Modelling and optimization for methylene blue adsorption using graphene oxide/chitosan composites via artificial neural network-particle swarm optimization

Water pollution due to dyes from industrial effluents and domestic wastewater is a big environmental issue, so an effective adsorbent is needed. In this study, graphene oxide/chitosan (GO/CS) composites were synthesized and applied for methylene blue (MB) dye removal. Characterization was done on th...

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Main Authors: Goh, Kheng Khiam, Karri, Rama Rao, Mubarak, Nabisab Mujawar, Mohammad Khalid, Mohammad Khalid, Walvekar, Rashmi, Abdullah, Ezzat Chan, Rahman, Muhammad Ekhlasur
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Published: Elsevier Ltd 2022
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Online Access:http://eprints.utm.my/103082/
http://dx.doi.org/10.1016/j.mtchem.2022.100946
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spelling my.utm.1030822023-10-12T09:22:36Z http://eprints.utm.my/103082/ Modelling and optimization for methylene blue adsorption using graphene oxide/chitosan composites via artificial neural network-particle swarm optimization Goh, Kheng Khiam Karri, Rama Rao Mubarak, Nabisab Mujawar Mohammad Khalid, Mohammad Khalid Walvekar, Rashmi Abdullah, Ezzat Chan Rahman, Muhammad Ekhlasur Q Science (General) TP Chemical technology Water pollution due to dyes from industrial effluents and domestic wastewater is a big environmental issue, so an effective adsorbent is needed. In this study, graphene oxide/chitosan (GO/CS) composites were synthesized and applied for methylene blue (MB) dye removal. Characterization was done on the GO and GO/CS composites using FTIR, EDX, SEM, and TGA. The adsorption studies were conducted to verify the effect of pH, adsorbent dosage and contact time. The interactive effects of the process variables were verified using response surface methodology (RSM), and optimal conditions for higher adsorption efficiency are evaluated by Artificial neural network (ANN)-Particle swarm optimization (PSO). ANN-PSO predictions are in good agreement with the experimental values and hence resulted in higher R2 (=0.998) compared to RSM predictions (R2 = 0.981). The MB adsorption process is found to be obeying the Langmuir isotherm and pseudo 1st order kinetic model. The maximum MB removal efficiency (90.34%) and adsorption amount (7.53 mg/g) can be obtained at an initial dye concentration of 10 mg/L and optimal values of pH (5), adsorbent dosage (0.143 g/L) and contact time (125 min). These results further confirm that the ANN-PSO-based approach is able to capture the inherent mechanisms of the MB adsorption process and can be used as a good modelling approach. Elsevier Ltd 2022-06 Article PeerReviewed Goh, Kheng Khiam and Karri, Rama Rao and Mubarak, Nabisab Mujawar and Mohammad Khalid, Mohammad Khalid and Walvekar, Rashmi and Abdullah, Ezzat Chan and Rahman, Muhammad Ekhlasur (2022) Modelling and optimization for methylene blue adsorption using graphene oxide/chitosan composites via artificial neural network-particle swarm optimization. Materials Today Chemistry, 24 (NA). pp. 1-14. ISSN 2468-5194 http://dx.doi.org/10.1016/j.mtchem.2022.100946 DOI:10.1016/j.mtchem.2022.100946
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic Q Science (General)
TP Chemical technology
spellingShingle Q Science (General)
TP Chemical technology
Goh, Kheng Khiam
Karri, Rama Rao
Mubarak, Nabisab Mujawar
Mohammad Khalid, Mohammad Khalid
Walvekar, Rashmi
Abdullah, Ezzat Chan
Rahman, Muhammad Ekhlasur
Modelling and optimization for methylene blue adsorption using graphene oxide/chitosan composites via artificial neural network-particle swarm optimization
description Water pollution due to dyes from industrial effluents and domestic wastewater is a big environmental issue, so an effective adsorbent is needed. In this study, graphene oxide/chitosan (GO/CS) composites were synthesized and applied for methylene blue (MB) dye removal. Characterization was done on the GO and GO/CS composites using FTIR, EDX, SEM, and TGA. The adsorption studies were conducted to verify the effect of pH, adsorbent dosage and contact time. The interactive effects of the process variables were verified using response surface methodology (RSM), and optimal conditions for higher adsorption efficiency are evaluated by Artificial neural network (ANN)-Particle swarm optimization (PSO). ANN-PSO predictions are in good agreement with the experimental values and hence resulted in higher R2 (=0.998) compared to RSM predictions (R2 = 0.981). The MB adsorption process is found to be obeying the Langmuir isotherm and pseudo 1st order kinetic model. The maximum MB removal efficiency (90.34%) and adsorption amount (7.53 mg/g) can be obtained at an initial dye concentration of 10 mg/L and optimal values of pH (5), adsorbent dosage (0.143 g/L) and contact time (125 min). These results further confirm that the ANN-PSO-based approach is able to capture the inherent mechanisms of the MB adsorption process and can be used as a good modelling approach.
format Article
author Goh, Kheng Khiam
Karri, Rama Rao
Mubarak, Nabisab Mujawar
Mohammad Khalid, Mohammad Khalid
Walvekar, Rashmi
Abdullah, Ezzat Chan
Rahman, Muhammad Ekhlasur
author_facet Goh, Kheng Khiam
Karri, Rama Rao
Mubarak, Nabisab Mujawar
Mohammad Khalid, Mohammad Khalid
Walvekar, Rashmi
Abdullah, Ezzat Chan
Rahman, Muhammad Ekhlasur
author_sort Goh, Kheng Khiam
title Modelling and optimization for methylene blue adsorption using graphene oxide/chitosan composites via artificial neural network-particle swarm optimization
title_short Modelling and optimization for methylene blue adsorption using graphene oxide/chitosan composites via artificial neural network-particle swarm optimization
title_full Modelling and optimization for methylene blue adsorption using graphene oxide/chitosan composites via artificial neural network-particle swarm optimization
title_fullStr Modelling and optimization for methylene blue adsorption using graphene oxide/chitosan composites via artificial neural network-particle swarm optimization
title_full_unstemmed Modelling and optimization for methylene blue adsorption using graphene oxide/chitosan composites via artificial neural network-particle swarm optimization
title_sort modelling and optimization for methylene blue adsorption using graphene oxide/chitosan composites via artificial neural network-particle swarm optimization
publisher Elsevier Ltd
publishDate 2022
url http://eprints.utm.my/103082/
http://dx.doi.org/10.1016/j.mtchem.2022.100946
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