An expert model for estimation of distillation sieve tray efficiency based on artificial neural network approach

Knowledge of the efficiency of sieve tray columns as most common distillation equipments is necessary for the interpretation of separation and purification processes performance. In this study a new method based on Artificial Neural Network (ANN) for estimation of sieve tray efficiency has been prop...

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Main Authors: Zahedi, Gholamreza, Parvizian, Fahime, Rahimi, Mahmood Reza
Format: Article
Published: Asian Network for Scientific Information 2010
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Online Access:http://eprints.utm.my/id/eprint/22850/
http://dx.doi.org/10.3923/jas.2010.1076.1082
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spelling my.utm.228502018-03-22T10:28:45Z http://eprints.utm.my/id/eprint/22850/ An expert model for estimation of distillation sieve tray efficiency based on artificial neural network approach Zahedi, Gholamreza Parvizian, Fahime Rahimi, Mahmood Reza TP Chemical technology Knowledge of the efficiency of sieve tray columns as most common distillation equipments is necessary for the interpretation of separation and purification processes performance. In this study a new method based on Artificial Neural Network (ANN) for estimation of sieve tray efficiency has been proposed. In this case to develop data base several experimental data were collected from literatures. The network inputs are liquid and vapor density, liquid and vapor viscosity, liquid and vapor diffusivity, surface tension, slope of the equilibrium curve, hole diameter, weir height, weir length, liquid and gas flux, ratio of hole area to active area of the tray while the output is point efficiency. In order to find the best efficiency estimator of sieve tray, different training schemes for the back-propagation learning algorithm, such as; Scaled Conjugate Gradient (SCG), Levenberg-Marquardt (LM), Gradient Descent with Momentum (GDM), variable learning rate BP (GDA) and Resilient BP (RP) methods were examined. Finally among those trained networks, the SCG algorithm with ten neurons in the hidden layer shows the best suitable algorithm with the minimum average absolute relative error 0.029817. Finally, the capability of ANN and two recently published empirical models were compared. This ANN model reduced the prediction error by 64.03 and 92.64% relative to Garcia and Fair and Chan and Fair models, respectively. This is further proof that the proposed procedure can build a useful and robust model. Asian Network for Scientific Information 2010 Article PeerReviewed Zahedi, Gholamreza and Parvizian, Fahime and Rahimi, Mahmood Reza (2010) An expert model for estimation of distillation sieve tray efficiency based on artificial neural network approach. Journal of Applied Sciences, 10 (12). 1076 - 1082. ISSN 1812-5654 http://dx.doi.org/10.3923/jas.2010.1076.1082 DOI: 10.3923/jas.2010.1076.1082
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 TP Chemical technology
spellingShingle TP Chemical technology
Zahedi, Gholamreza
Parvizian, Fahime
Rahimi, Mahmood Reza
An expert model for estimation of distillation sieve tray efficiency based on artificial neural network approach
description Knowledge of the efficiency of sieve tray columns as most common distillation equipments is necessary for the interpretation of separation and purification processes performance. In this study a new method based on Artificial Neural Network (ANN) for estimation of sieve tray efficiency has been proposed. In this case to develop data base several experimental data were collected from literatures. The network inputs are liquid and vapor density, liquid and vapor viscosity, liquid and vapor diffusivity, surface tension, slope of the equilibrium curve, hole diameter, weir height, weir length, liquid and gas flux, ratio of hole area to active area of the tray while the output is point efficiency. In order to find the best efficiency estimator of sieve tray, different training schemes for the back-propagation learning algorithm, such as; Scaled Conjugate Gradient (SCG), Levenberg-Marquardt (LM), Gradient Descent with Momentum (GDM), variable learning rate BP (GDA) and Resilient BP (RP) methods were examined. Finally among those trained networks, the SCG algorithm with ten neurons in the hidden layer shows the best suitable algorithm with the minimum average absolute relative error 0.029817. Finally, the capability of ANN and two recently published empirical models were compared. This ANN model reduced the prediction error by 64.03 and 92.64% relative to Garcia and Fair and Chan and Fair models, respectively. This is further proof that the proposed procedure can build a useful and robust model.
format Article
author Zahedi, Gholamreza
Parvizian, Fahime
Rahimi, Mahmood Reza
author_facet Zahedi, Gholamreza
Parvizian, Fahime
Rahimi, Mahmood Reza
author_sort Zahedi, Gholamreza
title An expert model for estimation of distillation sieve tray efficiency based on artificial neural network approach
title_short An expert model for estimation of distillation sieve tray efficiency based on artificial neural network approach
title_full An expert model for estimation of distillation sieve tray efficiency based on artificial neural network approach
title_fullStr An expert model for estimation of distillation sieve tray efficiency based on artificial neural network approach
title_full_unstemmed An expert model for estimation of distillation sieve tray efficiency based on artificial neural network approach
title_sort expert model for estimation of distillation sieve tray efficiency based on artificial neural network approach
publisher Asian Network for Scientific Information
publishDate 2010
url http://eprints.utm.my/id/eprint/22850/
http://dx.doi.org/10.3923/jas.2010.1076.1082
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score 13.209306