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基于[5]轮烷和磷杂环戊二烯链接的多孔有机聚合物的高效铀吸附剂的合成。

Synthesis of Pillar[5]arene- and Phosphazene-Linked Porous Organic Polymers for Highly Efficient Adsorption of Uranium.

机构信息

School of Chemical Engineering, Dalian University of Technology, Dalian 116024, China.

Department of Chemistry, University of Baltistan, Skardu 16100, Pakistan.

出版信息

Molecules. 2023 Jan 19;28(3):1029. doi: 10.3390/molecules28031029.

Abstract

It is crucial to design efficient adsorbents for uranium from natural seawater with wide adaptability, effectiveness, and environmental safety. Porous organic polymers (POPs) provide superb tunable porosity and stability among developed porous materials. In this work, two new POPs, i.e., HCCP-P5-1 and HCCP-P5-2 were rationally designed and constructed by linked with macrocyclic pillar[5]arene as the monomer and hexachlorophosphate as the core via a macrocycle-to-framework strategy. Both pillar[5]arene-containing POPs exhibited high uranium adsorption capacity compared with previously reported macrocycle-free counterparts. The isothermal adsorption curves and kinetic studies showed that the adsorption of POPs on uranium was consistent with the Langmuir model and the pseudo-second-order kinetic model. Especially, HCCP-P5-1 has reached 537.81 mg/g, which is greater than most POPs that have been reported. Meanwhile, the comparison between both HCCP-P5-1 and HCCP-P5-2 can illustrate that the adsorption capacity and stability could be adjusted by the monomer ratio. This work provides a new idea for the design and construction of uranium adsorbents from macrocycle-derived POPs.

摘要

设计高效、适应性广、有效且环境安全的从天然海水中吸附铀的吸附剂至关重要。多孔有机聚合物(POPs)在已开发的多孔材料中提供了极好的可调节孔隙率和稳定性。在这项工作中,通过大环骨架策略,将大环柱[5]芳烃作为单体,六氯磷酸酯作为核,合理设计并构建了两种新型的 POPs,即 HCCP-P5-1 和 HCCP-P5-2。与之前报道的无大环的同类物相比,含柱[5]芳烃的 POPs 均表现出较高的铀吸附能力。等温吸附曲线和动力学研究表明,POPs 对铀的吸附符合 Langmuir 模型和拟二级动力学模型。特别是,HCCP-P5-1 达到 537.81mg/g,大于大多数已报道的 POPs。同时,对 HCCP-P5-1 和 HCCP-P5-2 进行比较可以说明,通过单体比例可以调节吸附剂的吸附容量和稳定性。这项工作为基于大环衍生的 POPs 设计和构建铀吸附剂提供了新的思路。

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