A Novel Approach for Prediction of Industrial Catalyst Deactivation Using Soft Sensor Modeling

Soft sensors are used for fault detection and prediction of the process variables in chemical processing units, for which the online measurement is difficult. The present study addresses soft sensor design and identification for deactivation of zeolite catalyst in an industrial-scale fixed bed react...

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Main Authors: Hamed Gharehbaghi, Jafar Sadeghi
Format: Article
Language:English
Published: MDPI AG 2016-06-01
Series:Catalysts
Subjects:
Online Access:http://www.mdpi.com/2073-4344/6/7/93
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spelling doaj-4e01b026ee354254b8e975171d7f17fa2020-11-25T01:35:50ZengMDPI AGCatalysts2073-43442016-06-01679310.3390/catal6070093catal6070093A Novel Approach for Prediction of Industrial Catalyst Deactivation Using Soft Sensor ModelingHamed Gharehbaghi0Jafar Sadeghi1Department of Chemical Engineering, University of Sistan and Baluchestan, P.O. Box 98164-161, Zahedan, IranDepartment of Chemical Engineering, University of Sistan and Baluchestan, P.O. Box 98164-161, Zahedan, IranSoft sensors are used for fault detection and prediction of the process variables in chemical processing units, for which the online measurement is difficult. The present study addresses soft sensor design and identification for deactivation of zeolite catalyst in an industrial-scale fixed bed reactor based on the process data. The two main reactions are disproportionation (DP) and transalkylation (TA), which change toluene and C9 aromatics into xylenes and benzene. Two models are considered based on the mass conservation around the reactor. The model parameters are estimated by data-based modeling (DBM) philosophy and state dependent parameter (SDP) method. In the SDP method, the parameters are assumed to be a function of the system states. The results show that the catalyst activity during the period under study has approximately a monotonic trend. Identification of the system clearly shows that the xylene concentration has a determining role in the conversion of reactions. The activation energies for both DP and TA reactions are found to be 43.8 and 18 kJ/mol, respectively. The model prediction is in good agreement with the observed industrial data.http://www.mdpi.com/2073-4344/6/7/93soft sensorcatalyst deactivationdata-based modelingstate-dependent-parameter
collection DOAJ
language English
format Article
sources DOAJ
author Hamed Gharehbaghi
Jafar Sadeghi
spellingShingle Hamed Gharehbaghi
Jafar Sadeghi
A Novel Approach for Prediction of Industrial Catalyst Deactivation Using Soft Sensor Modeling
Catalysts
soft sensor
catalyst deactivation
data-based modeling
state-dependent-parameter
author_facet Hamed Gharehbaghi
Jafar Sadeghi
author_sort Hamed Gharehbaghi
title A Novel Approach for Prediction of Industrial Catalyst Deactivation Using Soft Sensor Modeling
title_short A Novel Approach for Prediction of Industrial Catalyst Deactivation Using Soft Sensor Modeling
title_full A Novel Approach for Prediction of Industrial Catalyst Deactivation Using Soft Sensor Modeling
title_fullStr A Novel Approach for Prediction of Industrial Catalyst Deactivation Using Soft Sensor Modeling
title_full_unstemmed A Novel Approach for Prediction of Industrial Catalyst Deactivation Using Soft Sensor Modeling
title_sort novel approach for prediction of industrial catalyst deactivation using soft sensor modeling
publisher MDPI AG
series Catalysts
issn 2073-4344
publishDate 2016-06-01
description Soft sensors are used for fault detection and prediction of the process variables in chemical processing units, for which the online measurement is difficult. The present study addresses soft sensor design and identification for deactivation of zeolite catalyst in an industrial-scale fixed bed reactor based on the process data. The two main reactions are disproportionation (DP) and transalkylation (TA), which change toluene and C9 aromatics into xylenes and benzene. Two models are considered based on the mass conservation around the reactor. The model parameters are estimated by data-based modeling (DBM) philosophy and state dependent parameter (SDP) method. In the SDP method, the parameters are assumed to be a function of the system states. The results show that the catalyst activity during the period under study has approximately a monotonic trend. Identification of the system clearly shows that the xylene concentration has a determining role in the conversion of reactions. The activation energies for both DP and TA reactions are found to be 43.8 and 18 kJ/mol, respectively. The model prediction is in good agreement with the observed industrial data.
topic soft sensor
catalyst deactivation
data-based modeling
state-dependent-parameter
url http://www.mdpi.com/2073-4344/6/7/93
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