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   convective drying of garlic (allium sativum l.): artificial neural networks approach for modeling the drying process  
   
نویسنده rasouli majid
منبع پژوهش هاي علوم و صنايع غذايي ايران - 2018 - دوره : 14 - شماره : 3 - صفحه:52 -62
چکیده    In this study, artificial neural networks (anns) was utilized for modeling and the prediction of moisture content (mc) of garlic during drying. the application of a multilayer perceptron (mlp) neural network entitled feed forward back propagation (ffbp) was used. the important parameters such as air drying temperature (50, 60 and 70°c), slice thickness (2, 3 and 4 mm) and time (min) were considered as the input parameters, and moisture content as the output for the artificial neural network. experimental data obtained from a thinlayer drying process were used testing the network. the optimal topology was 32551 with lm algorithm and tansig threshold function for layers. with this optimized network, r2 and mean relative error were 0.9923 and 9.67 %, respectively. the mc (or mr) of garlic could be predicted by ann method, with less mean relative error (mre) and more determination coefficient compared to the mathematical model (weibull model).
کلیدواژه artificial neural networks ,back propagation ,convective drying ,garlic ,moisture content
آدرس bu-ali sina university, faculty of agriculture, department of biosystem engineering, ایران
پست الکترونیکی m.rasouli@basu.ac.ir
 
   Convective drying of garlic (Allium sativum L.): Artificial neural networks approach for modeling the drying process  
   
Authors Rasouli Majid
  
 
 

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