Modeling the removal of Sunfix Red S3B from aqueous solution by electrocoagulation process using artificial neural network

This study presents an application of artificial neural networks (ANNs) to predict the dye removal efficiency (color and chemical oxygen demand value) of Electrocoagulation process from Sunfix Red S3B aqueous solution. The Bayesian regulation algorithm was applied to train the networks with...

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Main Author: Manh Ha Bui
Format: Article
Language:English
Published: Serbian Chemical Society 2016-01-01
Series:Journal of the Serbian Chemical Society
Subjects:
Online Access:http://www.doiserbia.nb.rs/img/doi/0352-5139/2016/0352-51391600032M.pdf
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spelling doaj-37c10a977c404b0885ccedd14508dc462020-11-24T21:12:28ZengSerbian Chemical Society Journal of the Serbian Chemical Society0352-51391820-74212016-01-0181895997010.2298/JSC160108032M0352-51391600032MModeling the removal of Sunfix Red S3B from aqueous solution by electrocoagulation process using artificial neural networkManh Ha Bui0Sai Gon university, Department of Environmental Sciences, Ho Chi Minh, VietnamThis study presents an application of artificial neural networks (ANNs) to predict the dye removal efficiency (color and chemical oxygen demand value) of Electrocoagulation process from Sunfix Red S3B aqueous solution. The Bayesian regulation algorithm was applied to train the networks with experimental data including five factors: pH, current density, sulphate concentration, initial dye concentration (IDC), and electrolysis time. The predicting performance of the ANN models was validated through the low root mean square error value (9.844 %), mean absolute percentage error (13.776 %) and the high determination coefficient value (0.836). Garson, Connection weight method and neural interpretation diagram were also used to study the influence of input variables on dye removal efficiency. For decolorization, the most effective inputs are determined as current density, electrolysis time and initial pH, while COD removal is found to be strongly affected by initial dye concentration and sulphate concentration. Through these steps, we demonstrated ANN’s robustness in modeling and analysis of electrocoagulation process.http://www.doiserbia.nb.rs/img/doi/0352-5139/2016/0352-51391600032M.pdfcolor removalGarson’s algorithmsensitivity analysistextile wastewater
collection DOAJ
language English
format Article
sources DOAJ
author Manh Ha Bui
spellingShingle Manh Ha Bui
Modeling the removal of Sunfix Red S3B from aqueous solution by electrocoagulation process using artificial neural network
Journal of the Serbian Chemical Society
color removal
Garson’s algorithm
sensitivity analysis
textile wastewater
author_facet Manh Ha Bui
author_sort Manh Ha Bui
title Modeling the removal of Sunfix Red S3B from aqueous solution by electrocoagulation process using artificial neural network
title_short Modeling the removal of Sunfix Red S3B from aqueous solution by electrocoagulation process using artificial neural network
title_full Modeling the removal of Sunfix Red S3B from aqueous solution by electrocoagulation process using artificial neural network
title_fullStr Modeling the removal of Sunfix Red S3B from aqueous solution by electrocoagulation process using artificial neural network
title_full_unstemmed Modeling the removal of Sunfix Red S3B from aqueous solution by electrocoagulation process using artificial neural network
title_sort modeling the removal of sunfix red s3b from aqueous solution by electrocoagulation process using artificial neural network
publisher Serbian Chemical Society
series Journal of the Serbian Chemical Society
issn 0352-5139
1820-7421
publishDate 2016-01-01
description This study presents an application of artificial neural networks (ANNs) to predict the dye removal efficiency (color and chemical oxygen demand value) of Electrocoagulation process from Sunfix Red S3B aqueous solution. The Bayesian regulation algorithm was applied to train the networks with experimental data including five factors: pH, current density, sulphate concentration, initial dye concentration (IDC), and electrolysis time. The predicting performance of the ANN models was validated through the low root mean square error value (9.844 %), mean absolute percentage error (13.776 %) and the high determination coefficient value (0.836). Garson, Connection weight method and neural interpretation diagram were also used to study the influence of input variables on dye removal efficiency. For decolorization, the most effective inputs are determined as current density, electrolysis time and initial pH, while COD removal is found to be strongly affected by initial dye concentration and sulphate concentration. Through these steps, we demonstrated ANN’s robustness in modeling and analysis of electrocoagulation process.
topic color removal
Garson’s algorithm
sensitivity analysis
textile wastewater
url http://www.doiserbia.nb.rs/img/doi/0352-5139/2016/0352-51391600032M.pdf
work_keys_str_mv AT manhhabui modelingtheremovalofsunfixreds3bfromaqueoussolutionbyelectrocoagulationprocessusingartificialneuralnetwork
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