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Modeling Selected Properties of Extruded Rice Flour and Rice Starch by Neural Networks and Statistics

机译:基于神经网络和统计学的挤压米粉和大米淀粉选择特性的模拟

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摘要

Rice flour and rice starch were single-screw extruded and selected product properties were determined. Neural network (NN) models were developed for prediction of individual product properties, which performed better than the regression models. Multiple input and multiple output (MIMO) models were developed to simultaneously predict five product properties or three product properties from three input parameters; they were extremely efficient in predictions with values of R2 \u3e 0.95. All models were feed-forward backpropagation NN with three-layered networks with logistic activation function for the hidden layer and the output layers. Also, model parameters were very similar except for the number of neurons in the hidden layer. MIMO models for predicting product properties from three input parameters had the same architecture and parameters for both rice starch and rice flour.
机译:将大米粉和大米淀粉单螺杆挤出,并确定所选的产品性能。开发了用于预测单个产品属性的神经网络(NN)模型,其性能优于回归模型。开发了多输入多输出(MIMO)模型,以根据三个输入参数同时预测五个产品属性或三个产品属性;它们对于R2 \ u3e 0.95的值的预测非常有效。所有模型都是前馈反向传播NN,具有三层网络,对隐藏层和输出层具有逻辑激活功能。此外,除了隐藏层中神经元的数量外,模型参数非常相似。用于从三个输入参数预测产品特性的MIMO模型对于大米淀粉和大米粉具有相同的结构和参数。

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