Fine-Tuning Dual Single-Atom Metal Sites on Graphene Toward Enhanced ORR Activity

09 October 2023, Version 4
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

The electrocatalytic oxygen reduction reaction (ORR) plays a crucial role in numerous energy and sustainability systems, such as fuel cells, metal-air batteries, and water electrolysers. It holds significant potential for renewable energy generation, transportation, and storage, heralding a cleaner and more sustainable future. Recent trends have shown increased use of single-atom catalysts (SACs), particularly metal-N4 moieties grown on graphene-based 2D materials, for enhancing ORR efficiency. However, the rational design of SAC for high-performance ORR faces challenges due to unclear structure-property relationships and the limits of conventional experimental trial-and-error approaches. In this study, we harnessed the power of the density functional theory (DFT) calculations, combined with cutting-edge machine learning (ML) techniques, to explore 144 SACs featuring dual interacting M1-N4 and M2-N4 moieties (M1, M2 = Mn, Fe, Co, Ni, Cu, Ru, Rh, Pd, Ag Ir, Pt, Au), denoted as M1-M2, grown on graphene. Of all the catalysts we examined, Fe-Pd emerged as the top performer, achieving an impressive overpotential of 0.211 V vs. RHE in alkaline conditions — outperforming most previously reported SACs. Even more striking, 25 of the evaluated SACs surpassed the renowned Fe-N4 SAC in catalytic efficiency, including more economically viable alternatives like Fe-Ag. Venturing further, we developed three ML models that accurately predict the overpotentials of various M1-M2 SACs, showing their strong ability to capture the relationship between single-atom metal site properties and overpotential. These models provide useful navigation toolkits for the rational design of effective electrocatalysts. Our study sheds light on the path toward achieving efficient SAC-catalyzed ORR, contributing to a more sustainable and energy-efficient future.

Keywords

single-atom catalyst
oxygen reduction reaction
density functional theory
machine learning
catalysis

Supplementary materials

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Supporting Information
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Computational details; schematic illustration of structural model construction and DFT workflow; free energy diagrams of 144 investigated SACs and the benchmark Fe(OH)-N4; DFT-computed data on catalytic properties of 144 SACs; plot of the relationships between ΔGOOH* vs ΔGOH* and ΔGOH* vs ΔGO* for 144 SACs; ΔGOH* and ΔGO* volcano plots for 144 SACs; ΔGOOH* and ΔGO* heat maps for 144 SACs; Correlation between group number of M2 and ΔGOOH* for Fe-M system; Correlation between group number of M2 and overpotential for Fe-M system; Evaluation of prediction performance of electronic descriptor ψ; Performance of SISSO model using binding energies (ΔGOOH*, ΔGO*, and ΔGOH*) to predict overpotential; impact of DFT error bars in SACs prediction; Extrapolation Capability of ASPM.
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