Modeling of Oxidative Coupling of Methane over Mn/Na2WO4/SiO2 Catalyst Using Artificial Neural Network

In this article, the effect of operating conditions, such as temperature, Gas Hourly Space Velocity (GHSV), CH4/O2 ratio and diluents gas (mol% N2) on ethylene production by Oxidative Coupling of Methane (OCM) in a fixed bed reactor at atmospheric pressure was studied over Mn/Na2WO4/SiO2 catalyst. B...

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Main Authors: Mohammad Reza Ehsani, Hamed Bateni, Ghazal Razi Parchikolaei
Format: Article
Language:English
Published: Iranian Institute of Research and Development in Chemical Industries (IRDCI)-ACECR 2013-09-01
Series:Iranian Journal of Chemistry & Chemical Engineering
Subjects:
Online Access:http://www.ijcce.ac.ir/article_5836_3c2c5a8829e8dfe422250e3990ca0b39.pdf
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spelling doaj-1df8ec2c0ce14f06aa9bed037884e5a52020-11-25T03:58:35ZengIranian Institute of Research and Development in Chemical Industries (IRDCI)-ACECRIranian Journal of Chemistry & Chemical Engineering 1021-99861021-99862013-09-013231071145836Modeling of Oxidative Coupling of Methane over Mn/Na2WO4/SiO2 Catalyst Using Artificial Neural NetworkMohammad Reza Ehsani0Hamed Bateni1Ghazal Razi Parchikolaei2Department of Chemical Engineering, Isfahan University of Technology, P.O. Box 84156-83111 Isfahan, I.R. IRANDepartment of Chemical Engineering, Isfahan University of Technology, P.O. Box 84156-83111 Isfahan, I.R. IRANDepartment of Chemical Engineering, Isfahan University of Technology, P.O. Box 84156-83111 Isfahan, I.R. IRANIn this article, the effect of operating conditions, such as temperature, Gas Hourly Space Velocity (GHSV), CH4/O2 ratio and diluents gas (mol% N2) on ethylene production by Oxidative Coupling of Methane (OCM) in a fixed bed reactor at atmospheric pressure was studied over Mn/Na2WO4/SiO2 catalyst. Based on the properties of neural networks, an artificial neural network was used for model development from experimental data. In order to prevent network complexity and effective data input to network, principal component analysis method was used and the numbers of output parameters were reduced from 4 to 2. A feed-forward back-propagation network was used for simulating the relations between process operating conditions and aspects of catalytic performance, which include conversion of methane, C2+ products selectivity, yield of C2+ and C2H4/C2H6 ratio. Levenberg– Marquardt method is presented to train the network. For first output, optimum network with 4-9-1 topology and for second output, optimum network with 4-6-1 topology was prepared.http://www.ijcce.ac.ir/article_5836_3c2c5a8829e8dfe422250e3990ca0b39.pdfoxidative coupling of methane (ocm)mn/na2wo4 /sio2 catalystprincipal componentsartificial neural network (ann)
collection DOAJ
language English
format Article
sources DOAJ
author Mohammad Reza Ehsani
Hamed Bateni
Ghazal Razi Parchikolaei
spellingShingle Mohammad Reza Ehsani
Hamed Bateni
Ghazal Razi Parchikolaei
Modeling of Oxidative Coupling of Methane over Mn/Na2WO4/SiO2 Catalyst Using Artificial Neural Network
Iranian Journal of Chemistry & Chemical Engineering
oxidative coupling of methane (ocm)
mn/na2wo4 /sio2 catalyst
principal components
artificial neural network (ann)
author_facet Mohammad Reza Ehsani
Hamed Bateni
Ghazal Razi Parchikolaei
author_sort Mohammad Reza Ehsani
title Modeling of Oxidative Coupling of Methane over Mn/Na2WO4/SiO2 Catalyst Using Artificial Neural Network
title_short Modeling of Oxidative Coupling of Methane over Mn/Na2WO4/SiO2 Catalyst Using Artificial Neural Network
title_full Modeling of Oxidative Coupling of Methane over Mn/Na2WO4/SiO2 Catalyst Using Artificial Neural Network
title_fullStr Modeling of Oxidative Coupling of Methane over Mn/Na2WO4/SiO2 Catalyst Using Artificial Neural Network
title_full_unstemmed Modeling of Oxidative Coupling of Methane over Mn/Na2WO4/SiO2 Catalyst Using Artificial Neural Network
title_sort modeling of oxidative coupling of methane over mn/na2wo4/sio2 catalyst using artificial neural network
publisher Iranian Institute of Research and Development in Chemical Industries (IRDCI)-ACECR
series Iranian Journal of Chemistry & Chemical Engineering
issn 1021-9986
1021-9986
publishDate 2013-09-01
description In this article, the effect of operating conditions, such as temperature, Gas Hourly Space Velocity (GHSV), CH4/O2 ratio and diluents gas (mol% N2) on ethylene production by Oxidative Coupling of Methane (OCM) in a fixed bed reactor at atmospheric pressure was studied over Mn/Na2WO4/SiO2 catalyst. Based on the properties of neural networks, an artificial neural network was used for model development from experimental data. In order to prevent network complexity and effective data input to network, principal component analysis method was used and the numbers of output parameters were reduced from 4 to 2. A feed-forward back-propagation network was used for simulating the relations between process operating conditions and aspects of catalytic performance, which include conversion of methane, C2+ products selectivity, yield of C2+ and C2H4/C2H6 ratio. Levenberg– Marquardt method is presented to train the network. For first output, optimum network with 4-9-1 topology and for second output, optimum network with 4-6-1 topology was prepared.
topic oxidative coupling of methane (ocm)
mn/na2wo4 /sio2 catalyst
principal components
artificial neural network (ann)
url http://www.ijcce.ac.ir/article_5836_3c2c5a8829e8dfe422250e3990ca0b39.pdf
work_keys_str_mv AT mohammadrezaehsani modelingofoxidativecouplingofmethaneovermnna2wo4sio2catalystusingartificialneuralnetwork
AT hamedbateni modelingofoxidativecouplingofmethaneovermnna2wo4sio2catalystusingartificialneuralnetwork
AT ghazalraziparchikolaei modelingofoxidativecouplingofmethaneovermnna2wo4sio2catalystusingartificialneuralnetwork
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