Recent advances in the interface structure prediction for heteromaterial systems

Ji-Li Li, Ye-Fei Li
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Abstract

The atomic structures of solid-solid interfaces in materials are of fundamental importance for understanding the physical properties of interfacial materials, which is, however, difficult to determine both in experimental and theoretical approaches. New theoretical methodologies utilizing various global optimization algorithms and machine learning (ML) potentials have emerged in recent years, offering a promising approach to unraveling interfacial structures. In this review, we give a concise overview of state-of-the-art techniques employed in the studies of interfacial structures, e.g., ML-assisted phenomenological theory for the global search of interface structure (ML-interface). We also present a few applications of these methodologies.
异质材料体系界面结构预测研究进展
材料中固体-固体界面的原子结构对于理解界面材料的物理性质至关重要,然而,这在实验和理论方法中都很难确定。近年来,利用各种全局优化算法和机器学习(ML)潜力的新理论方法出现了,为揭示界面结构提供了一种有前途的方法。在这篇综述中,我们简要概述了界面结构研究中使用的最新技术,例如,用于界面结构全局搜索的ml辅助现象学理论(ML-interface)。我们还介绍了这些方法的一些应用。
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