High-Performance Nanocatalyst for Adsorptive and Photo-Assisted Fenton-Like Degradation of Phenol: Modeling Using Artificial Neural Networks

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Taylor & Francis Inc

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info:eu-repo/semantics/closedAccess

Abstract

High-performance activated carbon-zinc oxide (Ac-ZnO) nanocatalyst was fabricated via the microwave-assisted technique. Ac-ZnO was characterized and the results indicated that Ac-ZnO is stable, had a band gap of 3.26eV and a surface area of 603.5m(2)g(-1), and exhibited excellent adsorptive and degrading potentials. About 93% phenol was adsorbed within 550min of reaction by Ac-ZnO. Impressively, a complete degradation was achieved in 90min via a photo-Fenton/Ac-ZnO system under optimum conditions. An artificial neural network (ANN) model was developed and applied to study the relative significance of input variables affecting the degradation of phenol in a photo-Fenton process. The ANN results indicate that increases in both H2O2 and Ac-ZnO dosage enhanced the rate of phenol degradation. The highest rate constant at the optimum conditions was 0.093min(-1) and it was found to be consistent with the ANN-predicted rate constant (0.095min(-1)).

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Activated carbon, Artificial neural network, Fenton-like degradation, Phenol, ZnO nanoparticles

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Chemical Engineering Communications

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Volume

204

Issue

7

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