Development of an artificial neural network utilizing particle swarm optimization for modeling the spray drying of coconut milk
Spray drying techniques are one of the methods to preserve and extend the shelf-life of coconut milk. The objective of this research was to create a particle swarm optimization-enhanced artificial neural network (PSO-ANN) that could predict the coconut milk spray drying process. The parameters for P...
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Multidisciplinary Digital Publishing Institute
2021
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my.upm.eprints.966882022-12-01T08:29:31Z http://psasir.upm.edu.my/id/eprint/96688/ Development of an artificial neural network utilizing particle swarm optimization for modeling the spray drying of coconut milk Lee, Jesse Kar Ming Anuar, Mohd Shamsul Mohd Firdaus How, Muhammad Syahmeer How Mohd Noor, Samsul Bahari Abdullah, Zalizawati Taip, Farah Saleena Spray drying techniques are one of the methods to preserve and extend the shelf-life of coconut milk. The objective of this research was to create a particle swarm optimization-enhanced artificial neural network (PSO-ANN) that could predict the coconut milk spray drying process. The parameters for PSO tuning were selected as the number of particles and acceleration constant, respectively, for both global and personal best using a 2k factorial design. The optimal PSO settings were recorded as global best, C1 = 4.0; personal best, C2 = 0; and number of particles = 100. When comparing different types of spray drying models, PSO-ANN had an MSE value of 0.077, GA-ANN had an MSE of 0.033, while ANN had an MSE of 0.082. Sensitivity analysis was conducted on all three models to evaluate the significance level of each parameter on the model, and it was discovered that inlet temperature had the most significant influence on the model performance. In conclusion, the PSO-ANN was found to be more effective than ANN but less effective than GA-ANN in predicting the quality of coconut milk powder. Multidisciplinary Digital Publishing Institute 2021 Article PeerReviewed text en http://psasir.upm.edu.my/id/eprint/96688/1/ABSTRACT.pdf Lee, Jesse Kar Ming and Anuar, Mohd Shamsul and Mohd Firdaus How, Muhammad Syahmeer How and Mohd Noor, Samsul Bahari and Abdullah, Zalizawati and Taip, Farah Saleena (2021) Development of an artificial neural network utilizing particle swarm optimization for modeling the spray drying of coconut milk. Foods, 10 (11). art. no. 2708. pp. 1-14. ISSN 2304-8158 https://www.mdpi.com/2304-8158/10/11/2708 10.3390/foods10112708 |
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Spray drying techniques are one of the methods to preserve and extend the shelf-life of coconut milk. The objective of this research was to create a particle swarm optimization-enhanced artificial neural network (PSO-ANN) that could predict the coconut milk spray drying process. The parameters for PSO tuning were selected as the number of particles and acceleration constant, respectively, for both global and personal best using a 2k factorial design. The optimal PSO settings were recorded as global best, C1 = 4.0; personal best, C2 = 0; and number of particles = 100. When comparing different types of spray drying models, PSO-ANN had an MSE value of 0.077, GA-ANN had an MSE of 0.033, while ANN had an MSE of 0.082. Sensitivity analysis was conducted on all three models to evaluate the significance level of each parameter on the model, and it was discovered that inlet temperature had the most significant influence on the model performance. In conclusion, the PSO-ANN was found to be more effective than ANN but less effective than GA-ANN in predicting the quality of coconut milk powder. |
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Lee, Jesse Kar Ming Anuar, Mohd Shamsul Mohd Firdaus How, Muhammad Syahmeer How Mohd Noor, Samsul Bahari Abdullah, Zalizawati Taip, Farah Saleena |
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Lee, Jesse Kar Ming Anuar, Mohd Shamsul Mohd Firdaus How, Muhammad Syahmeer How Mohd Noor, Samsul Bahari Abdullah, Zalizawati Taip, Farah Saleena Development of an artificial neural network utilizing particle swarm optimization for modeling the spray drying of coconut milk |
author_facet |
Lee, Jesse Kar Ming Anuar, Mohd Shamsul Mohd Firdaus How, Muhammad Syahmeer How Mohd Noor, Samsul Bahari Abdullah, Zalizawati Taip, Farah Saleena |
author_sort |
Lee, Jesse Kar Ming |
title |
Development of an artificial neural network utilizing particle swarm optimization for modeling the spray drying of coconut milk |
title_short |
Development of an artificial neural network utilizing particle swarm optimization for modeling the spray drying of coconut milk |
title_full |
Development of an artificial neural network utilizing particle swarm optimization for modeling the spray drying of coconut milk |
title_fullStr |
Development of an artificial neural network utilizing particle swarm optimization for modeling the spray drying of coconut milk |
title_full_unstemmed |
Development of an artificial neural network utilizing particle swarm optimization for modeling the spray drying of coconut milk |
title_sort |
development of an artificial neural network utilizing particle swarm optimization for modeling the spray drying of coconut milk |
publisher |
Multidisciplinary Digital Publishing Institute |
publishDate |
2021 |
url |
http://psasir.upm.edu.my/id/eprint/96688/1/ABSTRACT.pdf http://psasir.upm.edu.my/id/eprint/96688/ https://www.mdpi.com/2304-8158/10/11/2708 |
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