Accelerated discovery of M6@g-N4 catalysts for CO2 electroreduction via machine learning and DFT: Descriptor engineering and activity trend validation

Abstract

Graphitic nitrogen-doped graphene (g-N4)-supported M 6 metal clusters are promising candidates for efficient CO2 electroreduction (CO2 RR). However, traditional trial-and-error experiments and computationally intensive DFT calculations hinder the rapid development of high-performance catalysts. Herein, we integrate machine learning (ML) with DFT to screen and predict the CO2 RR performance of M6@g-N4 catalysts, where M represents 36 transition/main group metals (excluding unstable Na/K/Ir/Hg clusters). A DFT-derived dataset covering 16 structural, electronic, and physicochemical descriptors was constructed, and 8 ML algorithms were systematically evaluated. Ridge Regression (RR) emerged as the optimal model, achieving a high coefficient of determination (R2 = 0.963) and low root mean square error (RMSE = 0.228) with strong anti-multicollinearity and interpretability. Pearson correlation and RR-based feature importance analyses revealed that Bader charge transfer, hydrogen evolution reaction (HER) competition, and CO2 structural distortion (∠OCO and C-O bond length) are the dominant activity descriptors. The ML predicted top-performing catalysts for CO2 RR were Cd6@g-N4, Zn6@g-N4, and Sn6@g-N4 , which were further validated by additional DFT calculations on the *CO2 → *CO reaction pathway. This work demonstrates that the integration of ML and DFT provides a data-driven route to accelerate the discovery of high-performance CO2 RR catalysts, offering quantitative guidance for materials design and contributing to climate-change mitigation.

Supplementary files

Article information

Article type
Paper
Submitted
09 Mar 2026
Accepted
01 May 2026
First published
06 May 2026

Phys. Chem. Chem. Phys., 2026, Accepted Manuscript

Accelerated discovery of M6@g-N4 catalysts for CO2 electroreduction via machine learning and DFT: Descriptor engineering and activity trend validation

P. Cheng, H. Xu, X. Wang, X. Wang, T. Wang, C. Yu, W. Sun, Y. Li, W. Huang and C. Chen, Phys. Chem. Chem. Phys., 2026, Accepted Manuscript , DOI: 10.1039/D6CP00864J

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