最大值和最小值
贝叶斯优化
高斯过程
高斯分布
人工智能
计算机科学
机器学习
曲面(拓扑)
贝叶斯概率
势能面
原子间势
先验概率
统计物理学
能量(信号处理)
分子动力学
数学
物理
量子力学
数学分析
几何学
从头算
作者
Peder Lyngby,Casper Larsen,Karsten W. Jacobsen
出处
期刊:Physical Review Materials
[American Physical Society]
日期:2024-12-04
卷期号:8 (12)
标识
DOI:10.1103/physrevmaterials.8.123802
摘要
The optimization of atomic structures plays a pivotal role in understanding and designing materials with desired properties. However, conventional computational methods often struggle with the formidable task of navigating the vast potential energy surface, especially in high-dimensional spaces with numerous local minima. Recent advancements in machine learning-driven surrogate models offer a promising avenue for alleviating this computational burden. In this study, we propose anapproach that combines the strengths of universal machine learning potentials with a Bayesian approach using Gaussian processes. By using the machine learning potentials as priors for the Gaussian process, the Gaussian process has to learn only the difference between the machine learning potential and the target energy surface calculated for example by density functional theory. This turns out to improve the speed by which the global optimal structure is identified across diverse systems for a well-behaved machine learning potential. The approach is tested on periodic bulk materials, surface structures, and a cluster.
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