Corpus ID: 61068097

Radial Basis (Exact Fit) Artificial Neural Network Technique for Estimating Shelf Life of Burfi

@inproceedings{Goyal2012RadialB,
  title={Radial Basis (Exact Fit) Artificial Neural Network Technique for Estimating Shelf Life of Burfi},
  author={Sumit Goyal and Gyanendra Kumar Goyal},
  booktitle={CSA 2012},
  year={2012}
}
Radial basis (exact fit) artificial neural network model for estimating the shelf life of burfi stored at 30o C has been developed. Input variables for developing the models were moisture, titratable acidity, free fatty acids, tyrosine, and peroxide value; and the overall acceptability score was output variable. Mean square error, root mean square error, coefficient of determination   and nash - sutcliffo coefficient were applied in order to compare the prediction ability of the developed… Expand
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