Asymmetrical C–C Coupling for Electroreduction of CO on Bimetallic Cu–Pd Catalysts

H. F. Shen(Johns Hopkins University), Yunzhe Wang(Johns Hopkins University), Tanmoy Chakraborty(Johns Hopkins University), Guangye Zhou(Johns Hopkins University), Canhui Wang(Johns Hopkins University), Canhui Wang(Johns Hopkins University), Xianbiao Fu(Johns Hopkins University), Yuxuan Wang(Johns Hopkins University), Jinyi Zhang(Johns Hopkins University), Chenyang Li(Johns Hopkins University), Fei Xu(Johns Hopkins University), Liang Cao(Johns Hopkins University), Tim Mueller(Johns Hopkins University), Chao Wang(Johns Hopkins University), Chao Wang(Johns Hopkins University)
ACS Catalysis
April 18, 2022
Cited by 94Open Access
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Abstract

Electroreduction of carbon monoxide (CO) possesses great potential for achieving the renewable synthesis of hydrocarbon chemicals from CO2. We report here selective reduction of CO to acetate using Cu–Pd bimetallic electrocatalysts. High activity and selectivity are demonstrated for CO-to-acetate conversion with >200 mA/cm2 in geometric current density and >65% in Faradaic efficiency (FE). An asymmetrical C–C coupling mechanism is proposed to explain the composition-dependent catalytic performance and high selectivity toward acetate. This mechanism is supported by the computationally predicted shift of the *CO adsorption from the top-site configuration on Cu (or Cu-rich) surfaces to the bridge sites of Cu–Pd bimetallic surfaces, which is also associated with the reduction of the CO hydrogenation barrier. Further kinetic analysis of the reaction order with respect to CO and Tafel slope supports a reaction pathway with *CO–*CHO recombination following a CO hydrogenation step, which could account for the electroreduction of CO to acetate on the Cu–Pd bimetallic catalysts. Our work highlights how heteroatomic alloy surfaces can be tailored to enable distinct reaction pathways and achieve advanced catalytic performance beyond monometallic catalysts.


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