催化作用
概化理论
Atom(片上系统)
氮原子
计算机科学
石墨烯
特征(语言学)
化学
氮气
组合化学
生物系统
材料科学
人工智能
纳米技术
数学
有机化学
统计
并行计算
哲学
生物
语言学
群(周期表)
作者
Sheng Zhang,Shuaihua Lu,Peng Zhang,Jianxiong Tian,Li Shi,Chongyi Ling,Qionghua Zhou,Jinlan Wang
出处
期刊:Energy & environmental materials
日期:2021-11-03
卷期号:6 (1)
被引量:48
摘要
Developing high‐performance catalysts using traditional trial‐and‐error methods is generally time consuming and inefficient. Here, by combining machine learning techniques and first‐principle calculations, we are able to discover novel graphene‐supported single‐atom catalysts for nitrogen reduction reaction in a rapid way. Successfully, 45 promising catalysts with highly efficient catalytic performance are screened out from 1626 candidates. Furthermore, based on the optimal feature sets, new catalytic descriptors are constructed via symbolic regression, which can be directly used to predict single‐atom catalysts with good accuracy and good generalizability. This study not only provides dozens of promising catalysts and new descriptors for nitrogen reduction reaction but also offers a potential way for rapid screening of new electrocatalysts.
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