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首页> 外文期刊>Food and Bioproducts Processing. Transactions of the Institution of Chemical Engineers, Part C >Experimental and theoretical investigation of shelled corn drying in a microwave-assisted fluidized bed dryer using Artificial Neural Network
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Experimental and theoretical investigation of shelled corn drying in a microwave-assisted fluidized bed dryer using Artificial Neural Network

机译:人工神经网络在微波流化床干燥机中去壳玉米干燥的实验和理论研究

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摘要

Drying characteristics of shelled corn (Zea mays L) with an initial moisture content of 26% dry basis (db) was studied in a fluidized bed dryer assisted by microwave heating. Four air temperatures (30, 40, 50 and 60 掳C) and five microwave powers (180, 360, 540, 720 and 900 W) were studied. Several experiments were conducted to obtain data for sample moisture content versus drying time. The results showed that increasing the drying air temperature resulted in up to 5% decrease in drying time while in the microwave-assisted fluidized bed system, the drying time decreased dramatically up to 50% at a given and corresponding drying air temperature at each microwave energy level. As a result, addition of microwave energy to the fluidized bed drying is recommended to enhance the drying rate of shelled corn. Furthermore, in the present study, the application of Artificial Neural Network (ANN) for predicting the drying time (output parameter for ANN modeling) was investigated. Microwave power, drying air temperature and grain moisture content were considered as input parameters for the model. An ANN model with 170 neurons was selected for studying the influence of transfer functions and training algorithms. The results revealed that a network with the Tansig (hyperbolic tangent sigmoid) transfer function and trainrp (Resilient back propagation) back propagation algorithm made the most accurate predictions for the shelled corn drying system. The effects of uncertainties in output experimental data and ANN prediction values on root mean square error (RMSE) were studied by introducing small random errors within a range of +/-5%.
机译:在微波加热辅助的流化床干燥机中研究了初含水量为26%干基(db)的带壳玉米(Zea mays L)的干燥特性。研究了四个空气温度(30、40、50和60℃)和五个微波功率(180、360、540、720和900 W)。进行了几次实验以获取样品含水量与干燥时间的关系数据。结果表明,提高干燥空气温度可使干燥时间减少多达5%,而在微波辅助流化床系统中,在给定的和相应的干燥空气温度下,每种微波能量下的干燥时间均显着减少,最多可降低50%。水平。因此,建议将微波能量添加到流化床干燥中以提高带壳玉米的干燥速率。此外,在本研究中,研究了人工神经网络(ANN)在预测干燥时间(用于ANN建模的输出参数)中的应用。微波功率,干燥空气温度和谷物水分含量被认为是该模型的输入参数。选择具有170个神经元的ANN模型来研究传递函数和训练算法的影响。结果表明,具有Tansig(双曲线正切S型曲线)传递函数和Trainrp(回弹力反向传播)反向传播算法的网络对带壳玉米干燥系统进行了最准确的预测。通过引入+/- 5%范围内的小随机误差,研究了输出实验数据和ANN预测值的不确定性对均方根误差(RMSE)的影响。

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