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Feedforward ANN Computing Models for Predicting Shelf Life of MA Packed Paneer

S. Goyal, A. Chaudhary

Abstract


A predictive model for predicting shelf life of modified atmosphere (MA) packed paneer using feedforward artificial neural network is proposed. Feedforward networks with single and double hidden layers were developed with Bayesian regularization. The best fitting for single hidden layer was obtained with 4à24à1, and for the double hidden layers with combination of 4à27à27à1 topology, which made it possible to predict the overall acceptability with accuracy. The developed model can be used for predicting the shelf life of MA packed paneer.


Keywords


Feedforward, Shelf Life, Paneer, Artificial Neural Networks

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