Modeling and Experimental Prediction of Wastewater Treatment Efficiency in Oil Refineries Using Activated Sludge Process

In this study, activated sludge process for wastewater treatment in a refinery was investigated. For such purpose, a laboratory scale rig was built. The effect of several parameters such as temperature, residence time, effect of Leca (filling-in percentage of the reactor by Leca) and UV radiation on...

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Main Authors: Yasser Vasseghian, Mojtaba Ahmadi, Fazel Dolati, Aliakbar Heydari
Format: Article
Language:English
Published: University of Tehran 2014-06-01
Series:Journal of Chemical and Petroleum Engineering
Subjects:
Online Access:https://jchpe.ut.ac.ir/article_5587.html
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spelling doaj-258c6cc278e74a8c8bf4ee16d17d0fe12020-11-25T02:07:14ZengUniversity of TehranJournal of Chemical and Petroleum Engineering2423-673X2423-67212014-06-01481697910.22059/JCHPE.2014.5587Modeling and Experimental Prediction of Wastewater Treatment Efficiency in Oil Refineries Using Activated Sludge ProcessYasser Vasseghian0 Mojtaba Ahmadi1Fazel Dolati2Aliakbar Heydari3Chemical Engineering Department, Faculty of Engineering, Razi University, Kermanshah, IranChemical Engineering Department, Faculty of Engineering, Razi University, Kermanshah, IranDepartment of Statistics, Faculty of Mathematical Science, University of Tabriz, Tabriz, IranDepartment of Statistics, Faculty of Mathematical Science, University of Tabriz, Tabriz, IranIn this study, activated sludge process for wastewater treatment in a refinery was investigated. For such purpose, a laboratory scale rig was built. The effect of several parameters such as temperature, residence time, effect of Leca (filling-in percentage of the reactor by Leca) and UV radiation on COD removal efficiency were experimentally examined. Maximum COD removal efficiency was obtained to be 94% after final testing. An artificial neural network (ANN) was applied to evaluate the effect of operational parameters on the efficiency as the next step. A two-layered ANN provided the best results, using Levenberg–Marquardt back propagation learning algorithm (trainLM) in which tansig and purelin used as transfer functions in the hidden and output layers. Furthermore, the application of three neurons in the hidden layer caused to gratify network training while overfitting was hindered. ANN model, provided a good estimation for correlation coefficient and the mean square error (MSE) which calculated 0.997 and 0.5 × 10-3 respectively.https://jchpe.ut.ac.ir/article_5587.htmlWastewater TreatmentCOD removalActivated SludgeArtificial Neural Network
collection DOAJ
language English
format Article
sources DOAJ
author Yasser Vasseghian
Mojtaba Ahmadi
Fazel Dolati
Aliakbar Heydari
spellingShingle Yasser Vasseghian
Mojtaba Ahmadi
Fazel Dolati
Aliakbar Heydari
Modeling and Experimental Prediction of Wastewater Treatment Efficiency in Oil Refineries Using Activated Sludge Process
Journal of Chemical and Petroleum Engineering
Wastewater Treatment
COD removal
Activated Sludge
Artificial Neural Network
author_facet Yasser Vasseghian
Mojtaba Ahmadi
Fazel Dolati
Aliakbar Heydari
author_sort Yasser Vasseghian
title Modeling and Experimental Prediction of Wastewater Treatment Efficiency in Oil Refineries Using Activated Sludge Process
title_short Modeling and Experimental Prediction of Wastewater Treatment Efficiency in Oil Refineries Using Activated Sludge Process
title_full Modeling and Experimental Prediction of Wastewater Treatment Efficiency in Oil Refineries Using Activated Sludge Process
title_fullStr Modeling and Experimental Prediction of Wastewater Treatment Efficiency in Oil Refineries Using Activated Sludge Process
title_full_unstemmed Modeling and Experimental Prediction of Wastewater Treatment Efficiency in Oil Refineries Using Activated Sludge Process
title_sort modeling and experimental prediction of wastewater treatment efficiency in oil refineries using activated sludge process
publisher University of Tehran
series Journal of Chemical and Petroleum Engineering
issn 2423-673X
2423-6721
publishDate 2014-06-01
description In this study, activated sludge process for wastewater treatment in a refinery was investigated. For such purpose, a laboratory scale rig was built. The effect of several parameters such as temperature, residence time, effect of Leca (filling-in percentage of the reactor by Leca) and UV radiation on COD removal efficiency were experimentally examined. Maximum COD removal efficiency was obtained to be 94% after final testing. An artificial neural network (ANN) was applied to evaluate the effect of operational parameters on the efficiency as the next step. A two-layered ANN provided the best results, using Levenberg–Marquardt back propagation learning algorithm (trainLM) in which tansig and purelin used as transfer functions in the hidden and output layers. Furthermore, the application of three neurons in the hidden layer caused to gratify network training while overfitting was hindered. ANN model, provided a good estimation for correlation coefficient and the mean square error (MSE) which calculated 0.997 and 0.5 × 10-3 respectively.
topic Wastewater Treatment
COD removal
Activated Sludge
Artificial Neural Network
url https://jchpe.ut.ac.ir/article_5587.html
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AT mojtabaahmadi modelingandexperimentalpredictionofwastewatertreatmentefficiencyinoilrefineriesusingactivatedsludgeprocess
AT fazeldolati modelingandexperimentalpredictionofwastewatertreatmentefficiencyinoilrefineriesusingactivatedsludgeprocess
AT aliakbarheydari modelingandexperimentalpredictionofwastewatertreatmentefficiencyinoilrefineriesusingactivatedsludgeprocess
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