Application of simulated neural networks as Non-Linear Modular Modeling Method for predicting shelf life of processed cheese / Sumit Goyal and Gyanendra Kumar Goyal

This paper presents the capability of simulated neural network (SNN) models for predicting the shelf life of processed cheese stored at ambient temperature 30o C. Processed cheese is a dairy product generally made from medium ripened Cheddar cheese. Elman and Linear Layer(Train) SNN models were deve...

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Main Authors: Goyal, Sumit, Goyal, Gyanendra Kumar
Format: Article
Language:English
Published: Universiti Teknologi MARA, Perlis 2012
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Online Access:http://ir.uitm.edu.my/id/eprint/34381/1/34381.pdf
http://ir.uitm.edu.my/id/eprint/34381/
https://jurnalintelek.uitm.edu.my/index.php/main
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spelling my.uitm.ir.343812020-09-17T03:38:59Z http://ir.uitm.edu.my/id/eprint/34381/ Application of simulated neural networks as Non-Linear Modular Modeling Method for predicting shelf life of processed cheese / Sumit Goyal and Gyanendra Kumar Goyal Goyal, Sumit Goyal, Gyanendra Kumar Neural networks (Computer science) This paper presents the capability of simulated neural network (SNN) models for predicting the shelf life of processed cheese stored at ambient temperature 30o C. Processed cheese is a dairy product generally made from medium ripened Cheddar cheese. Elman and Linear Layer(Train) SNN models were developed. Body & texture, aroma & flavour, moisture, free fatty acids were used as input variables and sensory score as the output. Neurons in each hidden layers varied from 1 to 40. The network was trained with single as well as double hidden layers up to 100 epochs, and transfer function for hidden layer was tangent sigmoid while for the output layer, it was pure linear function. Mean square error, root mean square error, coefficient of determination and nash - sutcliffo coefficient performance measures were used for testing prediction potential of the developed models. Results showed a 4201 topology was able to predict the shelf life of processed cheese exceedingly well with R2 as 0.99992157. The corresponding RMSE for this topology was 0.003615359. From this study it is concluded that SNN models are excellent tool for predicting the shelf life of processed cheese. Universiti Teknologi MARA, Perlis 2012-12 Article PeerReviewed text en http://ir.uitm.edu.my/id/eprint/34381/1/34381.pdf Goyal, Sumit and Goyal, Gyanendra Kumar (2012) Application of simulated neural networks as Non-Linear Modular Modeling Method for predicting shelf life of processed cheese / Sumit Goyal and Gyanendra Kumar Goyal. Jurnal Intelek, 7 (2). pp. 48-54. ISSN 2682-9223 https://jurnalintelek.uitm.edu.my/index.php/main
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Neural networks (Computer science)
spellingShingle Neural networks (Computer science)
Goyal, Sumit
Goyal, Gyanendra Kumar
Application of simulated neural networks as Non-Linear Modular Modeling Method for predicting shelf life of processed cheese / Sumit Goyal and Gyanendra Kumar Goyal
description This paper presents the capability of simulated neural network (SNN) models for predicting the shelf life of processed cheese stored at ambient temperature 30o C. Processed cheese is a dairy product generally made from medium ripened Cheddar cheese. Elman and Linear Layer(Train) SNN models were developed. Body & texture, aroma & flavour, moisture, free fatty acids were used as input variables and sensory score as the output. Neurons in each hidden layers varied from 1 to 40. The network was trained with single as well as double hidden layers up to 100 epochs, and transfer function for hidden layer was tangent sigmoid while for the output layer, it was pure linear function. Mean square error, root mean square error, coefficient of determination and nash - sutcliffo coefficient performance measures were used for testing prediction potential of the developed models. Results showed a 4201 topology was able to predict the shelf life of processed cheese exceedingly well with R2 as 0.99992157. The corresponding RMSE for this topology was 0.003615359. From this study it is concluded that SNN models are excellent tool for predicting the shelf life of processed cheese.
format Article
author Goyal, Sumit
Goyal, Gyanendra Kumar
author_facet Goyal, Sumit
Goyal, Gyanendra Kumar
author_sort Goyal, Sumit
title Application of simulated neural networks as Non-Linear Modular Modeling Method for predicting shelf life of processed cheese / Sumit Goyal and Gyanendra Kumar Goyal
title_short Application of simulated neural networks as Non-Linear Modular Modeling Method for predicting shelf life of processed cheese / Sumit Goyal and Gyanendra Kumar Goyal
title_full Application of simulated neural networks as Non-Linear Modular Modeling Method for predicting shelf life of processed cheese / Sumit Goyal and Gyanendra Kumar Goyal
title_fullStr Application of simulated neural networks as Non-Linear Modular Modeling Method for predicting shelf life of processed cheese / Sumit Goyal and Gyanendra Kumar Goyal
title_full_unstemmed Application of simulated neural networks as Non-Linear Modular Modeling Method for predicting shelf life of processed cheese / Sumit Goyal and Gyanendra Kumar Goyal
title_sort application of simulated neural networks as non-linear modular modeling method for predicting shelf life of processed cheese / sumit goyal and gyanendra kumar goyal
publisher Universiti Teknologi MARA, Perlis
publishDate 2012
url http://ir.uitm.edu.my/id/eprint/34381/1/34381.pdf
http://ir.uitm.edu.my/id/eprint/34381/
https://jurnalintelek.uitm.edu.my/index.php/main
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score 13.18916