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首页> 外文期刊>Agricultural Engineering International: CIGR Ejournal >Neural Network Approaches for Prediction of Drying Kinetics During Drying of Sweet Potato
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Neural Network Approaches for Prediction of Drying Kinetics During Drying of Sweet Potato

机译:甘薯干燥过程中干燥动力学预测的神经网络方法

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Drying kinetic of sweet potato was investigated considering different drying conditions. The drying experiments were performed at five levels of drying air temperature of 50-90oC, together with five levels of air flow velocities of 1.5-5.5 m/s, and also three levels of thickness of 0.5-1.2 cm. A predictive model using artificial neural network was proposed in order to obtain on-line predictions of moisture kinetics during drying of Sweet potato. A three-layer network with tangent sigmoid transfer function in hidden layer and linear transfer functions in the output was used. A feedforward networks with two hidden neurons was used. The best fitting with the training data set was obtained with eight neurons in first hidden layer and 4 neurons in second hidden layer, which made possible to predict moisture kinetics (moisture content, drying rate and moisture ratio) with accuracy, at least as good as experimental error, over the whole experimental range. On validation data set, simulation and experimental kinetics test were in good agreement. Comparing the R2 (coefficient of determination), MRE and STDR using the developed ANN model it was concluded that the neural network could be used for on-line state estimation of drying characteristics and control of drying processes.
机译:研究了不同干燥条件下甘薯的干燥动力学。干燥实验是在50-90oC的五个干燥空气温度水平,五个水平的1.5-5.5 m / s的空气流速以及三个水平的厚度0.5-1.2 cm的空气中进行的。为了获得甘薯干燥过程中水分动力学的在线预测,提出了使用人工神经网络的预测模型。使用了三层网络,该网络在隐藏层中具有切线S形传递函数,在输出中具有线性传递函数。使用具有两个隐藏神经元的前馈网络。在第一个隐藏层中有八个神经元,在第二个隐藏层中有四个神经元,获得了与训练数据集的最佳拟合,这使得准确地预测水分动力学(水分含量,干燥速率和水分比)成为可能,至少与在整个实验范围内的实验误差。在验证数据集上,模拟和实验动力学测试吻合良好。使用开发的ANN模型比较R2(确定系数),MRE和STDR,得出的结论是,神经网络可用于干燥特性的在线状态估计和干燥过程的控制。

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