过电位
材料科学
电解
背景(考古学)
化学工程
催化作用
纳米技术
反应性(心理学)
铜
分析化学(期刊)
纳米晶
电催化剂
电化学
化学
物理化学
电极
冶金
有机化学
古生物学
医学
生物
电解质
替代医学
病理
工程类
作者
Daniel Choukroun,Lien Pacquets,Chen Li,Saskia Hoekx,Sven Arnouts,Kitty Baert,Tom Hauffman,Sara Bals,Tom Breugelmans
出处
期刊:ACS Nano
[American Chemical Society]
日期:2021-08-24
卷期号:15 (9): 14858-14872
被引量:30
标识
DOI:10.1021/acsnano.1c04943
摘要
Colloidal Cu–Ag nanocrystals measuring less than 10 nm across are promising candidates for integration in hybrid CO2 reduction reaction (CO2RR) interfaces, especially in the context of tandem catalysis and selective multicarbon (C2–C3) product formation. In this work, we vary the synthetic-ligand/copper molar ratio from 0.1 to 1.0 and the silver/copper atomic ratio from 0 to 0.7 and study the variations in the nanocrystals’ size distribution, morphology and reactivity at rates of ≥100 mA cm–2 in a gas-fed recycle electrolyzer operating under neutral to mildly basic conditions (0.1–1.0 M KHCO3). High-resolution electron microscopy and spectroscopy are used in order to characterize the morphology of sub-10 nm Cu–Ag nanodimers and core–shells and to elucidate trends in Ag coverage and surface composition. It is shown that Cu–Ag nanocrystals can be densely dispersed onto a carbon black support without the need for immediate ligand removal or binder addition, which considerably facilitates their application. Although CO2RR product distribution remains an intricate function of time, (kinetic) overpotential and processing conditions, we nevertheless conclude that the ratio of oxygenates to hydrocarbons (which depends primarily on the initial dispersion of the nanocrystals and their composition) rises 3-fold at moderate Ag atom % relative to Cu NCs-based electrodes. Finally, the merits of this particular Cu–Ag/C system and the recycling reactor employed are utilized to obtain maximum C2–C3 partial current densities of 92–140 mA cm–2 at −1.15 VRHE and liquid product concentrations in excess of 0.05 wt % in 1 M KHCO3 after short electrolysis periods.
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