably, vacancy configurations are absent from the training data. These results demonstrate the MLFF's capability to capture essential solid‐state properties with good agreement to reference data, even for unseen configurations. Data engineering strategies are further discussed to enhance the generalizability of MLFFs. The proposed set of benchmark tests and workflow for evaluating MLFF performance in describing perfect and imperfect crystals pave the way for reliable application of MLFFs in studying complex solid‐state materials.
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来源期刊
Advanced Theory and Simulations
Advanced Theory and Simulations Multidisciplinary-Multidisciplinary
CiteScore
5.50
自引率
3.00%
发文量
221
期刊介绍: Advanced Theory and Simulations is an interdisciplinary, international, English-language journal that publishes high-quality scientific results focusing on the development and application of theoretical methods, modeling and simulation approaches in all natural science and medicine areas, including: materials, chemistry, condensed matter physics engineering, energy life science, biology, medicine atmospheric/environmental science, climate science planetary science, astronomy, cosmology method development, numerical methods, statistics
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