Applications of machine learning in surfaces and interfaces

SF Xu and JY Wu and Y Guo and Q Zhang and XX Zhong and JJ Li and W Ren, CHEMICAL PHYSICS REVIEWS, 6, 011309 (2025).

DOI: 10.1063/5.0244175

Surfaces and interfaces play key roles in chemical and material science. Understanding physical and chemical processes at complex surfaces and interfaces is a challenging task. Machine learning provides a powerful tool to help analyze and accelerate simulations. This comprehensive review affords an overview of the applications of machine learning in the study of surfaces and interfaces of chemical systems and materials. We categorize surfaces and interfaces into the following broad categories: solid-solid interface, solid-liquid interface, liquid-liquid interface, surface of solid, surface of liquid, and three-phase interfaces. High-throughput screening, combined machine learning and first-principles calculations, and machine learning force field accelerated molecular dynamics simulations are used to rational design and study physical and chemical processes of surfaces and interfaces in systems such as all-solid-state batteries, solar cells, and heterogeneous catalysis. This review provides detailed and comprehensive information on the applications of machine learning on surfaces and interfaces for chemical and material science.

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