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首页> 外文期刊>International Journal of Food Engineering >Modeling Drying Properties of Pistachio Nuts, Squash and Cantaloupe Seeds under Fixed and Fluidized Bed Using Data-Driven Models and Artificial Neural Networks
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Modeling Drying Properties of Pistachio Nuts, Squash and Cantaloupe Seeds under Fixed and Fluidized Bed Using Data-Driven Models and Artificial Neural Networks

机译:使用数据驱动模型和人工神经网络在固定和流化床下采用螺母,壁球和甜瓜种子的干燥性能

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摘要

This paper presents the application of feed forward and cascade forward neural networks to model the non-linear behavior of pistachio nut, squash and cantaloupe seeds during drying process. The performance of the feed forward and cascade forward ANNs was compared with those of nonlinear and linear regression models using statistical indices, namely mean square error (MSE), mean absolute error (MAE), standard deviation of mean absolute error (SDMAE) and the correlation coefficient (R-2). The best neural network feed forward back-propagation topology for the prediction of effective moisture diffusivity and energy consumption were 3-3-4-2 with the training algorithm of Levenberg-Marquardt (LM). This structure is capable to predict effective moisture diffusivity and specific energy consumption with R-2 = 0.9677 and 0.9716, respectively and mean-square error (MSE.) of 0.00014. Also the highest R-2 values to predict the drying rate and moisture ratio were 0.9872 and 0.9944 respectively.
机译:本文介绍了饲料前进和级联神经网络的应用,在干燥过程中模拟了开心螺母,南瓜和哈瓜籽的非线性行为。 将馈线和级联前沿的性能与使用统计指数的非线性和线性回归模型进行比较,即均值方误差(MSE),平均绝对误差(MAE),平均绝对误差(SDMAE)的标准偏差和该 相关系数(R-2)。 用于预测有效湿度扩散性和能量消耗的最佳神经网络馈送前后反向拓扑为Levenberg-Marquardt(LM)的训练算法为3-3-4-2。 该结构能够预测有效的湿度扩散性和具有R-2 = 0.9677和0.9716的特定能量消耗,分别和平均误差(MSE)为0.00014。 还有最高的R-2值来预测干燥速率和水分比例分别为0.9872和0.9944。

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