计算机科学
生化工程
财产(哲学)
催化作用
二氧化碳电化学还原
纳米技术
人工智能
材料科学
化学
工程类
有机化学
哲学
认识论
一氧化碳
作者
Zhuo Wang,Zhehao Sun,Hang Yin,Honghe Wei,Zicong Peng,Yoong Xin Pang,Guohua Jia,Haitao Zhao,Cheng Heng Pang,Zongyou Yin
出处
期刊:eScience
[Elsevier BV]
日期:2023-04-17
卷期号:3 (4): 100136-100136
被引量:50
标识
DOI:10.1016/j.esci.2023.100136
摘要
Achieving carbon neutrality is an essential part of responding to climate change caused by the deforestation and over-exploitation of natural resources that have accompanied the development of human society. The carbon dioxide reduction reaction (CO2RR) is a promising strategy to capture and convert carbon dioxide (CO2) into value-added chemical products. However, the traditional trial-and-error method makes it expensive and time-consuming to understand the deeper mechanism behind the reaction, discover novel catalysts with superior performance and lower cost, and determine optimal support structures and electrolytes for the CO2RR. Emerging machine learning (ML) techniques provide an opportunity to integrate material science and artificial intelligence, which would enable chemists to extract the implicit knowledge behind data, be guided by the insights thereby gained, and be freed from performing repetitive experiments. In this perspective article, we focus on recent advancements in ML-participated CO2RR applications. After a brief introduction to ML techniques and the CO2RR, we first focus on ML-accelerated property prediction for potential CO2RR catalysts. Then we explore ML-aided prediction of catalytic activity and selectivity. This is followed by a discussion about ML-guided catalyst and electrode design. Next, the potential application of ML-assisted experimental synthesis for the CO2RR is discussed. Finally, we present specific challenges and opportunities, with the aim of better understanding research and advancements in using ML for the CO2RR.
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