催化作用
氮氧化物
迭代函数
迭代和增量开发
计算机科学
还原(数学)
过程(计算)
选择性催化还原
工艺工程
化学
工程类
数学
有机化学
几何学
燃烧
数学分析
软件工程
操作系统
作者
Yulong Chen,Jia Feng,Xin Wang,Cheng Zhang,Dongfang Ke,Huiyan Zhu,Shuai Wang,Hongri Suo,Chongxuan Liu
标识
DOI:10.1021/acs.est.3c00293
摘要
An iterative approach between machine learning (ML) and laboratory experiments was developed to accelerate the design and synthesis of environmental catalysts (ECs) using selective catalytic reduction (SCR) of nitrogen oxides (NOx) as an example. The main steps in the approach include training a ML model using the relevant data collected from the literature, screening candidate catalysts from the trained model, experimentally synthesizing and characterizing the candidates, updating the ML model by incorporating the new experimental results, and screening promising catalysts again with the updated model. This process is iterated with a goal to obtain an optimized catalyst. Using the iterative approach in this study, a novel SCR NOx catalyst with low cost, high activity, and a wide range of application temperatures was found and successfully synthesized after four iterations. The approach is general enough that it can be readily extended for screening and optimizing the design of other environmental catalysts and has strong implications for the discovery of other environmental materials.
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