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基于拉曼光谱-模式识别方法对奶粉进行真伪鉴别和掺伪分析
引用本文:王海燕,宋超,刘军,张正勇,谢伟量,李丽萍,沙敏. 基于拉曼光谱-模式识别方法对奶粉进行真伪鉴别和掺伪分析[J]. 光谱学与光谱分析, 2017, 37(1): 124-128. DOI: 10.3964/j.issn.1000-0593(2017)01-0124-05
作者姓名:王海燕  宋超  刘军  张正勇  谢伟量  李丽萍  沙敏
作者单位:1. 南京财经大学管理科学与工程学院,江苏 南京 210046
2. 江苏省质量安全工程研究院,江苏 南京 210046
3. 南京理工大学机械工程学院,江苏 南京 210046
基金项目:质检公益性行业科研专项,国家重大科学仪器设备开发专项,国家自然科学基金项目
摘    要:奶粉的真伪和掺伪近年来受到广泛的关注,研究一种操作便捷,能准确、快速、全面鉴定奶粉品牌并实现奶粉掺假鉴别的新方法对于奶粉的质量控制具有重要的意义。为实现奶粉的真伪鉴别,采集三种品牌奶粉贝因美、飞鹤和雀巢的拉曼光谱,并利用拉曼谱图特征峰结合最近邻算法(nearest neighbor,NN)的模型对三种品牌奶粉进行识别,在10次交叉验证的基础上,平均识别率为99.56%。为实现奶粉的掺伪分析,将飞鹤奶粉与雀巢奶粉按不同质量比(0∶1,1∶3,1∶1,3∶1,1∶0)混合成五种掺伪奶粉,提取掺伪奶粉中的脂肪,采集脂肪样本的拉曼光谱,分别使用拉曼谱图特征峰结最近邻算法的模型和核主成分分析(kernel principal components analysis,KPCA)结合最近邻算法的模型对五种脂肪样本进行识别,10次交叉验证下的平均识别率分别为93.33%和98.89%,平均运算时间分别为0.085和0.104 s。实验证明:特征峰结合NN的算法可以快速实现对奶粉真伪的判别,但此算法不能很好的区分掺伪奶粉;拉曼光谱-KPCA-NN模型可以为奶粉的掺伪检测提供一种简便、准确、快速的方法。

关 键 词:奶粉  拉曼光谱  核主成分分析  最近邻算法  真伪  掺伪   
收稿时间:2015-12-09

Application of Raman Spectroscopy and Pattern Recognition Methods for Determining the Authenticity and Detecting the Adulteration of Milk Powder
WANG Hai-yan,SONG Chao,LIU Jun,ZHANG Zheng-yong,XIE Wei-liang,LI Li-ping,SHA Min. Application of Raman Spectroscopy and Pattern Recognition Methods for Determining the Authenticity and Detecting the Adulteration of Milk Powder[J]. Spectroscopy and Spectral Analysis, 2017, 37(1): 124-128. DOI: 10.3964/j.issn.1000-0593(2017)01-0124-05
Authors:WANG Hai-yan  SONG Chao  LIU Jun  ZHANG Zheng-yong  XIE Wei-liang  LI Li-ping  SHA Min
Affiliation:1. School of Management Science & Engineering, Nanjing University of Finance & Economics, Nanjing 210046, China2. Jiangsu Province Institute of Quality & Safety Engineering, Nanjing 210046, China3. School of Mechanical Engineering, Nanjing University of Science & Technology, Nanjing 210046, China
Abstract:The authenticity and adulteration of dairy products are attracting broad attention in recent years.There is a need to develop rapid,simple and accurate analytical methods for the detection of authenticity and adulteration of dairy products.To dis-criminate between milk powder samples,Raman spectra of FIRMUS,Nestléand Being Mate milk powder were collected.The nearest neighbor algorithm (NN)combined with the characteristic peaks were employed for the design of a model.On the basis of 10 cross validation,the average recognition rate was 99.56%.In order to achieve the analysis of the adulteration of milk pow-der,FIRMUS milk powder was mixed with Nestlémilk powder according to the mass ratio 0∶1,1∶3,1∶1,3∶1 and 1∶0 to get five kinds of the adulterated milk powder samples.Then,fat was extracted from the adulterated milk powder samples.Ra-man spectra of the fat were collected,then two methods were employed for the design of models.One was the nearest neighbor algorithm combined with the characteristic peaks,another was the kernel principal component analysis (KPCA)combined with NN.On the basis of 10 cross validation,the average recognition rate reached 93.33% and 98.89%,the average operation time was 0.085 and 0.104 s.The results of this work showed that the nearest neighbor algorithm combined with the characteristic peaks can be applied for the determination of the authenticity of milk powder while Raman-KPCA-NN model can provide a sim-ple,accurate and rapid method to investigate the adulteration of milk power.
Keywords:Milk powder  Raman spectroscopy  Kernel principal component analysis (KPCA)  Nearest neighbor algorithm (NN)  Authenticity  Adulteration
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