Machine learning for condensed matter physics

被引:90
作者
Bedolla, Edwin [1 ]
Padierna, Luis Carlos [1 ]
Castaneda-Priego, Ramon [1 ]
机构
[1] Univ Guanajuato, Div Ciencias & Ingn, Loma Bosque 103, Leon 37150, Mexico
关键词
neural networks; soft matter; hard matter; restricted Boltzmann machines; support vector machines; RESTRICTED BOLTZMANN MACHINES; SUPPORT VECTOR MACHINE; NEURAL-NETWORKS; PHASE-TRANSITION; HARD SPHEROCYLINDERS; MELTING TRANSITION; SVM CLASSIFIERS; SOFT MATTER; DEEP; MODEL;
D O I
10.1088/1361-648X/abb895
中图分类号
O469 [凝聚态物理学];
学科分类号
070205 ;
摘要
Condensed matter physics (CMP) seeks to understand the microscopic interactions of matter at the quantum and atomistic levels, and describes how these interactions result in both mesoscopic and macroscopic properties. CMP overlaps with many other important branches of science, such as chemistry, materials science, statistical physics, and high-performance computing. With the advancements in modern machine learning (ML) technology, a keen interest in applying these algorithms to further CMP research has created a compelling new area of research at the intersection of both fields. In this review, we aim to explore the main areas within CMP, which have successfully applied ML techniques to further research, such as the description and use of ML schemes for potential energy surfaces, the characterization of topological phases of matter in lattice systems, the prediction of phase transitions in off-lattice and atomistic simulations, the interpretation of ML theories with physics-inspired frameworks and the enhancement of simulation methods with ML algorithms. We also discuss in detail the main challenges and drawbacks of using ML methods on CMP problems, as well as some perspectives for future developments.
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页数:23
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