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首页> 外文期刊>Food and bioprocess technology >Estimation of Dielectric Properties of Cakes Based on Porosity, Moisture Content, and Formulations Using Statistical Methods and Artificial Neural Networks
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Estimation of Dielectric Properties of Cakes Based on Porosity, Moisture Content, and Formulations Using Statistical Methods and Artificial Neural Networks

机译:基于孔隙率,水分含量和配方的统计方法和人工神经网络估算蛋糕的介电性能

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摘要

Dielectric constant (DC) and dielectric loss factor (DLF) are the two principal parameters that determine the coupling and distribution of electromagnetic energy during radiofrequency and microwave processing. In this study, chemometric methods [classical least square (CLS), principle component regression (PCR), partial least square (PLS), and artificial neural networks (ANN)] were investigated for estimation of DC and DLF values of cakes by using porosity, moisture content and main formulation components, fat content, emulsifier type (PurawaveO, LecigranO), and fat replacer type (maltodextrin, Simplesse). Chemometric methods were calibrated firstly using training data set, and then they were tested using test data set to determine estimation capability of the method. Although statistical methods (CLS, PCR and PLS) were not successful for estimation of DC and DLF values, ANN estimated the dielectric properties accurately (R po, 0.940 for DC and 0.953 for DLF). The variation of DC and DLF of the cakes when the porosity value, moisture content, and formulation components were changed were also visualized using the data predicted by trained network.
机译:介电常数(DC)和介电损耗因子(DLF)是两个主要参数,它们决定了射频和微波处理过程中电磁能的耦合和分布。在这项研究中,研究了化学计量学方法[经典最小二乘(CLS),主成分回归(PCR),偏最小二乘(PLS)和人工神经网络(ANN)],通过孔隙率估算蛋糕的DC和DLF值,水分含量和主要配方成分,脂肪含量,乳化剂类型(PurawaveO,LecigranO)和脂肪替代剂类型(麦芽糊精,Simplesse)。化学计量学方法首先使用训练数据集进行校准,然后使用测试数据集进行测试以确定该方法的估计能力。尽管统计方法(CLS,PCR和PLS)无法成功估算DC和DLF值,但ANN可以准确估算介电性能(R po,DC为0.940,DLF为0.953)。使用由训练网络预测的数据,当孔隙率值,水分含量和配方成分发生变化时,滤饼的DC和DLF的变化也可视化。

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