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金属有机框架中碳捕获的最新进展:全面综述

Recent Advances of Carbon Capture in Metal-Organic Frameworks: A Comprehensive Review.

作者信息

Li Wen-Liang, Shuai Qi, Yu Jiamei

机构信息

College of Materials Science and Engineering, Beijing University of Technology, Beijing, 100124, China.

出版信息

Small. 2024 Nov;20(45):e2402783. doi: 10.1002/smll.202402783. Epub 2024 Aug 8.

Abstract

The excessive emission of greenhouse gases, which leads to global warming and alarms the world, has triggered a global campaign for carbon neutrality. Carbon capture and sequestration (CCS) technology has aroused wide research interest as a versatile emission mitigation technology. Metal-organic frameworks (MOFs), as a new class of high-performance adsorbents, hold great potential for CO capture from large point sources and ambient air due to their ultra-high specific surface area as well as pore structure. In recent years, MOFs have made great progress in the field of CO capture and separation, and have published a number of important results, which have greatly promoted the development of MOF materials for practical carbon capture applications. This review summarizes the most recent advanced research on MOF materials for carbon capture in various application scenarios over the past six years. The strategies for enhancing CO selective adsorption and separation of MOFs are described in detail, along with the development of MOF-based composites. Moreover, this review also systematically summarizes the highly concerned issues of MOF materials in practical applications of carbon capture. Finally, future research on CO capture by MOF materials is prospected.

摘要

温室气体的过量排放导致全球变暖并引起全球关注,引发了一场全球碳中和运动。碳捕获与封存(CCS)技术作为一种通用的减排技术,已引起广泛的研究兴趣。金属有机框架(MOF)作为一类新型高性能吸附剂,因其超高的比表面积和孔隙结构,在从大型点源和环境空气中捕获CO方面具有巨大潜力。近年来,MOF在CO捕获和分离领域取得了很大进展,并发表了许多重要成果,极大地推动了MOF材料在实际碳捕获应用中的发展。本综述总结了过去六年中MOF材料在各种应用场景下用于碳捕获的最新前沿研究。详细描述了提高MOF对CO选择性吸附和分离的策略,以及基于MOF的复合材料的发展。此外,本综述还系统总结了MOF材料在碳捕获实际应用中备受关注的问题。最后,对MOF材料未来用于CO捕获的研究进行了展望。

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