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Design of Graphdiyne and Holey Graphyne‐Based Single Atom Catalysts for CO<sub>2</sub> Reduction With Interpretable Machine Learning

Manman Ren, Xiangyu Guo, Shengli Zhang, Shiping Huang

2023Advanced Functional Materials64 citationsDOIOpen Access PDF

Abstract

Abstract Using electrochemical CO 2 reduction reaction (CO 2 RR) to synthesize value‐added hydrocarbons provides a useful solution for environmental issues and energy crisis. However, this process is impeded by the low activity and selectivity of electrocatalysts toward targeted products. Employing density functional theory computations, the graphdiyne and holey graphyne supported single‐atom catalysts (SACs, M/GDY and M/HGY) are demonstrated to be the promising candidates for the CO 2 RR. By taking full elemental diversity of metal sites across the periodic table, 25 catalysts are found to effectively activate CO 2 and inhibit competitive hydrogen evolution, and 8 of them show higher activity for CH 4 production than Cu(211). Remarkably, changing supports are found to greatly affect limiting potentials and reaction pathways, even leading to an “inert‐active” transition for some metal centers. The resulting SACs, including Mn/GDY, Co/HGY, Ru/GDY, and Os/GDY, can achieve high activity with low limiting potentials of ≈ −0.22 to −0.58 V. Machine learning enables to identify the critical role of the polarized charge and magnetic moment of metal atoms in affecting the activity. The built machine learning model also shows an interpretable capability to predict the activity of the other types of SACs, offering a great promise to quick screening of high‐performance SACs.

Topics & Concepts

GraphyneCatalysisMaterials scienceLimitingSelectivityAtom (system on chip)MetalElectrochemistryTransition metalNanotechnologyPhysical chemistryElectrodeOrganic chemistryComputer scienceChemistryGrapheneEngineeringEmbedded systemMechanical engineeringMetallurgyCO2 Reduction Techniques and CatalystsElectrocatalysts for Energy ConversionAdvanced Photocatalysis Techniques
Design of Graphdiyne and Holey Graphyne‐Based Single Atom Catalysts for CO<sub>2</sub> Reduction With Interpretable Machine Learning | Litcius