还原(数学)
电化学
计算机科学
材料科学
人工智能
机器学习
化学
电极
数学
几何学
物理化学
作者
Vuri Ayu Setyowati,Shiho Mukaida,Kaito Nagita,Takashi Harada,Shuji Nakanishi,Kazuyuki Iwase
标识
DOI:10.1002/celc.202400518
摘要
Abstract Electrochemical CO 2 reduction has attracted significant attention as a potential method to close the carbon cycle. In this study, we investigated the impact of the electrode fabrication and electrolysis conditions on the product selectivity of Ag electrocatalysts using a machine learning (ML) approach. Specifically, we explored the experimental conditions for obtaining the desired H 2 /CO mixture ratio with high CO efficiency. Notably, unlike previous ML‐based studies, we used experimental results as training data. This ML‐based approach allowed us to quantitatively assess the effect of experimental parameters on these targets with a reduced number of experimental trials (only 56 experiments). An inverse analysis based on the ML model suggested the optimal experimental conditions for achieving the desired characteristics of the electrolysis system, with the proposed conditions experimentally validated. This study constitutes the first demonstration of optimal experimental conditions for electrochemical CO 2 reduction with desired characteristics using the experimental results as training data.
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