@article{Jiao2025, 
author = {Dongxu Jiao and Xinyi Li and Mingzi Sun and Lin Liu and Jinchang Fan and Jingxiang Zhao and Bolong Huang and Xiaoqiang Cui},
title = {Machine learning driven rational design of dual atom catalysts on graphene for carbon dioxide electroreduction},
year = {2025},
journal = {Nano Research},
volume = {18},
number = {1},
pages = {94907044},
keywords = {machine learning, density functional theory, dual-atom catalysts, CO2 reaction reduction},
url = {https://www.sciopen.com/article/10.26599/NR.2025.94907044},
doi = {10.26599/NR.2025.94907044},
abstract = {The development of high-performance atomic catalysts for the carbon dioxide reduction reaction (CO2RR) is a time-consuming process due to the complexity of the reaction mechanism and the uncertainty of the active site. Herein, we have proposed combining density functional theory (DFT) and machine learning (ML) to investigate the potential of topological graphene-based dual-atom catalysts (DACs) as CO2RR electrocatalysts. By analyzing the ML results, we identify the number of d-orbital electrons in the active site as a key factor influencing the CO2RR catalytic activity. Additionally, we propose a simple descriptor to measure the CO2RR activity of these DACs. Our findings provide plausible explanations for the synergistic interactions between bimetallic atoms in CO2RR and allow us to screen the homogeneous Ni-Ni pair as the most promising dual-atom catalysts. This work offers a fast ML approach based on limited DFT calculations to predict the most electroactive and stable DACs on carbon support for CO2RR, facilitating rapid screening of high-performance dual-atom catalysts.}
}