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Discriminant analysis of milk adulteration based on near-infrared spectroscopy and pattern recognition

机译:基于近红外光谱和模式识别的牛奶掺假判别分析

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摘要

Since the beginning of the 21st century, the issue of food safety is becoming a global concern. It is very important to develop a rapid, cost-effective, and widely available method for food adulteration detection. In this paper, near-infrared spectroscopy techniques and pattern recognition were applied to study the qualitative discriminant analysis method. The samples were prepared and adulterated with one of the three adulterants, urea, glucose and melamine with different concentrations. First, the spectral characteristics of milk and adulterant samples were analyzed. Then, pattern recognition methods were used for qualitative discriminant analysis of milk adulteration. Soft independent modeling of class analogy and partial least squares discriminant analysis (PLSDA) were used to construct discriminant models, respectively. Furthermore, the optimization method of the model was studied. The best spectral pretreatment methods and the optimal band were determined. In the optimal conditions, PLSDA models were constructed respectively for each type of adulterated sample sets (urea, melamine and glucose) and all the three types of adulterated sample sets. Results showed that, the discrimination accuracy of model achieved 93.2% in the classification of different adulterated and unadulterated milk samples. Thus, it can be concluded that near-infrared spectroscopy and PLSDA can be used to identify whether the milk has been adulterated or not and the type of adulterant used.
机译:自21世纪初以来,食品安全问题已成为全球关注的问题。开发一种快速,经济有效且广泛使用的食品掺假检测方法非常重要。本文采用近红外光谱技术和模式识别技术来研究定性判别分析方法。制备样品,并用三种掺杂物之一,不同浓度的尿素,葡萄糖和三聚氰胺进行掺杂。首先,分析了牛奶和掺假样品的光谱特征。然后,将模式识别方法用于牛奶掺假的定性判别分析。使用类比的软独立建模和偏最小二乘判别分析(PLSDA)分别构建判别模型。此外,研究了模型的优化方法。确定了最佳光谱预处理方法和最佳谱带。在最佳条件下,分别为每种掺假样品集(尿素,三聚氰胺和葡萄糖)和所有三种掺假样品集构建PLSDA模型。结果表明,该模型在不同掺假和不掺假牛奶样品的分类中,鉴别精度达到93.2%。因此,可以得出结论,可以使用近红外光谱和PLSDA来识别牛奶是否已经掺假以及所使用的掺假类型。

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