Title of article :
MODELING ISOSTERIC HEAT OF SOYA BEAN FOR DESORPTION ENERGY ESTIMATION USING NEURAL NETWORK APPROACH
Author/Authors :
Reza Amiri Chayjan ، نويسنده , , and Mahmood Esna-Ashari ، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Pages :
10
From page :
616
To page :
625
Abstract :
Sorption isotherm of soya bean (Glycine max (L.) Merr.) was obtained by the dynamic experimental method. Artificial Neural Networks (ANNs) were used for modeling soya bean equilibrium moisture content (EMC). Thermodynamic equations and trained ANN for prediction of two thermodynamic properties of net isosteric heat and entropy of soya bean were utilized. The ANN models were better compared with mathematical models. In this study, the isosteric heat and entropy of sorption of soya bean were separately predicted by two power models as a EMC function. Predictive power of the models was high (R2 ^ 0.99). At the moisture content above 11% (dry basis, db), isosteric heat and entropy of sorption of soya bean were smoothly decreased, while they were highest at moisture content about 8% (db). Isosteric heat and entropy would be useful in the storage simulation of dried soya bean. The ANN model predicts soya bean EMC more accurately than mathematical models. Hence, better equations could be developed for the prediction of heat of sorption and entropy based on data from the ANN model.
Keywords :
back propagation , Entropy , Isosteric heat , sorption isotherm , soya bean
Journal title :
Chilean Journal of Agricultural Research
Serial Year :
2010
Journal title :
Chilean Journal of Agricultural Research
Record number :
669944
Link To Document :
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