催化作用
化学
限制
硝酸盐
还原(数学)
生物系统
金属
选择性催化还原
生化工程
化学信息学
平衡(能力)
过渡金属
降维
计算化学
组合化学
兴奋剂
化学工程
工艺工程
计算机科学
反应条件
多相催化
无机化学
作者
Zhen Zhu,Shan Gao,Jing Zhang,Xuxin Kang,Shunfang Li,Xiangmei Duan
出处
期刊:ACS Catalysis
[American Chemical Society]
日期:2026-01-13
卷期号:16 (3): 2010-2022
被引量:4
标识
DOI:10.1021/acscatal.5c05532
摘要
Elucidating the catalytic descriptor that accurately characterizes the structure–activity relationships of typical catalysts for various important heterogeneous catalytic reactions is pivotal for designing high-efficient catalytic systems. Here, an interpretable machine learning technique was employed to identify the key determinants governing the nitrate reduction reaction (NO3RR) performance across 286 single-atom catalysts (SACs) with the active sites anchored on double-vacancy BC3 monolayers. Through Shapley Additive Explanations (SHAP) analysis with reliable predictive accuracy, we quantitatively demonstrated that, favorable NO3RR activity stemmed from a delicate balance among three critical factors: low NV, moderate DN, and specific doping patterns. Building upon these insights, we established a descriptor (ψ) that integrated the intrinsic catalytic properties and the intermediate O–N–H angle (θ), effectively capturing the underlying structure–activity relationship. Guided by this, we further identified 16 promising catalysts with predicted low limiting potential (UL). Importantly, these catalysts are composed of cost-effective nonprecious metal elements and are predicted to surpass most reported catalysts, with the best-performing Ti–V-1N1 is predicted to have an ultralow UL of −0.10 V.
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