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Modeling of Basil Leaves Drying by GA–ANN

  • Amin Taheri-Garavand EMAIL logo , Shahin Rafiee , Alireza Keyhani and Payam Javadikia
Published/Copyright: October 16, 2013

Abstract

In this research, the experiment is done by a dryer. It could provide any desired drying air temperature between 20 and 120°C and air relative humidity between 5 and 95% and air velocity between 0.1 and 5.0 m/s with high accuracy, and the drying experiment was conducted at five air temperatures of 40, 50, 60, 70 and 80°C and at three relative humidity 20, 40 and 60% and air velocity of 1.5, 2 and 2.5 m/s to dry Basil leaves. Then with developed Program in MATLAB software and by Genetic Algorithm could find the best Feed-Forward Neural Network (FFNN) structure to model the moisture content of dried Basil in each condition; anyway the result of best network by GA had only one hidden layer with 11 neurons. This network could predict moisture content of dried basil leaves with correlation coefficient of 0.99.

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Published Online: 2013-10-16

©2013 by Walter de Gruyter Berlin / Boston

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