Noordhoek Kyle, Bartel Christopher J
Department of Chemical Engineering and Materials Science, University of Minnesota, Minneapolis, MN, 55455, USA.
Nanoscale. 2024 Mar 28;16(13):6365-6382. doi: 10.1039/d3nr06468a.
The surface properties of solid-state materials often dictate their functionality, especially for applications where nanoscale effects become important. The relevant surface(s) and their properties are determined, in large part, by the material's synthesis or operating conditions. These conditions dictate thermodynamic driving forces and kinetic rates responsible for yielding the observed surface structure and morphology. Computational surface science methods have long been applied to connect thermochemical conditions to surface phase stability, particularly in the heterogeneous catalysis and thin film growth communities. This review provides a brief introduction to first-principles approaches to compute surface phase diagrams before introducing emerging data-driven approaches. The remainder of the review focuses on the application of machine learning, predominantly in the form of learned interatomic potentials, to study complex surfaces. As machine learning algorithms and large datasets on which to train them become more commonplace in materials science, computational methods are poised to become even more predictive and powerful for modeling the complexities of inorganic surfaces at the nanoscale.
固态材料的表面性质通常决定了它们的功能,特别是在纳米尺度效应变得重要的应用中。相关表面及其性质在很大程度上由材料的合成或操作条件决定。这些条件决定了产生观察到的表面结构和形态的热力学驱动力和动力学速率。长期以来,计算表面科学方法一直被用于将热化学条件与表面相稳定性联系起来,特别是在多相催化和薄膜生长领域。本综述在介绍新兴的数据驱动方法之前,简要介绍了计算表面相图的第一性原理方法。综述的其余部分重点介绍机器学习的应用,主要是以学习到的原子间势的形式,来研究复杂表面。随着机器学习算法及其训练所需的大型数据集在材料科学中变得越来越普遍,计算方法有望在模拟纳米尺度无机表面的复杂性方面变得更具预测性和强大功能。