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Prediction of paddy drying kinetics: A comparative study between mathematical and artificial neural network modelling
Author(s) -
Mohsen Beigi,
Mehdi TorkiHarchegani,
Mahmood MahmoodiEshkaftaki
Publication year - 2016
Publication title -
chemical industry and chemical engineering quarterly
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.189
H-Index - 26
eISSN - 2217-7434
pISSN - 1451-9372
DOI - 10.2298/ciceq160524039b
Subject(s) - sigmoid function , artificial neural network , mean squared error , hyperbolic function , mathematics , mathematical model , correlation coefficient , backpropagation , tangent , biological system , coefficient of determination , transfer function , algorithm , computer science , statistics , artificial intelligence , engineering , mathematical analysis , geometry , biology , electrical engineering
The present study aimed at investigation of deep bed drying of rough rice kernels at various thin layers at different drying air temperatures and flow rates. A comparative study was performed between mathematical thin layer models and artificial neural networks to estimate the drying curves of rough rice. The suitability of nine mathematical models in simulating the drying kinetics was examined and the Midilli model was determined as the best approach for describing drying curves. Different feed forward-back propagation artificial neural networks were examined to predict the moisture content variations of the grains. The ANN with 4-18-18-1 topology, transfer function of hyperbolic tangent sigmoid and a Levenberg-Marquardt back propagation training algorithm provided the best results with the maximum correlation coefficient and the minimum mean square error values. Furthermore, it was revealed that ANN modeling had better performance in prediction of drying curves with lower root mean square error values

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