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首页> 外文期刊>Journal of Science and Technology of Agriculture and Natural Resources >Estimation of Head Rice Yield Using Artificial Neural Networks for Fluidized Bed Drying of Rough Rice
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Estimation of Head Rice Yield Using Artificial Neural Networks for Fluidized Bed Drying of Rough Rice

机译:粗米流化床干燥的人工神经网络估算稻谷总产量

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摘要

The objective of this research was to predict head rice yield (HRY) in fluidized bed dryer using artificial neural network approaches. Several parameters considered here as input variables for artificial neural network affect operation of fluidized bed dryers. These variables include: air relative humidity, air temperature, inlet air velocity, bed depth, initial moisture content, final moisture content and inlet air temperature. In aggregate, 274 drying experiments were conducted for creating training and testing patterns by a laboratory dryer. Samples were collected from dryer, and then dehulling and polishing operations were done using laboratory apparatus. HRY was measured at several different depths , average of which was considered as HRY for each experiment. Three networks and two training algorithms were used for training presented patterns. Results showed that the cascade forward back propagation algorithm with topology of 7- 13-7-1 and Levenberg-Marquardt training algorithm and activation function of Sigmoid Tangent predicted HRY with determination coefficient of 95.48% and mean absolute error 0.019 in different conditions of fluidized bed paddy drying method. Results showed that the input air temperature and final moisture content has the most significant effect on HRY. Keywords: Feed-forward back propagation network, Head rice yield, Levenberg-Marquardt, Rough rice. Full-Text Type of Study: Research | Subject: Ggeneral Received: 2010/04/3 Related Websites Scientific Publications Commission - Health Ministry Scientific Publications Commission - Science Ministry Yektaweb Company Site Keywords ?????, Academic Journal, Scientific Article, ???? ????? ??, ???? ????? ??, ???? ????? ??, ???? ????? ??, ???? ????? ??, ???? ????? ??, ???? ?? Vote ? 2015 All Rights Reserved | JWSS - Isfahan University of Technology
机译:这项研究的目的是使用人工神经网络方法预测流化床干燥机中的稻米产量(HRY)。这里考虑作为人工神经网络输入变量的几个参数会影响流化床干燥机的运行。这些变量包括:空气相对湿度,空气温度,进气速度,床深度,初始含水量,最终含水量和进气温度。总共进行了274次干燥实验,以通过实验室干燥机创建训练和测试模式。从干燥机中收集样品,然后使用实验室仪器进行脱壳和抛光操作。在几个不同的深度测量HRY,每个实验的平均深度均视为HRY。使用三个网络和两个训练算法来训练呈现的模式。结果表明,在不同的流化床条件下,具有7-13-7-1拓扑结构的级联正向反向传播算法和Levenberg-Marquardt训练算法以及Sigtangid Tangent的激活函数可以预测HRY,测定系数为95.48%,平均绝对误差为0.019。稻谷干燥法。结果表明,输入空气温度和最终水分含量对HRY影响最大。关键词:前馈反向传播网络;主稻产量; Levenberg-Marquardt;糙米。全文研究类型:研究|主题:一般收稿日期:2010/04/3相关网站科学出版物委员会-卫生部科学出版物委员会-科学部Yektaweb公司网站关键字??????,Academic Journal,Scientific Article,???? ?????? ??,???? ?????? ??,???? ?????? ??,???? ?????? ??,???? ?????? ??,???? ?????? ??,???? ??投票吗? 2015版权所有| JWSS-伊斯法罕工业大学

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