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Identification of trace amounts of detergent powder in raw milk using a customized low-cost artificial olfactory system: A novel method

机译:使用定制的低成本人工嗅嗅系统鉴定原料牛奶中的痕量洗涤剂粉末:一种新方法

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One of the common concerns in quality assurance of raw milk is the use of antimicrobial agents for reducing the microbial population. For this purpose, different kinds of agents may be added to raw milk like detergents. This illegal practice is harmful to human health and has ethical and serious sanitary consequences. In this study, an artificial olfactory machine (electronic nose) was developed based on eight metal oxide semiconductor sensors (MOS) and its ability to detect the presence of detergent powder in raw milk was investigated. Three features (area under the curve, relative response, and slope) were extracted from each sensor response and three baseline manipulation techniques (differential, relative and fractional) were used to correct the sensor responses. The multivariate analysis of variance (MANOVA) was employed to optimize the data matrix. MANOVA showed that the feature of "area under the curve" along with differential baseline correction method is the best combination for distinguishing different levels of the adulteration in milk. Based on the results, principal component analysis (PCA) with the first two PCs explains 91% of the variations. Linear discriminant analysis (LDA), support vector machine (SVM) and adaptive neuro-fuzzy inference system (ANFIS) method were employed for further qualitative classification. The result showed that the best performance (90%) was achieved by using the nu-SVM with Radial Basis Function (RBF) kernel function when the data collected from independent experiments were used for validation. The study demonstrated the potential of an electronic nose as a fast, effective and feasible method to detect detergent powder in raw milk.
机译:原牛奶质量保证的共同问题之一是使用抗微生物剂来减少微生物种群。为此目的,可以将不同种类的药剂添加到原料乳中,如洗涤剂。这种非法做法对人类健康有害,并具有道德和严重的卫生后果。在本研究中,基于八个金属氧化物半导体传感器(MOS)开发了人造嗅机械(电子鼻),并研究了原料牛奶中的洗涤剂粉末存在的能力。从每个传感器响应中提取三个特征(曲线下的区域,相对响应和斜率),并使用三种基线操作技术(差动,相对和分数)来校正传感器响应。使用方差的多变量分析(MANOVA)来优化数据矩阵。 Manova表明,“曲线下区域”的特征以及差分基线校正方法是区分牛奶中掺孔的不同水平的最佳组合。基于结果,主成分分析(PCA)与前两台PCS解释了91%的变化。采用线性判别分析(LDA),支持向量机(SVM)和自适应神经模糊推理系统(ANFIS)方法进行了进一步的定性分类。结果表明,当从独立实验收集的数据用于验证时,通过使用径向基函数(RBF)内核功能来实现最佳性能(90%)。该研究证明了电子鼻的潜力作为一种快速,有效的可行方法,用于检测生乳中的洗涤剂粉末。

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