Title of article :
Neural network approach for modeling the mass transfer of potato slices during osmotic dehydration using genetic algorithm
Author/Authors :
M. R. Amiryousefi and M. Mohebbi ، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Pages :
8
From page :
70
To page :
77
Abstract :
In this study, an approach for designing a neural network based on genetic algorithm has been used to model mass transfer during osmotic dehydration of potato slices. The experimental data were obtained through a complete randomized design with different osmotic solutions (5, 10 and 15% w/w) and potato to solution ratios (1:6, 1:8 and 1:10) at varying temperatures (30, 40 and 60°C) and the best model obtained with optimization of a multi-layer perceptron neural network had a mean absolute error of 0.260, 0.516 and 0.137 for moisture content, water loss and solid gain of osmotically dehydrated slices respectively.
Keywords :
potato , Genetic algorithm , neural network , mass transfer , modeling , osmotic dehydration
Journal title :
African Journal of Agricultural Research
Serial Year :
2010
Journal title :
African Journal of Agricultural Research
Record number :
666700
Link To Document :
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