Repository of Research and Investigative Information

Repository of Research and Investigative Information

Ilam University of Medical Sciences

Electro-Oxidation Method Applied for Activated Sludge Treatment: Experiment and Simulation Based on Supervised Machine Learning Methods

Wed Dec 18 12:09:02 2024

(2014) Electro-Oxidation Method Applied for Activated Sludge Treatment: Experiment and Simulation Based on Supervised Machine Learning Methods. Industrial & Engineering Chemistry Research. pp. 4902-4912. ISSN 0888-5885

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Abstract

In the present research, an electro-oxidation method was applied to decrease the organic compounds and remove the available micro-organisms in activated sludge of the sewage. Within this method, low cost electrodes were used, including stainless steel, graphite, and Pb/PbO2, and the operating parameters (pH, current density, and operating time) were experimentally optimized. In order to determine sludge stabilization (removal of organic matters and microorganisms), the decrease of parameters like chemical oxygen demand, the increase of electroconductivity and the total dissolved solids, total coli form, and fecal coli form were investigated. Two machine learning techniques (artificial neural networks and support vector machines) were applied comparatively for prediction of the process efficiency. Accurate results were obtained by simulation, in agreement with experimental data.

Item Type: Article
Creators:
CreatorsEmail
Curteanu, S.UNSPECIFIED
Godini, K.UNSPECIFIED
Piuleac, C. G.UNSPECIFIED
Azarian, G.UNSPECIFIED
Rahman, A. R.UNSPECIFIED
Butnariu, C.UNSPECIFIED
Keywords: waste-water-treatment artificial neural-networks support vector machine electrochemical degradation electrocoagulation process genetic algorithms electro-reduction sewage-sludge oxidation system Engineering
Divisions:
Page Range: pp. 4902-4912
Journal or Publication Title: Industrial & Engineering Chemistry Research
Journal Index: ISI
Volume: 53
Number: 12
Identification Number: https://doi.org/10.1021/ie500248q
ISSN: 0888-5885
Depositing User: مهندس مهدی شریفی
URI: http://eprints.medilam.ac.ir/id/eprint/668

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