A Universal Descriptor for Complicated Interfacial Effects on Electrochemical Reduction Reactions.
Chunjin RenShuaihua LuYilei WuYixin OuyangYehui ZhangQiang LiChongyi LingJinlan WangPublished in: Journal of the American Chemical Society (2022)
Supported catalysts have exhibited excellent performance in various reactions. However, the rational design of supported catalysts with high activity and certain selectivity remains a great challenge because of the complicated interfacial effects. Using recently emerged two-dimensional materials supported dual-atom catalysts (DACs@2D) as a prototype, we propose a simple and universal descriptor based on inherent atomic properties (electronegativity, electron type, and number), which can well evaluate the complicated interfacial effects on the electrochemical reduction reactions (i.e., CO 2 , O 2 , and N 2 reduction reactions). Based on this descriptor, activity and selectivity trends in CO 2 reduction reaction are successfully elucidated, in good agreement with available experimental data. Moreover, several potential catalysts with superior activity and selectivity for target products are predicted, such as CuCr/g-C 3 N 4 for CH 4 and CuSn/N-BN for HCOOH. More importantly, this descriptor can also be extended to evaluate the activity of DACs@2D for O 2 and N 2 reduction reactions, with very small errors between the prediction and reported experimental/computational results. This work provides feasible principles for the rational design of advanced electrocatalysts and the construction of universal descriptors based on inherent atomic properties.
Keyphrases
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