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Experimental and theoretical investigation of rough rice drying in infrared-assisted hot air dryer using Artificial Neural Network

机译:用人工神经网络红外辅助热风干燥器粗水稻干燥的实验与理论研究

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Drying characteristics of rough rice (variety of lenjan) with an initial moisture content of 25% dry basis (db) was studied in a hot air dryer assisted by infrared heating. Three arrival air temperatures (30, 40 and 50°C) and four infrared radiationintensities (0, 0.2 0.4 and 0.6 W.cm~(-2)) and three arrival air speeds (0.1, 0.15 and 0.2 m.s~(-1)) were studied. Bending strength of brown rice kernel, percentage of cracked kernels and time of drying were measured and evaluated. The results showed that increasing the drying arrival air temperature and radiation intensity of infrared resulted decrease in drying time. High bending strength and low percentage of cracked kernel was obtained when paddy was dried by hot air assisted infrared dryer. Betweenthis factors and their interactive effect were a significant difference (p<0.01). An intensity level of 0.2 W.cm"2 was found to be optimum for radiation drying. Furthermore, in the present study, the application of Artificial Neural Network (ANN) for predicting the moisture content during drying (output parameter for ANN modeling) was investigated. Infrared Radiation intensity, drying air temperature, arrival air speed and drying time were considered as input parameters for the model. An ANN model withtwo hidden layers with 8 and 14 neurons were 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 trainlm (Levenberg-Marquardt) back propagation algorithm made the most accurate predictions for the paddy drying system. Mean square error (MSE) was calculated and found that the random errors were within and acceptable range of ±5% with coefficient of determination (R~2) of99%.
机译:干燥稻谷(品种lenjan的),用25%干基(分贝)的初始水分含量的特性在通过红外加热辅助热风干燥机进行了研究。三个到达空气温度(30,40和50℃)和四个红外radiationintensities(0,0.2 0.4和0.6 W.cm〜(-2))以及三个到达空气速度(0.1,0.15和0.2毫秒〜(-1) )进行了研究。弯曲糙米内核的强度,进行测定和评价裂化内核和干燥的时间的百分比。结果表明,在干燥时间增加红外线导致降低的干燥空气到达温度和辐射强度。当稻谷是由辅助红外线干燥器热风干燥,得到高抗弯强度和破裂的内核低百分比。 Betweenthis因子和它们的交互效果是一个显著差异(p <0.01)。 0.2 W.cm“2的强度水平被认为是最适合的辐射烘干。此外,在本研究中,人工神经网络(ANN)的预测(对于ANN建模输出参数)在干燥过程中的水分含量的应用是选择的影响。红外辐射强度,干燥空气温度,到达空气速度和干燥时间被认为是对模型的输入参数。的人工神经网络模型withtwo与8层14的神经元隐藏层用于研究的传递函数和训练算法的影响。该结果表明,与所述正切S型(双曲正切S形)的传递函数和trainlm网络(列文伯格 - 马夸尔特)反向传播算法进行的最准确的预测为稻谷干燥系统。均方误差(MSE)的计算,发现随机误差分别为内和与判定(R〜2)of99%的系数的±5%可接受范围。

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