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NIR Spectroscopy-Based Qualitative and Quantitative Detection of Adulteration of Peanut Oil

机译:基于NIR光谱的定性和定量检测花生油掺杂

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In this study, qualitative and quantitative analyses of peanut oils adulterated with waste oil, soybean oil, corn oil and canola oil were performed by combining near infrared (NIR) spectroscopy with chemometrics methods. With NIR spectrometer, the spectra of 108 adulterated peanut oil samples were collected. The collected data were preprocessed with three different preprocessing approaches, including standard normal variate (SNV) transformation, de-trending (DT), and orthogonal signal correction (OSC). Backward interval partial least squares (BiPLS) was used to extract the characteristic wavelengths of the preprocessed data. On the intervals of the full spectrum and the characteristic wavelengths, support vector classification qualitative discriminant models and support vector regression quantitative analysis models were established. Experiments demonstrated that the established qualitative models could accurately determine the type of adulterant in peanut oil, with the accuracies on both the calibration set and the prediction set reaching 100%. With the quantitative models, the percentage of adulteration (3% ~ 55%) could be determined accurately, with correlation coefficients as high as 99.10%. All the models returned prediction root mean square errors lower than 6.96E-4. It was validated that the combination of NIR spectroscopy with chemometrics methods can realize the qualitative and quantitative detection of adulteration of peanut oil.
机译:在这项研究中,用废油,大豆油,玉米油和芥花籽油掺假花生油的定性和定量分析由近红外(NIR)光谱与化学计量学方法组合进行。利用NIR光谱仪,收集108个掺杂的花生油样品的光谱。收集的数据被预处理有三种不同的预处理方法,包括标准正常变化(SNV)变换,去趋势(DT)和正交信号校正(OSC)。向后间隔部分最小二乘(BIPLS)用于提取预处理数据的特征波长。在全光谱和特征波长的间隔上,建立了支持向量分类定性判别模型和支持向量回归定量分析模型。实验表明,建立的定性模型可以准确地确定花生油中的掺杂剂的类型,校准组的精度和预测设定达到100%。通过定量模型,可以准确地确定掺假率(3%〜55%)的百分比,相关系数高达99.10%。所有型号返回预测根均方误差低于6.96E-4。验证了NIR光谱与化学计量方法的组合可以实现花生油掺假的定性和定量检测。

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