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首页> 外文期刊>Drying technology: An International Journal >An Investigation of Drying Process of Shelled Pistachios in a Newly Designed Fixed Bed Dryer System by Using Artificial Neural Network
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An Investigation of Drying Process of Shelled Pistachios in a Newly Designed Fixed Bed Dryer System by Using Artificial Neural Network

机译:人工神经网络在新型固定床干燥系统中开心果壳干燥过程的研究。

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摘要

In this paper, the drying of Siirt pistachios (SSPs) in a newly designed fixed bed dryer system and the prediction of drying characteristics using artificial neural network (ANN) are presented. Drying characteristics of SSPs with initial moisture content (MC) of 42.3% dry basis (db) were studied at different air temperatures (60, 80, and 100 °C) and air velocities (0.065, 0.1, and 0.13 m/s) in a newly designed fixed bed dryer system. Obtained results of experiments were used for ANN modeling and compared with experimental data. Falling rate period was observed during all the drying experiments; constant rate period was not observed. Furthermore, in the presented study, the application of ANN for predicting the drying time (DT) for a good quality product (output parameter for ANN modeling) was investigated. In order to train the ANN, experimental measurements were used as training data and test data. The back propagation learning algorithm with two different variants, so-called Levenberg-Marguardt (LM) and scaled conjugate gradient (SCG), and tangent sigmoid transfer function were used in the network so that the best approach can be determined. The most suitable algorithm and neuron number in the hidden layer are found out as LM with 15 neurons. For this number level, after the training, it is found that Root-mean squared (RMS) value is 0.3692, and absolute fraction of variance (R~2) value is 99.99%. It is concluded that ANNs can be used for prediction of drying SSPs as an accurate method in similar systems.
机译:本文介绍了在新型设计的固定床干燥器系统中干燥开心果(SSP)的过程,以及使用人工神经网络(ANN)预测干燥特性的方法。在不同的空气温度(60、80和100°C)和空气流速(0.065、0.1和0.13 m / s)的条件下,研究了初始含水量(MC)为干基(db)42.3%的SSP的干燥特性。新设计的固定床烘干机系统。实验获得的结果用于ANN建模,并与实验数据进行比较。在所有干燥实验中均观察到下降速率期。没有观察到恒定速率期。此外,在本研究中,研究了人工神经网络在预测优质产品(用于人工神经网络建模的输出参数)的干燥时间(DT)中的应用。为了训练ANN,将实验测量值用作训练数据和测试数据。在网络中使用了具有两种不同变体的反向传播学习算法,即所谓的Levenberg-Marguardt(LM)和缩放的共轭梯度(SCG),以及正切S型传递函数,因此可以确定最佳方法。发现隐藏层中最合适的算法和神经元数量为具有15个神经元的LM。对于该数字级别,经过训练后,发现均方根(RMS)值为0.3692,方差的绝对分数(R〜2)值为99.99%。结论是,在类似系统中,人工神经网络可以作为预测SSP干燥的准确方法。

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