Highly selective and stackable electrode design for gaseous CO2 electroreduction to ethylene in a zero-gap configuration
- Authors
- Lee, Woong Hee; Lim, Chulwan; Lee, Si Young; Chae, Keun Hwa; Choi, Chang Hyuck; Lee, Ung; Min, Byoung Koun; Hwang, Yun Jeong; Oh, Hyung-Suk
- Issue Date
- 2021-06
- Publisher
- Elsevier BV
- Citation
- Nano Energy, v.84
- Abstract
- The electrochemical reduction of CO2 to ethylene has the potential to reduce greenhouse gas emissions while producing commodity chemicals for plastics; however, a scalable and feasible system for this remains a challenge. Herein, we report an efficient and stackable electrode design for the electrolysis of CO2 to ethylene. Using KOH-incorporated Cu nanoparticle (Cu-KOH) as the cathode in a zero-gap electrolyzer, Faradaic efficiency of 78.7% for C-2 products was achieved at a current density of 281 mA cm(-2). Among C-2 products, ethylene with a 54.5% FE was dominant product. For mass production, three membrane electrode assemblies (MEAs) were stacked and operated. Operando X-ray absorption spectroscopy under the zero-gap electrolyzer suggested mainly metallic Cu state with some persistent oxide-derived Cu species in Cu-KOH, including Cu2O and Cu(OH)(2), which expected a synergistic effect for the conversion of CO2 to C2H4. Our findings provide a new strategy for converting CO2 to C2H4, which is expected to accelerate the commercialization of high-value chemical production through electrochemical CO2 reduction.
- Keywords
- CARBON-DIOXIDE REDUCTION; FUEL-CELL STACK; ELECTROCHEMICAL REDUCTION; COPPER ELECTRODES; EFFICIENT; ELECTROCATALYSTS; CONVERSION; CATALYSTS; INSIGHTS; STATE; Zero-gap electrolyzer; CO2 reduction reaction (CO2RR); Ethylene; KOH incorporated Cu; Scaling and stacking up system
- ISSN
- 2211-2855
- URI
- https://pubs.kist.re.kr/handle/201004/116948
- DOI
- 10.1016/j.nanoen.2021.105859
- Appears in Collections:
- KIST Article > 2021
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