掺假者
油菜
偏最小二乘回归
主成分分析
色谱法
线性判别分析
化学计量学
化学
植物油
葵花籽油
数学
食品科学
模式识别(心理学)
人工智能
计算机科学
统计
作者
Tong Chen,Xinyu Chen,Daoli Lu,Bin Chen
摘要
The aim of the present study was to detect adulteration of canola oil with other vegetable oils such as sunflower, soybean, and peanut oils and to build models for predicting the content of adulterant oil in canola oil. In this work, 147 adulterated samples were detected by gas chromatography-ion mobility spectrometry (GC-IMS) and chemometric analysis, and two methods of feature extraction, histogram of oriented gradient (HOG) and multiway principal component analysis (MPCA), were combined to pretreat the data set. The results evaluated by canonical discriminant analysis (CDA) algorithm indicated that the HOG-MPCA-CDA model was feasible to discriminate the canola oil adulterated with other oils and to precisely classify different levels of each adulterant oil. Partial least square analysis (PLS) was used to build prediction models for adulterant oil level in canola oil. The model built by PLS was proven to be effective and precise for predicting adulteration with good regression (R 2 >0.95) and low errors (RMSE ≤ 3.23).
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