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Qualitative Analysis of Pure and Adulterated Canola Oil via SIMCA

机译:通过SIMCA的纯净和掺假碳水化合物油的定性分析

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This paper demonstrates the utilization of near infrared (NIR) spectroscopy to classify pure and adulterated sample of canola oil. Soft Independent Modeling Class Analogies (SIMCA) algorithm was implemented to discriminate the samples to its classes. Spectral data obtained was divided using Kennard Stone algorithm into training and validation dataset by a fixed ratio of 7:3. The model accuracy obtained based on the model built is 0.99 whereas the sensitivity and precision are 0.92 and 1.00. The result showed the classification model is robust to perform qualitative analysis of canola oil for future application.
机译:本文展示了利用近红外(NIR)光谱,分类纯净和掺孔的油菜油样品。实施了软独立建模类(SIMCA)算法,以区分样本到其类。使用Kennard Stone算法将获得的光谱数据划分为训练和验证数据集,其固定比率为7:3。基于模型获得的模型精度为0.99,而灵敏度和精度为0.92和1.00。结果表明,分类模型是对CANOLA油进行定性分析的稳健性,以供未来的应用。

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