| Literature DB >> 31683148 |
Yi Li1, Siying Chen2, He Chen3, Pan Guo4, Ting Li5, Qixiang Xu6.
Abstract
The fluorescence spectra of oil samples were obtained by laser-induced fluorescence spectroscopy and thermal oxidation stoichiometry at room temperature and 80 °C respectively. The Support Vector Machine, combined with Principal Component Analysis-Linear Discriminant Analysis (PCA-LDA), could distinguish pure extra virgin olive oils (EVOO) from oils adulterated with 2% soybean oil, with a recognition rate of 100%. Besides, as the intensity of the fluorescence spectra and concentration of the adulterants showed a non-linear relationship, linear dimension reduction methods may lead to overlapping of the different adulterated concentrations features, resulting in large errors in quantifying adulteration. In this paper, Kernel Principal Component Analysis-Linear Discriminant Analysis (KPCA-LDA) was applied instead of PCA-LDA to extract fluorescence spectra features, and a Partial Least Squares Regression model was established, which could quantify adulterants such as low percentages of soybean oil in EVOO. The coefficient of determination and root mean squared error were 0.92 and 2.72%, respectively.Entities:
Keywords: Dimensionality reduction; Extra virgin olive oil; KPCA–LDA; LIF spectroscopy; Thermal oxidation
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Year: 2019 PMID: 31683148 DOI: 10.1016/j.foodchem.2019.125669
Source DB: PubMed Journal: Food Chem ISSN: 0308-8146 Impact factor: 7.514