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International Journal of Modern Education and Computer Science (IJMECS)

ISSN: 2075-0161 (Print), ISSN: 2075-017X (Online)

Published By: MECS Press

IJMECS Vol.4, No.7, Jul. 2012

Machine Learning Elman Technique for Predicting Shelf Life of Burfi

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Author(s)

Sumit Goyal,Gyanendra Kumar Goyal

Index Terms

Elman;Artificial Neural Network;Artificial Intelligence;Burfi;Shelf Life Prediction

Abstract

Elman artificial neural network single and multilayer computerized models were developed for predicting the shelf life of burfi stored at 30ºC. The experimental data of the product relating to moisture, titratable acidity, free fatty acids, tyrosine, and peroxide value were taken as input variables, and overall acceptability score as output variable for developing the models. Bayesian regularization algorithm was applied as training algorithm for neural network. Transfer function for hidden layers was tangent sigmoid; while for output layer it was pure linear function. Elman model with a combination of 5→10→1 and 5→7→7→1 performed exceedingly well for predicting the shelf life of burfi.

Cite This Paper

Sumit Goyal,Gyanendra Kumar Goyal,"Machine Learning Elman Technique for Predicting Shelf Life of Burfi", IJMECS, vol.4, no.7, pp.17-23, 2012.

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