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Data-driven approach identifies promising COâ‚‚ conversion catalysts

Data-driven approach identifies promising COâ‚‚ conversion catalysts
Representative M-N-C SAC structures considered in this study and the scaling relation observed in M-N-C SACs with various atomic configurations, where M represents the metal center (Ti/V/Cr/Mn/Fe/Co/Ni/Cu). Credit: The Journal of Chemical Âé¶¹ÒùÔºics (2025). DOI: 10.1063/5.0267969

A research team has developed a unified theoretical framework to better predict the performance of single-atom catalysts (SACs) for electrochemical carbon dioxide reduction (CO₂RR). Their model incorporates both pH and interfacial electric field effects—two critical factors that have often been overlooked or oversimplified in conventional catalyst studies.

COâ‚‚RR is gaining attention as a potential solution for reducing by converting into useful products under . Among the various outputs, (CO) is especially valuable due to its use in syngas mixtures and chemical synthesis. However, catalyst behavior during COâ‚‚RR is known to be highly sensitive to the surrounding electrolyte environment, particularly local pH levels.

To address this, the team created a microkinetic model that operates at the reversible hydrogen electrode (RHE) scale. It explicitly accounts for the dynamic influence of pH and electric fields on reaction intermediates. This model was combined with spin-polarized density functional theory (DFT-D3) calculations and data-driven screening to evaluate 101 SAC configurations based on d-block transition metals.

The study, in The Journal of Chemical Âé¶¹ÒùÔºics, examined SACs across a range of coordination environments, including pyrrole- and pyridine-functionalized graphene, covalent organic frameworks (COFs), porphyrins, and phthalocyanines. A consistent linear relationship was found between the adsorption energies of the key intermediates—∗COOH and ∗CO—indicating a predictable trend in binding behavior.

  • Data-driven approach identifies promising COâ‚‚ conversion catalysts
    Activity analysis of 230 M-N-C catalysts for CO production through the CO2RR, compiled via large-scale data mining. Credit: The Journal of Chemical Âé¶¹ÒùÔºics (2025). DOI: 10.1063/5.0267969
  • Data-driven approach identifies promising COâ‚‚ conversion catalysts
    Analysis of the pH-dependent behavior and predictive modeling of CO2RR toward CO formation on d-block M-N-C SACs at −1.0 VRHE. Credit: The Journal of Chemical Âé¶¹ÒùÔºics (2025). DOI: 10.1063/5.0267969

One of the notable findings of the study was the role of dipole-field interactions in modulating these intermediate bindings under varying pH conditions. These interactions helped explain why certain catalysts perform differently across pH environments, offering deeper insight into the mechanisms at play in COâ‚‚RR.

Model predictions showed strong agreement with available experimental turnover frequency data, suggesting the framework's reliability in real-world applications. Based on this agreement, the researchers identified 12 SACs with favorable CO selectivity across a wide range of pH values. These catalysts are primarily centered around iron (Fe), copper (Cu), and nickel (Ni) atoms.

"This work represents a step toward more predictive catalyst screening by bridging theory with realistic electrochemical conditions," said Hao Li, Professor at Tohoku University's Advanced Institute for Materials Research (WPI-AIMR) and lead author of the study. "By integrating pH and field effects into our model, we can more accurately guide the design of catalysts suited for carbon-neutral energy technologies."

All computational structures used in the study have been uploaded to the , a growing open-access resource for the catalysis community developed by Professor Li's group. This contribution aims to support further research and data sharing across the field.

Looking ahead, the team plans to refine the model further to improve both predictive accuracy and computational efficiency. They also aim to incorporate machine learning algorithms to accelerate design and deepen our understanding of pH-sensitive electrochemical reactions.

More information: Yue Chu et al, Data-driven discovery of single-atom catalysts for CO2 reduction considering the pH-dependency at the reversible hydrogen electrode scale, The Journal of Chemical Âé¶¹ÒùÔºics (2025).

Provided by Tohoku University

Citation: Data-driven approach identifies promising COâ‚‚ conversion catalysts (2025, May 21) retrieved 7 June 2025 from /news/2025-05-driven-approach-conversion-catalysts.html
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