Optimization of Cerbera manghas Biodiesel Production Using Artificial Neural Networks Integrated with Ant Colony Optimization

Optimizing the process parameters of biodiesel production is the key to maximizing biodiesel yields. In this study, artificial neural network models integrated with ant colony optimization were developed to optimize the parameters of the two-step Cerbera manghas biodiesel production process: (1) est...

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Main Authors: Silitonga, Arridina Susan, Mahlia, Teuku Meurah Indra, Shamsuddin, Abd Halim, Ong, Hwai Chyuan, Milano, Jassinnee, Kusumo, Fitranto, Sebayang, Abdi Hanra, Dharma, Surya, Ibrahim, Husin, Husin, Hazlina, Mofijur, M., Rahman, S.M. Ashrafur
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Published: MDPI 2019
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Online Access:http://eprints.um.edu.my/23432/
https://doi.org/10.3390/en12203811
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Institution: Universiti Malaya
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spelling my.um.eprints.234322020-01-14T05:05:18Z http://eprints.um.edu.my/23432/ Optimization of Cerbera manghas Biodiesel Production Using Artificial Neural Networks Integrated with Ant Colony Optimization Silitonga, Arridina Susan Mahlia, Teuku Meurah Indra Shamsuddin, Abd Halim Ong, Hwai Chyuan Milano, Jassinnee Kusumo, Fitranto Sebayang, Abdi Hanra Dharma, Surya Ibrahim, Husin Husin, Hazlina Mofijur, M. Rahman, S.M. Ashrafur TJ Mechanical engineering and machinery Optimizing the process parameters of biodiesel production is the key to maximizing biodiesel yields. In this study, artificial neural network models integrated with ant colony optimization were developed to optimize the parameters of the two-step Cerbera manghas biodiesel production process: (1) esterification and (2) transesterification. The parameters of esterification and transesterification processes were optimized to minimize the acid value and maximize the C. manghas biodiesel yield, respectively. There was excellent agreement between the average experimental values and those predicted by the artificial neural network models, indicating their reliability. These models will be useful to predict the optimum process parameters, reducing the trial and error of conventional experimentation. The kinetic study was conducted to understand the mechanism of the transesterification process and, lastly, the model could measure the physicochemical properties of the C. manghas biodiesel. © 2019 by the authors. MDPI 2019 Article PeerReviewed Silitonga, Arridina Susan and Mahlia, Teuku Meurah Indra and Shamsuddin, Abd Halim and Ong, Hwai Chyuan and Milano, Jassinnee and Kusumo, Fitranto and Sebayang, Abdi Hanra and Dharma, Surya and Ibrahim, Husin and Husin, Hazlina and Mofijur, M. and Rahman, S.M. Ashrafur (2019) Optimization of Cerbera manghas Biodiesel Production Using Artificial Neural Networks Integrated with Ant Colony Optimization. Energies, 12 (20). p. 3811. ISSN 1996-1073 https://doi.org/10.3390/en12203811 doi:10.3390/en12203811
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic TJ Mechanical engineering and machinery
spellingShingle TJ Mechanical engineering and machinery
Silitonga, Arridina Susan
Mahlia, Teuku Meurah Indra
Shamsuddin, Abd Halim
Ong, Hwai Chyuan
Milano, Jassinnee
Kusumo, Fitranto
Sebayang, Abdi Hanra
Dharma, Surya
Ibrahim, Husin
Husin, Hazlina
Mofijur, M.
Rahman, S.M. Ashrafur
Optimization of Cerbera manghas Biodiesel Production Using Artificial Neural Networks Integrated with Ant Colony Optimization
description Optimizing the process parameters of biodiesel production is the key to maximizing biodiesel yields. In this study, artificial neural network models integrated with ant colony optimization were developed to optimize the parameters of the two-step Cerbera manghas biodiesel production process: (1) esterification and (2) transesterification. The parameters of esterification and transesterification processes were optimized to minimize the acid value and maximize the C. manghas biodiesel yield, respectively. There was excellent agreement between the average experimental values and those predicted by the artificial neural network models, indicating their reliability. These models will be useful to predict the optimum process parameters, reducing the trial and error of conventional experimentation. The kinetic study was conducted to understand the mechanism of the transesterification process and, lastly, the model could measure the physicochemical properties of the C. manghas biodiesel. © 2019 by the authors.
format Article
author Silitonga, Arridina Susan
Mahlia, Teuku Meurah Indra
Shamsuddin, Abd Halim
Ong, Hwai Chyuan
Milano, Jassinnee
Kusumo, Fitranto
Sebayang, Abdi Hanra
Dharma, Surya
Ibrahim, Husin
Husin, Hazlina
Mofijur, M.
Rahman, S.M. Ashrafur
author_facet Silitonga, Arridina Susan
Mahlia, Teuku Meurah Indra
Shamsuddin, Abd Halim
Ong, Hwai Chyuan
Milano, Jassinnee
Kusumo, Fitranto
Sebayang, Abdi Hanra
Dharma, Surya
Ibrahim, Husin
Husin, Hazlina
Mofijur, M.
Rahman, S.M. Ashrafur
author_sort Silitonga, Arridina Susan
title Optimization of Cerbera manghas Biodiesel Production Using Artificial Neural Networks Integrated with Ant Colony Optimization
title_short Optimization of Cerbera manghas Biodiesel Production Using Artificial Neural Networks Integrated with Ant Colony Optimization
title_full Optimization of Cerbera manghas Biodiesel Production Using Artificial Neural Networks Integrated with Ant Colony Optimization
title_fullStr Optimization of Cerbera manghas Biodiesel Production Using Artificial Neural Networks Integrated with Ant Colony Optimization
title_full_unstemmed Optimization of Cerbera manghas Biodiesel Production Using Artificial Neural Networks Integrated with Ant Colony Optimization
title_sort optimization of cerbera manghas biodiesel production using artificial neural networks integrated with ant colony optimization
publisher MDPI
publishDate 2019
url http://eprints.um.edu.my/23432/
https://doi.org/10.3390/en12203811
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