Carbon-based materials for low concentration CO2 capture and electrocatalytic reduction

还原(数学) 碳纤维 电催化剂 材料科学 化学工程 化学 复合材料 电化学 电极 物理化学 工程类 几何学 数学 复合数
作者
Yanxi Hu,Yangyang Ding,Liangyiqun Xie,Hanyu Li,Yujing Jiang,Ke Gong,Aidi Zhang,Wenlei Zhu,Yuanyuan Wang
出处
期刊:Carbon [Elsevier]
卷期号:230: 119574-119574 被引量:14
标识
DOI:10.1016/j.carbon.2024.119574
摘要

The gradual increase in carbon dioxide (CO2) concentration in the atmosphere has been recognized as a significant problem for humankind. CO2 flue gas is one of the most apparent contributing sources of emissions. CO2 capture and conversion are environmental-friendly and efficient ways to reduce atmospheric carbon dioxide emissions from flue gases. Considering the traditional expensive gas purification process of low-concentration CO2, the low-cost capturing and electrocatalytic CO2 reduction (ECR) at low concentration by newly-developed carbon-based materials provide an attractive approach to convert low-concentration CO2 in flue gas into high-value fuels and chemicals. Developing and integrating carbon-based capturing and catalytic materials with an understanding of the mechanism has a promising future and will promote this technology toward practical application. This review describes recent progress in the design, preparation, and structural characterization of existing carbon-based materials for the capture and catalysis of low-concentration CO2. The crucial factors of capturing and catalysis performance of all the carbon-based materials are also summarized. Furthermore, the review identifies existing research problems and challenges, and outlines future research directions. We also discuss the prospects for the industrialization of low-concentration CO2 capture and ECR. The remaining technological challenges and future directions for enhancing and applying of carbon-based materials for CO2 capture and electrocatalytic reduction are highlighted.
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