Assessing sustainable Lutetium(III) ions adsorption and recovery using novel composite hybrid nanomaterials

Journal of Molecular Structure(2023)

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摘要
Organic ligand-based sustainable composite hybrid material (CMHs) was prepared for the sensitive and selective adsorption of Lutetium (Lu(III)) from waste samples. The hard and soft donor organic ligand of (3-(3-(methoxycarbonyl)benzylidene) hydrazinyl)benzoic acid (MBHB) was immobilized according to the direct approach. The carrier silica and ligand-embedded CMHs were characterized systematically. The adsorption of Lu(III) ion was significantly influenced by the solution pH due to the protonation form of the synthesized organic ligand. However, the slightly acidic pH (4.0) was chosen for sensitive and selective separation and adsorption of Lu(III) ions. The co-existing diverse metal ions were not interfered with during the adsorption of the Lu(III) ion because of the high affinity of the Lu(III) ion to CMHs at the optimum experimental protocol. It was expected that the bond distance between Lu-O was shorter than the other bond length of Lu-N atoms of the organic ligand. The Langmuir adsorption isotherm model was defined according to the morphology of the material and implemented to validate the adsorption isotherms according to the homogeneous ordered structures. The adsorption capacity was 171.76 mg/g as expected due to the high surface area of the CMHs. The adsorbed Lu(III) ion was completely eluted from the CHMs with the eluent of 0.35 M HNO3 and the regenerated material was used in several cycles without significant loss in its original performances. Therefore, it is expected that the ligand-based CMHs may hold huge potential in applications and may be scaled up for commercial applications, including specific separation, adsorption, and recovery of Lu(III) ions from waste samples. (c) 2022 Elsevier B.V. All rights reserved.
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关键词
Lu(III) ions,Hard donor ligand,Composite hybrid nanomaterial,Adsorption and recovery,Waste samples
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