4.6 Article

Feasibility of fluoride removal using calcined Mactra veneriformis shells: Adsorption mechanism and optimization study using RSM and ANN

Journal

CHEMICAL ENGINEERING RESEARCH & DESIGN
Volume 188, Issue -, Pages 1042-1053

Publisher

ELSEVIER
DOI: 10.1016/j.cherd.2022.10.031

Keywords

Mactra veneriformis shells; Fluoride adsorption; Response surface methodology; Artificial neural networks; Portlandite; Calcination

Funding

  1. National Research Foundation of Korea (NRF) - Korean Government (MSIT)
  2. [2020R1C1C1008982]

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This study assessed the use of Mactra veneriformis shells as an adsorbent for fluoride removal from water. The shells calcined at 800 and 900 degrees C had the highest adsorption capacity for fluoride. The adsorption process followed the pseudo-second-order and Langmuir models. The optimized conditions for fluoride removal were determined using response surface methodology and artificial neural networks. The Mactra veneriformis shells showed high fluoride removal efficiency under the optimized conditions.
In this study, Mactra veneriformis shells (MVS), a seafood by-product with high Ca content, was assessed as an adsorbent for fluoride removal from contaminated water. MVS was calcined at various temperatures (100-900 degrees C), and MVS calcined at 800 and 900 degrees C (MVS-800 and MVS-900) had the highest adsorption capacity. The high fluoride adsorption of MVS-800 and MVS-900 originated from the conversion of CaCO3 present in the raw MVS to CaO and Ca(OH)(2) by calcination at high temperatures. The kinetic and equilibrium adsorption of fluoride by MVS-800 were accurately described by the pseudo-second-order and Langmuir models, respectively. The maximum fluoride adsorption capacity was 244.61 mg/g, which is comparable to that of other adsorbents reported in the literature. The enthalpy and entropy of adsorption were 7.42 kJ/mol and 56.48 J/mol.K, respectively, and the Gibbs free energy was negative at all reaction temperatures. The interactive effects of pH, reaction time, dosage, and temperature and the optimal values for fluoride removal by MVS-800 were explored using response surface methodology (RSM) and artificial neural networks (ANN). The RSM results demonstrated that reaction time, dosage, and temperature significantly influenced fluoride removal; however, pH was an insignificant term. The accuracy of the ANN model (R-2 = 0.9932) for predicting fluoride removal was higher than that of RSM (R-2 = 0.9347). The optimal fluoride removal at a dosage of 3.3 g/L under optimized conditions (pH 5; reaction time 9 h; temperature 35 degrees C) was predicted to be 98.5% by the ANN model. (C) 2022 Institution of Chemical Engineers. Published by Elsevier Ltd. All rights reserved.

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