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首页> 外文期刊>Transactions of the ASABE >Neural Network and Regression Modeling of Extrusion Processing Parameters and Properties of Extrudates Containing DDGS
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Neural Network and Regression Modeling of Extrusion Processing Parameters and Properties of Extrudates Containing DDGS

机译:含DDGS的挤出成型工艺参数和性能的神经网络和回归建模。

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摘要

Two sets of experiments using a single-screw extruder were conducted with an ingredient blend containing 40% DDGS (distillers dried grains with solubles), along with soy flour, corn flour, fish meal, vitamin mix, and mineral mix, with the net protein content adjusted to 28%. The variables controlled in the first experiment included seven levels of die size, three levels of moisture content, three levels of temperature gradient in the barrel, and one screw speed. The variables altered in the second experiment included three levels of moisture content, three levels of temperature gradient in the barrel, five levels of screw speed, and one die size. Regression models and neural network (NN) models were then developed using the data pooled from the two experiments to predict extrudate properties and extrusion processing parameters. In general, both regression and NN models predicted the extrusion processing parameters with better accuracy than the extrudate properties. Similarly, lower R 2 values for the regression results corresponded to lower R 2 values in the NN modeling. The regression models predicted the extrusion processing parameters using three and six input variables with R 2 values of 0.56 to 0.97 and 0.75 to 0.97, respectively. The NN models predicted the extrusion processing parameters using three, five, and six input variables with R 2 values (between measured and predicted values) of 0.819 to 0.984, 0.860 to 0.988, and 0.901 to 0.991, respectively. With the regression modeling, even though increasing the number of input variables from three to six resulted in better R 2 values, there was no decrease in the coefficient of variation (CV) between the measured and predicted variables. On the other hand, the NN models developed with six input variables resulted in more accurate predictions with reduced CV and standard error. Because of its ability to produce accurate result with reduced variation and standard error, NN modeling has greater potential for developing robust models for extrusion processing
机译:使用单螺杆挤出机进行了两组实验,混合了40%DDGS(蒸馏水和可溶物的干谷物)以及大豆粉,玉米粉,鱼粉,维生素混合物和矿物质混合物以及净蛋白含量调整为28%。在第一个实验中控制的变量包括七个级别的模具尺寸,三个级别的水分含量,三个级别的机筒温度梯度和一个螺杆速度。在第二个实验中更改的变量包括三个级别的水分含量,三个级别的料筒温度梯度,五个级别的螺杆速度和一个模具尺寸。然后,使用从两个实验中收集的数据开发回归模型和神经网络(NN)模型,以预测挤出物的性能和挤出加工参数。通常,回归模型和NN模型都比挤出物属性预测精度更高的挤出加工参数。同样,回归结果中较低的R 2 值对应于NN模型中较低的R 2 值。回归模型使用三个和六个输入变量(R 2 值分别为0.56至0.97和0.75至0.97)预测挤出加工参数。 NN模型使用三个,五个和六个输入变量预测挤出加工参数,R 2 值(在测量值和预测值之间)分别为0.819至0.984、0.860至0.988和0.901至0.991 。通过回归建模,即使将输入变量的数量从三个增加到六个导致更好的R 2 值,在测量变量和预测变量之间的变异系数(CV)也没有降低。另一方面,使用六个输入变量开发的NN模型可实现更准确的预测,同时降低CV和标准误差。由于能够以减少的变化和标准误差来产生准确的结果,因此,NN建模具有更大的潜力来开发用于挤压加工的鲁棒模型

著录项

  • 来源
    《Transactions of the ASABE》 |2007年第5期|p.1765-1778|共14页
  • 作者单位

    Nehru Chevanan, ASABE Member Engineer, Post-Doctoral Research Associate, Department of Biosystems Engineering and Soil Science, University of Tennessee, Knoxville, Tennessee;

    Kasiviswanathan Muthukumarappan, ASABE Member Engineer, Professor, Department of Agricultural and Biosystems Engineering, South Dakota State University, Brookings, South Dakota;

    and Kurt A. Rosentrater, ASABE Member Engineer, Agricultural and Bioprocess Engineer, USDA-ARS North Central Agricultural Research Laboratory, Brookings, South Dakota. Corresponding author: Kurt A. Rosentrater, USDA-ARS, 2923 Medary Ave., Brookings, SD 57006;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Extrudate; Extrusion; Modeling; Neural network; Processing parameters; Properties; Regression.A Heading 1;

    机译:挤出物挤压;造型;神经网络;加工参数;属性;回归A标题1;

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