光催化
电催化剂
纳米技术
化学
生化工程
计算机科学
催化作用
材料科学
工程类
电化学
电极
生物化学
物理化学
作者
Haoxin Mai,Tu C. Le,Dehong Chen,David A. Winkler,Rachel A. Caruso
出处
期刊:Chemical Reviews
[American Chemical Society]
日期:2022-07-21
卷期号:122 (16): 13478-13515
被引量:201
标识
DOI:10.1021/acs.chemrev.2c00061
摘要
Electrocatalysts and photocatalysts are key to a sustainable future, generating clean fuels, reducing the impact of global warming, and providing solutions to environmental pollution. Improved processes for catalyst design and a better understanding of electro/photocatalytic processes are essential for improving catalyst effectiveness. Recent advances in data science and artificial intelligence have great potential to accelerate electrocatalysis and photocatalysis research, particularly the rapid exploration of large materials chemistry spaces through machine learning. Here a comprehensive introduction to, and critical review of, machine learning techniques used in electrocatalysis and photocatalysis research are provided. Sources of electro/photocatalyst data and current approaches to representing these materials by mathematical features are described, the most commonly used machine learning methods summarized, and the quality and utility of electro/photocatalyst models evaluated. Illustrations of how machine learning models are applied to novel electro/photocatalyst discovery and used to elucidate electrocatalytic or photocatalytic reaction mechanisms are provided. The review offers a guide for materials scientists on the selection of machine learning methods for electrocatalysis and photocatalysis research. The application of machine learning to catalysis science represents a paradigm shift in the way advanced, next-generation catalysts will be designed and synthesized.
科研通智能强力驱动
Strongly Powered by AbleSci AI