机器学习势在材料物性的研究综述OA
A Review of Machine Learning Potentials in the Study of Materials Properties
随着人工智能技术与计算硬件的迅速发展,人工智能技术已逐渐成为推动多个科学研究领域变革的革命性工具.在材料科学领域,机器学习方法在材料高通量设计与性能预测方面均发挥着重要作用.近十余年来,基于机器学习构建材料原子间相互作用势的方法已被广泛应用于材料物性研究中,为新型材料的理论设计及微观机制的深入揭示提供了重要支撑.系统梳理了机器学习势的发展历程,介绍其基本流程,概述主流机器学习势的原理及其在材料物性研究中的应用场景,简要评述新兴通用势模型的进展,总结当前面临的挑战及未来发展方向.
With the rapid advancement of artificial intelligence(AI)technologies and hardware capabilities,AI has gradually become a revolutionary tool driving transformative changes across multiple scientific research domains.In the field of materials science,machine learning methods are significant in high-throughput materials design and property prediction.Over the past decade,machine learning-based approaches for constructing interatomic potentials have been widely applied in the study of material properties,and are providing crucial support for the theoretical design of novel materials and in-depth understanding of their underlying microscopic mechanisms.This article reviews the development of machine learning potentials,and introduces their fundamental workflows.The principles of mainstream methods and their applications in materials property research are outlined.Moreover,recent progress in emerging universal potential models is briefly discussed,then concludes with an analysis of current challenges and future research directions.
LI Jinlong;WANG Hao;GENG Huayun
Institute of Fluid Physics,CAEP,Mianyang 621999,Sichuan,ChinaInstitute of Fluid Physics,CAEP,Mianyang 621999,Sichuan,ChinaInstitute of Fluid Physics,CAEP,Mianyang 621999,Sichuan,China
数理科学
机器学习势材料物性通用势模型
machine learning potentialmaterial propertiesuniversal potential model
《高压物理学报》 2026 (1)
20-51,32
国家自然科学基金(12404287)中国工程物理研究院院长基金(YZJJZL2024006)
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