Application of Artificial Neural Network in the Baking Process of Salmon

The global production of farmed Atlantic salmon amounts to over 2 million tons per year. Consumed all over the world, salmon is not only delicious but also nutritious. This paper deals with the relationship between moisture content, low-field nuclear magnetic resonance (LF-NMR), scanning electron mi...

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Main Authors: Pengfei Jiang, Kaiyue Zhu, Shan Shang, Wengang Jin, Wanying Yu, Shuang Li, Shen Wang, Xiuping Dong
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Journal of Food Quality
Online Access:http://dx.doi.org/10.1155/2022/3226892
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author Pengfei Jiang
Kaiyue Zhu
Shan Shang
Wengang Jin
Wanying Yu
Shuang Li
Shen Wang
Xiuping Dong
author_facet Pengfei Jiang
Kaiyue Zhu
Shan Shang
Wengang Jin
Wanying Yu
Shuang Li
Shen Wang
Xiuping Dong
author_sort Pengfei Jiang
collection DOAJ
description The global production of farmed Atlantic salmon amounts to over 2 million tons per year. Consumed all over the world, salmon is not only delicious but also nutritious. This paper deals with the relationship between moisture content, low-field nuclear magnetic resonance (LF-NMR), scanning electron microscope (SEM), and sensory evaluation in the baking process of salmon. An artificial neural network (ANN) model has been established to simulate the change of moisture content and energy consumed in the baking process. Through the study of LF-NMR, SEM, and sensory evaluation, it was found that the change of sensory indexes was consistent with the results observed by LF-NMR and SEM. With the increase of temperature, muscle fibers contracted, the interstices increased, the rate of water loss increased, and the sensory score decreased. Initial moisture content, baking time, baking temperature, baking humidity, and baking air velocity were employed as the baking control parameters for the ANN. ANN can be used to determine the moisture content and energy consumed of baking salmon. The best network topology occurred with 5 input layer neurons, 17 hidden layer neurons, and 2 output layer neurons, and the MSE was 0.00153, and Rall was 0.99661. According to the experiment, it was demonstrated that the ANN is a reliable software-based method.
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id doaj-art-49ce67330a7149828c810bf0eff21fa0
institution Kabale University
issn 1745-4557
language English
publishDate 2022-01-01
publisher Wiley
record_format Article
series Journal of Food Quality
spelling doaj-art-49ce67330a7149828c810bf0eff21fa02025-02-03T01:10:36ZengWileyJournal of Food Quality1745-45572022-01-01202210.1155/2022/3226892Application of Artificial Neural Network in the Baking Process of SalmonPengfei Jiang0Kaiyue Zhu1Shan Shang2Wengang Jin3Wanying Yu4Shuang Li5Shen Wang6Xiuping Dong7School of Food Science and TechnologySchool of Food Science and TechnologySchool of Food Science and TechnologyKey Laboratory of Bio-resources of Shaanxi ProvinceSchool of Food Science and TechnologySchool of Food Science and TechnologySchool of Food Science and TechnologySchool of Food Science and TechnologyThe global production of farmed Atlantic salmon amounts to over 2 million tons per year. Consumed all over the world, salmon is not only delicious but also nutritious. This paper deals with the relationship between moisture content, low-field nuclear magnetic resonance (LF-NMR), scanning electron microscope (SEM), and sensory evaluation in the baking process of salmon. An artificial neural network (ANN) model has been established to simulate the change of moisture content and energy consumed in the baking process. Through the study of LF-NMR, SEM, and sensory evaluation, it was found that the change of sensory indexes was consistent with the results observed by LF-NMR and SEM. With the increase of temperature, muscle fibers contracted, the interstices increased, the rate of water loss increased, and the sensory score decreased. Initial moisture content, baking time, baking temperature, baking humidity, and baking air velocity were employed as the baking control parameters for the ANN. ANN can be used to determine the moisture content and energy consumed of baking salmon. The best network topology occurred with 5 input layer neurons, 17 hidden layer neurons, and 2 output layer neurons, and the MSE was 0.00153, and Rall was 0.99661. According to the experiment, it was demonstrated that the ANN is a reliable software-based method.http://dx.doi.org/10.1155/2022/3226892
spellingShingle Pengfei Jiang
Kaiyue Zhu
Shan Shang
Wengang Jin
Wanying Yu
Shuang Li
Shen Wang
Xiuping Dong
Application of Artificial Neural Network in the Baking Process of Salmon
Journal of Food Quality
title Application of Artificial Neural Network in the Baking Process of Salmon
title_full Application of Artificial Neural Network in the Baking Process of Salmon
title_fullStr Application of Artificial Neural Network in the Baking Process of Salmon
title_full_unstemmed Application of Artificial Neural Network in the Baking Process of Salmon
title_short Application of Artificial Neural Network in the Baking Process of Salmon
title_sort application of artificial neural network in the baking process of salmon
url http://dx.doi.org/10.1155/2022/3226892
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