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Meat (beef) quality and safety evaluation using electronic nose systems.

机译:使用电子鼻系统进行肉(牛肉)质量和安全性评估。

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摘要

Two types of electronic nose systems were evaluated for their performances to identify spoiled and contaminated meat samples. One of the electronic nose systems (P-module E-nose system, Cyranose-320(TM)) contained an array of 32 conducting polymer sensors. The other nose system (M-module E-nose system) had an array of 9 metal oxide sensors. The meat samples (M. Longissimus lumborum) were packaged simulating the existing retail grocery package conditions and were stored at two different temperatures (10°C and 4°C).; Once the signals were acquired by the electronic nose systems from the headspace of the meat packets, they were pre-processed to reduce the noise, and features were extracted. Linear (LDA) and quadratic discriminant analysis (QDA) based classification models were developed from the extracted features. These models were validated by two techniques: leave-1-out method and bootstrapping.; For the meat spoilage identification studies, the developed models classified meat samples based on the microbial population: "unspoiled" (microbial counts 6.0 log10 cfu/g) and "spoiled" (microbial counts >6.0 log 10 cfu/g). For the meat contamination studies, the developed models classified meat samples into two classes: "No Salmonella" (microbial counts 0.7 log10 cfu/g) and "Salmonella " (microbial counts > 0.7 log10 cfu/g).; The spoilage experiments yielded maximum classification accuracies of approximately, 97.0% and 98.0%, respectively, for the meat samples stored at 10°C and 4°C. Both the P-module and M-module E-nose systems yielded similar maximum total classification accuracies.; When the electronic nose systems were used for identifying Salmonella inoculated beef, the maximum total classification accuracy obtained was between 80.5% and 87.3% for the meat samples stored at 10°C and 4°C, by using both the E-nose systems independently. As in the case of the spoilage experiments, QDA and bootstrapping method of data analysis provided the maximum classification accuracies. The experimental results obtained so far show promising trends for the implementation of electronic nose systems as intelligent sensing systems for identifying meat spoilage and contamination. Further research in this direction is recommended by validating the results on larger data sets, including additional features and utilizing other higher order data analysis techniques for building the classification models.
机译:评估了两种类型的电子鼻系统的性能,以识别变质和受污染的肉样品。一种电子鼻系统(P模块电子鼻系统,Cyranose-320™)包含32个导电聚合物传感器的阵列。另一个鼻系统(M模块电子鼻系统)具有9个金属氧化物传感器阵列。肉类样品(M. Longissimus lumborum)被包装以模拟现有的零售杂货包装条件,并在两个不同的温度(10°C和4°C)下存储。一旦电子鼻系统从肉包的顶部空间获取了信号,就对其进行了预处理以降低噪声,并提取特征。从提取的特征中开发了基于线性(LDA)和二次判别分析(QDA)的分类模型。这些模型通过两种技术进行了验证:留一法和自举。对于肉变质识别研究,开发的模型根据微生物种群对肉样品进行分类:“未变质”(微生物计数<6.0 log10 cfu / g)和“变质”(微生物计数> 6.0 log10 cfu / g)。对于肉类污染研究,已开发的模型将肉类样品分为两类:“无沙门氏菌”(微生物计数<0.7 log10 cfu / g)和“沙门氏菌”(微生物计数> 0.7 log10 cfu / g)。对于在10°C和4°C下储存的肉类样品,腐败实验得出的最大分类准确度分别约为97.0%和98.0%。 P模块和M模块E型鼻系统均具有相似的最大总分类精度。当使用电子鼻系统识别沙门氏菌接种的牛肉时,通过分别使用两个E型鼻系统,在10°C和4°C下存储的肉样品的最大总分类准确度在80.5%和87.3%之间。与损坏实验一样,QDA和数据分析的自举方法提供了最大的分类精度。迄今为止获得的实验结果表明,将电子鼻系统作为识别肉类变质和污染的智能传感系统的实现具有令人鼓舞的趋势。建议通过验证更大数据集(包括其他功能)上的结果并利用其他更高阶数据分析技术来建立分类模型,来对此方向进行进一步研究。

著录项

  • 作者

    Balasubramanian, Sundar.;

  • 作者单位

    North Dakota State University.;

  • 授予单位 North Dakota State University.;
  • 学科 Engineering Agricultural.; Agriculture Food Science and Technology.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 229 p.
  • 总页数 229
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 农业工程;农产品收获、加工及贮藏;
  • 关键词

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