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Design of artificial neural network for food safety and quality during thermal processing in a can.

机译:人工神经网络的设计可提高罐头热处理过程中的食品安全性和质量。

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摘要

A back-propagation artificial neural network (ANN) to control thermal processing for food safety and quality was developed. Five inputs (can sin, initial temperature, thermal diffusivity, sensitivity indicator of microorganism, and sensitivity indicator of quality) were used to predict three optimal outputs (sterilization temperature, process time, and quality degradation of the process). The thermal processing of canned food was modelled using a finite difference method. The ISIM simulation language was used to numerically solve the two-dimensional heat conduction equations for a finite cylinder and first order kinetics equation which describe the thermal inactivation of microorganisms and quality changes.;A back-propagation network was used to train and test the data generated from the simulation. A measure of dependency as well statistical tests were used to reduce the number of inputs. The results of the study were compared to another type of ANN, i.e., radial basis function (RBF). The mean relative error (MRE) was 0.2% in predicting the optimal process temperatures, 3.9% in predicting the process time, and 1.5% in predicting the quality degradation. A 4-layer neural network with 10 units in each hidden layer and 30,000 learning runs was optimum for its performance. The ANN showed high MRE (<25%) in predicting the outputs variables when tested with RBF network. The back-propagation network showed good convergence compared to RBF network which made it a better choice in designing ANN for thermal process applications.
机译:建立了反向传播人工神经网络(ANN),用于控制热处理以确保食品安全和质量。五个输入(罐头,初始温度,热扩散率,微生物的敏感性指标和质量的敏感性指标)用于预测三个最佳输出(灭菌温度,过程时间和过程质量下降)。罐头食品的热处理过程采用有限差分法建模。使用ISIM仿真语言对有限圆柱体的二维热传导方程和描述微生物的热失活和质量变化的一阶动力学方程进行数值求解;使用反向传播网络训练和测试数据从模拟生成。依赖程度的度量以及统计测试被用于减少输入的数量。将研究结果与另一种ANN进行比较,即径向基函数(RBF)。在预测最佳过程温度时,平均相对误差(MRE)为0.2%,在预测过程时间时为3.9%,在预测质量下降时为1.5%。 4层神经网络在每个隐含层中有10个单元,并且可以进行30,000次学习运行,因此对于其性能而言是最佳的。当使用RBF网络进行测试时,ANN在预测输出变量方面显示出较高的MRE(<25%)。与RBF网络相比,反向传播网络显示出良好的收敛性,这使其成为热过程应用设计ANN的更好选择。

著录项

  • 作者

    Kseibat, Dawod S.;

  • 作者单位

    University of Guelph (Canada).;

  • 授予单位 University of Guelph (Canada).;
  • 学科 Engineering System Science.;Agriculture Food Science and Technology.;Artificial Intelligence.;Computer Science.
  • 学位 M.Sc.
  • 年度 1999
  • 页码 116 p.
  • 总页数 116
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:48:03

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