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Artificial neural network modeling of p-cresol photodegradation

BACKGROUND: The complexity of reactions and kinetic is the current problem of photodegradation processes. Recently, artificial neural networks have been widely used to solve the problems because of their reliable, robust, and salient characteristics in capturing the non-linear relationships between...

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Autores principales: Abdollahi, Yadollah, Zakaria, Azmi, Abbasiyannejad, Mina, Masoumi, Hamid Reza Fard, Moghaddam, Mansour Ghaffari, Matori, Khamirul Amin, Jahangirian, Hossein, Keshavarzi, Ashkan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3680209/
https://www.ncbi.nlm.nih.gov/pubmed/23731706
http://dx.doi.org/10.1186/1752-153X-7-96
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author Abdollahi, Yadollah
Zakaria, Azmi
Abbasiyannejad, Mina
Masoumi, Hamid Reza Fard
Moghaddam, Mansour Ghaffari
Matori, Khamirul Amin
Jahangirian, Hossein
Keshavarzi, Ashkan
author_facet Abdollahi, Yadollah
Zakaria, Azmi
Abbasiyannejad, Mina
Masoumi, Hamid Reza Fard
Moghaddam, Mansour Ghaffari
Matori, Khamirul Amin
Jahangirian, Hossein
Keshavarzi, Ashkan
author_sort Abdollahi, Yadollah
collection PubMed
description BACKGROUND: The complexity of reactions and kinetic is the current problem of photodegradation processes. Recently, artificial neural networks have been widely used to solve the problems because of their reliable, robust, and salient characteristics in capturing the non-linear relationships between variables in complex systems. In this study, an artificial neural network was applied for modeling p-cresol photodegradation. To optimize the network, the independent variables including irradiation time, pH, photocatalyst amount and concentration of p-cresol were used as the input parameters, while the photodegradation% was selected as output. The photodegradation% was obtained from the performance of the experimental design of the variables under UV irradiation. The network was trained by Quick propagation (QP) and the other three algorithms as a model. To determine the number of hidden layer nodes in the model, the root mean squared error of testing set was minimized. After minimizing the error, the topologies of the algorithms were compared by coefficient of determination and absolute average deviation. RESULTS: The comparison indicated that the Quick propagation algorithm had minimum root mean squared error, 1.3995, absolute average deviation, 3.0478, and maximum coefficient of determination, 0.9752, for the testing data set. The validation test results of the artificial neural network based on QP indicated that the root mean squared error was 4.11, absolute average deviation was 8.071 and the maximum coefficient of determination was 0.97. CONCLUSION: Artificial neural network based on Quick propagation algorithm with topology 4-10-1 gave the best performance in this study.
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spelling pubmed-36802092013-06-25 Artificial neural network modeling of p-cresol photodegradation Abdollahi, Yadollah Zakaria, Azmi Abbasiyannejad, Mina Masoumi, Hamid Reza Fard Moghaddam, Mansour Ghaffari Matori, Khamirul Amin Jahangirian, Hossein Keshavarzi, Ashkan Chem Cent J Research Article BACKGROUND: The complexity of reactions and kinetic is the current problem of photodegradation processes. Recently, artificial neural networks have been widely used to solve the problems because of their reliable, robust, and salient characteristics in capturing the non-linear relationships between variables in complex systems. In this study, an artificial neural network was applied for modeling p-cresol photodegradation. To optimize the network, the independent variables including irradiation time, pH, photocatalyst amount and concentration of p-cresol were used as the input parameters, while the photodegradation% was selected as output. The photodegradation% was obtained from the performance of the experimental design of the variables under UV irradiation. The network was trained by Quick propagation (QP) and the other three algorithms as a model. To determine the number of hidden layer nodes in the model, the root mean squared error of testing set was minimized. After minimizing the error, the topologies of the algorithms were compared by coefficient of determination and absolute average deviation. RESULTS: The comparison indicated that the Quick propagation algorithm had minimum root mean squared error, 1.3995, absolute average deviation, 3.0478, and maximum coefficient of determination, 0.9752, for the testing data set. The validation test results of the artificial neural network based on QP indicated that the root mean squared error was 4.11, absolute average deviation was 8.071 and the maximum coefficient of determination was 0.97. CONCLUSION: Artificial neural network based on Quick propagation algorithm with topology 4-10-1 gave the best performance in this study. BioMed Central 2013-06-03 /pmc/articles/PMC3680209/ /pubmed/23731706 http://dx.doi.org/10.1186/1752-153X-7-96 Text en Copyright © 2013 Abdollahi et al.; licensee Chemistry Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Abdollahi, Yadollah
Zakaria, Azmi
Abbasiyannejad, Mina
Masoumi, Hamid Reza Fard
Moghaddam, Mansour Ghaffari
Matori, Khamirul Amin
Jahangirian, Hossein
Keshavarzi, Ashkan
Artificial neural network modeling of p-cresol photodegradation
title Artificial neural network modeling of p-cresol photodegradation
title_full Artificial neural network modeling of p-cresol photodegradation
title_fullStr Artificial neural network modeling of p-cresol photodegradation
title_full_unstemmed Artificial neural network modeling of p-cresol photodegradation
title_short Artificial neural network modeling of p-cresol photodegradation
title_sort artificial neural network modeling of p-cresol photodegradation
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3680209/
https://www.ncbi.nlm.nih.gov/pubmed/23731706
http://dx.doi.org/10.1186/1752-153X-7-96
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