反应性(心理学)
协议(科学)
催化作用
特征(语言学)
化学
金属
计算机科学
组合化学
有机化学
医学
语言学
哲学
替代医学
病理
作者
Li-Hui Mou,Gui-Duo Jiang,Chao Wang,Xin Cheng,Jia Yu,Ziyu Li,Jun Jiang
出处
期刊:ACS Catalysis
[American Chemical Society]
日期:2025-04-08
卷期号:15 (8): 6618-6627
被引量:4
标识
DOI:10.1021/acscatal.5c01379
摘要
The activation of dinitrogen (N2) by metal clusters is a fundamental challenge in chemistry and has been extensively studied. However, previous studies have primarily focused on case-by-case interpretations of experimental reactivity, resulting in a lack of universal reactivity descriptors and predictive models that can quantitatively estimate reaction rates and elucidate structure–activity relationships. In this study, we develop predictive, interpretable, and transferable machine learning models for metal cluster reactivity toward N2, employing a systematic and hierarchical feature extraction strategy that generates electronic and intrinsic features from three structural levels. Crucial features influencing cluster reactivity were identified, and the mechanisms by which these features govern reactivity were elucidated. To enhance model robustness and transferability, pairwise learning (data augmentation) and feature interaction (feature augmentation) strategies were employed, leading to a deep neural network model that correlates feature differences with reaction rate differences. Trained on 159 homonuclear metal clusters, the model demonstrates satisfactory transferability to 57 heteronuclear metal clusters, enabling reaction rate predictions based on their feature differences. This work presents an expert-guided machine learning protocol for developing generalizable models to predict and understand metal cluster reactivity.
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