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In Situ Growth of Zn-based Metal-Organic Frameworks in Ultra-High Surface Area Nano-Wood Aerogel for Efficient CO2 Capture and Separation

Journal of materials chemistry A(2023)

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摘要
Metal-organic frameworks (MOFs) combined with wood-based templates have drawn growing interest in the field of CO2 capture and separation. However, the low MOFs loadings of these composites adversely limit their performance. In this study, a novel wood-based template with a nanocellulose aerogel network structure and natural wood anisotropy was prepared by dissolution-regeneration followed by 2,2,6,6-tetramethylpiperidin-1-oxyl (TEMPO)-mediated oxidation. These TEMPO-nanocellulose networks have large numbers of polar groups in the TEMPO-oxidized regenerated wood (TRW) which can generate stronger interaction forces between the added metal ions (Zn2+). This improves the loading of MOFs into the composite. It also causes lower MOF aggregation in TRW. Three MOFs of different crystal size (Zn-MOF-74, ZIF-7-NH2 and ZIF-8-NH2) were synthesized in situ within TRW using different organic ligands, and designated as TRW/Z-74, TRW/Z-7N, and TRW/Z-8N. TRW/Z-74 exhibited a high CO2 adsorption capacity (2.59 mmol g(-1)) at 298 K, 106 kPa (1.06 bar). Even after 7 recycles, their CO2 adsorption capacity still remained at 95% of its original value. A selectivity of TRW/Z-74 for CO2 in a CO2/N-2 (15%/85%) gas mixture up to 49 was calculated by ideal adsorption solution theory (IAST). In addition, TRW/Z-74 had good yield strengths in compression tests along the longitudinal axis. CO2 uptake tests proved the scalability of TRW as a template for different metal based-MOFs. TRW/Mg-MOF-74 (4.97 mmol g(-1)) and TRW/Co-MOF-74 (3.37 mmol g(-1)) exceeded that of TRW/Zn-MOF-74 (2.59 mmol g(-1)) at 298 K and 106 kPa. Thus, this study provides a novel strategy for the synthesis of wood-based MOF composites, also achieves a sustainable and efficient capture and separation of CO2.
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