Title Evaluation of the adsorption properties of composite materials for caesium, cobalt, and europium
Translation of Title Kompozicinių medžiagų adsorbcinių savybių ceziui, kobaltui ir europiui vertinimas.
Authors Novikau, Raman
DOI 10.15388/vu.thesis.491
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Pages 172
Keywords [eng] composites ; adsorption ; ions ; ANFIS
Abstract [eng] This dissertation focuses on the synthesis of different composite materials as adsorbents for caesium, cobalt, and europium, their characterisation, adsorption studies, and the use of an adaptive neuro-fuzzy inference system to predict the adsorption capacity of composites. It was found that the muscovite mica clay-graphene oxide-maghemite-magnetite composite has a sufficiently high adsorption capacity for Cs(I) and Co(II). The composites Prussian blue-graphene oxide 2.1, Prussian blue-graphene oxide 2.2, and magnetite-Prussian blue-graphene oxide 3.2 adsorb Cs(I) better than magnetite-Prussian blue-graphene oxide 2.3. Among the chitosan-mineral composites, the chitosan-muscovite mica clay, chitosan-muscovite mica clay cross-linked by epichlorohydrin, and chitosan-montmorillonite modified by glycerol composites showed the highest adsorption capacity for Cs(I) and Co(II), and chitosan-zeolite for Eu(III). Based on experimental and literary data, the suggested mechanism for the adsorption of Cs(I) and Co(II) on muscovite mica clay-graphene oxide-maghemite-magnetite and of Cs(I), Co(II), and Eu(III) on chitosan-mineral composites is ion exchange, complexation, and electrostatic attraction. The mechanism of Cs(I) adsorption on Prussian blue-graphene oxide and magnetite-Prussian blue-graphene oxide composites is complexation, ion exchange, and ion trapping. The adaptive neuro-fuzzy inference system shoved good performance and generalisation ability to predict the adsorption capacity of composites.
Dissertation Institution Vilniaus universitetas.
Type Doctoral thesis
Language English
Publication date 2023