Prediction of Quality Attributes of Fresh Unpasteurized Milk Using Dielectric Spectroscopy Coupled to Chemometric Tools

T. Chuquizuta, Y. Colunche, M. Rubio, J. Oblitas, H. Arteaga, W. Castro
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Abstract

The objective of this research is to predict the quality attributes of fresh unpasteurized milk using dielectric spectroscopy coupled to chemometric tools. For the fulfillment of the purpose, we have worked with fresh unpasteurized milk of the Brown Swiss breed, obtained from the “La lechera” stable; dilutions of water — fresh milk were obtained, from 70 to 100% at $25^{\circ}\mathrm{C}$, followed by the physicochemical characterization (density, total solids, freezing point, fatty solids, proteins and added water) and dielectric properties in the range of 0.5 to 9 GHz using an open ended coaxial probe (N1501A-001), connected to a Vector Network Analyzer, model N9915A-Keysight Technologies. Likewise, the partial least squares regression was used to correlate the physicochemical properties with the dielectric properties; the results obtained in the prediction of freezing point, proteins, fatty solids and added water from fresh milk unpasteurized have presented a coefficient of determination and a mean square error in the range of [0.95-0.98] and [2$.57\times 10^{-7}-7.46\times 10^{-2}]$ respectively. Consequently, it is concluded that the technique of dielectric spectroscopy and machine learning presents potential for prediction of physicochemical characteristics of fresh milk unpasteurized, being able to be implemented in the production lines to quickly and reliably evaluate the quality of cow’s milk.
利用介电光谱耦合化学计量工具预测新鲜未经巴氏消毒的牛奶的品质属性
本研究的目的是利用介电光谱耦合化学计量工具预测新鲜未经巴氏消毒的牛奶的质量属性。为了实现这一目标,我们使用了来自“La lechera”马厩的棕色瑞士品种的新鲜未经巴氏消毒的牛奶;在$25^{\circ}\ maththrm {C}$下获得水-鲜奶的稀释度,从70%到100%,然后使用开放式同轴探头(N1501A-001)在0.5至9 GHz范围内进行物理化学表征(密度,总固体,冰点,脂肪固体,蛋白质和添加的水)和介电性能,连接到矢量网络分析仪,型号N9915A-Keysight Technologies。同样,用偏最小二乘回归将理化性质与介电性质联系起来;对未经巴氏消毒的鲜奶的凝固点、蛋白质、脂肪固体和添加水的预测结果具有决定系数,均方误差在[0.95 ~ 0.98]和[2$]之间。57\乘以10^{-7}-7.46\乘以10^{-2}]$。因此,我们得出结论,介质光谱和机器学习技术在预测未经巴氏消毒的鲜奶的物理化学特性方面具有潜力,能够在生产线上实施,以快速可靠地评估牛奶的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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