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Comparison of Different Classification Methods for Analyzing Electronic Nose Data to Characterize Sesame Oils and Blends

机译:分析电子鼻数据以表征芝麻油和混合物的不同分类方法的比较

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摘要

An electronic nose (e-nose) was used to characterize sesame oils processed by three different methods (hot-pressed, cold-pressed, and refined), as well as blends of the sesame oils and soybean oil. Seven classification and prediction methods, namely PCA, LDA, PLS, KNN, SVM, LASSO and RF, were used to analyze the e-nose data. The classification accuracy and MAUC were employed to evaluate the performance of these methods. The results indicated that sesame oils processed with different methods resulted in different sensor responses, with cold-pressed sesame oil producing the strongest sensor signals, followed by the hot-pressed sesame oil. The blends of pressed sesame oils with refined sesame oil were more difficult to be distinguished than the blends of pressed sesame oils and refined soybean oil. LDA, KNN, and SVM outperformed the other classification methods in distinguishing sesame oil blends. KNN, LASSO, PLS, and SVM (with linear kernel), and RF models could adequately predict the adulteration level (% of added soybean oil) in the sesame oil blends. Among the prediction models, KNN with k = 1 and 2 yielded the best prediction results.
机译:电子鼻(电子鼻)用于表征通过三种不同方法(热压,冷压和精制)加工的麻油,以及麻油和大豆油的混合物。利用七种分类和预测方法,即PCA,LDA,PLS,KNN,SVM,LASSO和RF,来分析电子鼻数据。使用分类准确性和MAUC评估这些方法的性能。结果表明,用不同方法处理的麻油导致不同的传感器响应,冷榨芝麻油产生最强的传感器信号,其次是热榨芝麻油。压榨芝麻油和精制芝麻油的混合物比压榨芝麻油和精制大豆油的混合物更难区分。在区分芝麻油混合物时,LDA,KNN和SVM优于其他分类方法。 KNN,LASSO,PLS和SVM(带有线性核)和RF模型可以充分预测芝麻油混合物中的掺假水平(添加大豆油的百分比)。在预测模型中,k = 1和2的KNN产生了最佳的预测结果。

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