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首页> 外文期刊>Vibrational Spectroscopy: An International Journal devoted to Applications of Infrared and Raman Spectroscopy >Application of 2D correlation spectroscopy and outer product analysis to infrared spectra of sugar beets
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Application of 2D correlation spectroscopy and outer product analysis to infrared spectra of sugar beets

机译:二维相关光谱和外积分析在甜菜红外光谱中的应用

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The reference method for the measurement of the percentage of sugar in sugar beets is polarimetry.Infrared spectroscopy is now being more and more used in the food industry.Based on polarimetric reference values and infrared spectra,regression techniques,such as partial least square regression(PLS),may be used to develop mathematical models to predict the sugar content of beets.Before establishing the model,it is preferable to select informative parts of the infrared spectra in order to improve the model performance.Several different methods can be used to determine regions of interest in a spectrum,such as outer product analysis(OPA)and 2D correlation spectroscopy(2DCOS).Outer product analysis can be used to facilitate the interpretation of near infrared(NIR)and mid infrared(MIR)signals.In this method,the spectra acquired in the two domains are combined by calculating the outer product matrix of the two vector signals of each sample.It is then possible to perform statistical analyses,such as principal components analysis or partial least square regression,on the resulting data set of matrices in order to highlight relations between spectral features in the two domains.This can facilitate the attribution of NIR bands based on their relation to MIR peaks.Results of the 2D correlation spectroscopy will also be presented.This is another method that can be used to allow bands in the NIR spectrum to be resolved and assigned to characteristic absorbances in the MIR spectrum.The principle of this method is to detect regions in both spectra(NIR and MIR)that change simultaneously as sugar content varies.
机译:测定甜菜中糖分含量的参考方法是偏光法。食品行业中红外光谱的使用越来越多。基于偏光参考值和红外光谱的回归技术,例如偏最小二乘回归( PLS),可用于建立数学模型来预测甜菜的糖含量。在建立模型之前,最好选择红外光谱的信息部分以提高模型性能。可以使用几种不同的方法来确定光谱中感兴趣的区域,例如外部产物分析(OPA)和2D相关光谱法(2DCOS)。外部产物分析可用于解释近红外(NIR)和中红外(MIR)信号。然后,通过计算每个样本的两个矢量信号的外积矩阵,将在两个域中获取的光谱进行组合。然后可以进行统计分析,例如主成分分析或偏最小二乘回归,以突出显示两个域中光谱特征之间的关系,从而可以基于NIR波段与MIR峰的关系来促进NIR波段的归属。还将介绍二维相关光谱法,这是另一种可用于分辨NIR光谱中的谱带并分配给MIR光谱中特征吸光度的方法,该方法的原理是检测两个光谱中的区域(NIR和MIR)随着糖含量的变化而同时变化。

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