Weng Xin-Xin, Lu Feng, Wang Chuan-Xian, Qi Yun-Peng
Second Military Medical University, Shanghai 200433, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2009 Dec;29(12):3283-7.
In the present paper, the use of near infrared spectroscopy (NIR) as a rapid and cost-effective classification and quantification techniques for the authentication of virgin olive oil were preliminarily investigated. NIR spectra in the range of 12 000 - 3 700 cm(-1) were recorded for pure virgin olive oil and virgin olive oil samples adulterated with varying concentrations of sesame oil, soybean oil and sunflower oil (5%-50% adulterations in the weight of virgin olive oil). The spectral range from 12 000 to 5 390 cm(-1) was adopted to set up an analysis model. In order to handle these data efficiently, after pretreatment, firstly, principal component analysis (PCA) was used to compress thousands of spectral data into several variables and to describe the body of the spectra, and the analysis suggested that the cumulate reliabilities of the first six components was more than 99.999%. Then ANN-BP was chosen as further research method. The six components were secondly applied as ANN-BP inputs. The experiment took a total of 100 samples as original model examples and left 52 samples as unknown samples to predict. Finally, the results showed that the 52 test samples were discriminated accurately. And the calibration models of quantitative analysis were built using partial-least-square (PLS). The R values for PLS model are 98.77, 99.37 and 99.44 for sesame oil, soybean oil and sunflower oil respectively, the root mean standard errors of cross validation (RMSECV) are 1.3, 1.1 and 1.04 respectively. Overall, the near infrared spectroscopic method in the present paper played a good role in the discrimination and quantification, and offered a new approach to the rapid discrimination of pure and adulterated virgin olive oil.
在本文中,初步研究了将近红外光谱(NIR)作为一种快速且经济高效的初榨橄榄油真伪鉴别分类和定量技术。记录了纯初榨橄榄油以及掺有不同浓度芝麻油、大豆油和向日葵油(掺假量为初榨橄榄油重量的5%-50%)的初榨橄榄油样品在12000 - 3700 cm(-1)范围内的近红外光谱。采用12000至5390 cm(-1)的光谱范围建立分析模型。为了有效处理这些数据,预处理后,首先使用主成分分析(PCA)将数千个光谱数据压缩为几个变量以描述光谱主体,分析表明前六个成分的累积可靠性超过99.999%。然后选择人工神经网络反向传播(ANN-BP)作为进一步的研究方法。其次将这六个成分用作ANN-BP的输入。实验总共选取100个样品作为原始模型示例,留下52个样品作为未知样品进行预测。最后,结果表明52个测试样品被准确鉴别。并且使用偏最小二乘法(PLS)建立了定量分析的校准模型。芝麻油、大豆油和向日葵油的PLS模型的R值分别为98.77、99.37和99.44,交叉验证的均方根标准误差(RMSECV)分别为1.3、1.1和1.04。总体而言,本文中的近红外光谱方法在鉴别和定量方面发挥了良好作用,并为快速鉴别纯初榨橄榄油和掺假初榨橄榄油提供了一种新方法。