Structure Sensitivity of Metal Catalysts Revealed by Interpretable Machine Learning and First-Principles Calculations

化学 催化作用 数量结构-活动关系 价(化学) 电子结构 化学物理 位阻效应 价电子 晶体结构 理论物理学 概化理论 缩放比例 计算化学 结晶学 电子 有机化学 量子力学 立体化学 几何学 物理 数学 统计
作者
Shu Wu,Jiancong Li,Jin‐Xun Liu,Chengshen Zhu,Tairan Wang,Feng Li,Runhai Ouyang,Wei‐Xue Li
出处
期刊:Journal of the American Chemical Society [American Chemical Society]
卷期号:146 (12): 8737-8745
标识
DOI:10.1021/jacs.4c01524
摘要

The nature of the active sites and their structure sensitivity are the keys to rational design of efficient catalysts but have been debated for almost one century in heterogeneous catalysis. Though the Brønsted-Evans-Polanyi (BEP) relationship along with linear scaling relation has long been used to study the reactivity, explicit geometry, and composition properties are absent in this relationship, a fact that prevents its exploration in structure sensitivity of supported catalysts. In this work, based on interpretable multitask symbolic regression and a comprehensive first-principles data set, we discovered a structure descriptor, the topological under-coordinated number mediated by number of valence electrons and the lattice constant, to successfully address the structure sensitivity of metal catalysts. The database used for training, testing, and transferability investigation includes bond-breaking barriers of 20 distinct chemical bonds over 10 transition metals, two metal crystallographic phases, and 17 different facets. The resulting 2D descriptor composing the structure term and the reaction energy term shows great accuracy to predict the reaction barriers and generalizability over the data set with diverse chemical bonds in symmetry, bond order, and steric hindrance. The theory is physical and concise, providing a constructive strategy not only to understand the structure sensitivity but also to decipher the entangled geometric and electronic effects of metal catalysts. The insights revealed are valuable for the rational design of the site-specific metal catalysts.
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