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Synchronous-asynchronous two-dimensional correlation spectroscopy for the discrimination of adulterated milk

机译:同步-异步二维相关光谱技术鉴别掺假牛奶

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摘要

A novel approach for discriminant analysis of adulterated milk is proposed using synchronous-asynchronous two-dimensional (2D) correlation spectroscopy and multi-way partial least squares discriminant analysis (NPLS-DA). The NIR transmittance spectra of pure milk and adulterated milk with a level of urea varying from 0.1 to 3 g L-1 were collected at room temperature. The synchronous and asynchronous 2D NIR (4200-4800 cm(-1)) correlation spectra of all samples were calculated and normalized. A new synchronous-asynchronous 2D correlation matrix was obtained by computing the sum of the upper triangular part of the normalized synchronous matrix and the strictly lower triangular part of the normalized asynchronous matrix. This new matrix preserves information contained and eliminates redundancy in synchronous and asynchronous 2D correlation matrices. Synchronous-asynchronous 2D correlation matrices of all samples were used to construct a discriminant model to classify adulterated milk and pure milk. For comparison, the NPLS-DA models were built based on the normalized synchronous and asynchronous 2D correlation spectra, respectively. Comparison results showed that the NPLS-DA model could provide better results using the synchronous-asynchronous 2D correlation spectra as compared to using synchronous or asynchronous 2D correlation spectra.
机译:提出了一种使用同步-异步二维(2D)相关光谱和多路偏最小二乘判别分析(NPLS-DA)进行掺假牛奶判别分析的新方法。在室温下收集尿素水平在0.1至3 g L-1之间的纯牛奶和掺假牛奶的NIR透射光谱。计算并归一化所有样本的同步和异步2D NIR(4200-4800 cm(-1))相关光谱。通过计算归一化同步矩阵的上三角部分和归一化异步矩阵的严格下三角部分的总和,获得了新的同步-异步二维相关矩阵。这个新矩阵保留了所包含的信息,并消除了同步和异步2D相关矩阵中的冗余。所有样品的同步-异步2D相关矩阵用于构建判别模型,以对掺假牛奶和纯牛奶进行分类。为了进行比较,分别基于归一化的同步和异步2D相关光谱建立了NPLS-DA模型。比较结果表明,与使用同步或异步2D相关光谱相比,使用NPSE-DA模型可以使用同步-异步2D相关光谱提供更好的结果。

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