Weng Yu-Kai, Chen Jiunyuan, Cheng Ching-Wei, Chen Chiachung
Department of Bio-industrial Mechanics Engineering, National Chung Hsing University, 250 Kuokung Road, Taichung 40227, Taiwan.
Africa Research Center, National Chung Hsing University, 250, Kuokung Road, Taichung 40227, Taiwan.
Foods. 2020 Oct 15;9(10):1472. doi: 10.3390/foods9101472.
The dielectric properties of food materials is used to describe the interaction of foods with electromagnetic energy for food technology and engineering. To quantify the relationship between dielectric properties and influencing factors, regression analysis is used in our study. Many linear or polynomial regression equations are proposed. However, the basic assumption of the regression analysis is that data with a normal distribution and constant variance are not checked. This study uses sixteen datasets from the literature to derive the equations for dielectric properties. The dependent variables are the dielectric constant and the loss factor. The independent variables are the frequency, temperature, and moisture content. The dependent variables and frequency terms are transformed for regression analysis. The effect of other qualitative factors, such as treatment method and the position of subjects on dielectric properties, are determined using categorical testing. Then, the regression equations can be used to determine which influencing factors are important and which are not. The method can be used for other datasets of dielectric properties to classify influencing factors, including quantitative and qualitative variables.
食品材料的介电特性用于描述食品与电磁能在食品技术和工程中的相互作用。为了量化介电特性与影响因素之间的关系,我们的研究采用了回归分析。许多线性或多项式回归方程被提出。然而,回归分析的基本假设是数据具有正态分布和恒定方差,但并未进行检验。本研究使用文献中的16个数据集来推导介电特性方程。因变量是介电常数和损耗因子。自变量是频率、温度和水分含量。对因变量和频率项进行变换以进行回归分析。使用分类测试来确定其他定性因素,如处理方法和样本位置对介电特性的影响。然后,回归方程可用于确定哪些影响因素是重要的,哪些不是。该方法可用于其他介电特性数据集,以对影响因素进行分类,包括定量和定性变量。