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ANN-Integrated Electronic Nose and zNosetm System for Apple Quality Evaluation

机译:ANN集成的电子鼻和zNosetm系统用于苹果质量评估

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摘要

The fresh produce industry generates more than one billion dollars each year in the U.S. market. However, fresh produce departments in grocery stores experience as much as 10% loss because the apples contain undetected defects and deteriorate in quality before they can be sold. Apple defects can create sites for pathogen development, which can cause foodborne illness. It is important to develop a non-destructive system for rapid detection and classification of defective fresh produce. In this study, an artificial neural network (ANN) based electronic nose and zNose TM system was developed to detect physically damaged apples. Principal component analysis was used for clustering plot and feature extraction. The first five principal components were selected for the electronic nose data input, and the first ten principal components were selected for the zNose TM spectrum data. Different ANN models, back-propagation networks (BP), probabilistic neural networks (PNN), and learning vector quantification networks (LVQ), were built and compared based on their classification accuracy, sensitivity and specificity, generalization, and incremental learning performance. For the Enose data, the BP and PNN classification rate of 85.3% and 85.1%, respectively, was better than the LVQ classification rate of 73.7%; for the zNose TM data, the three ANN models had similar performances, which were less favorable than the Enose, with classification rates of 77%, 76.8% and 74.3%. The three ANN models' performances were also measured by their sensitivity, specificity, generalization, and incremental learning
机译:在美国市场上,新鲜农产品产业每年产生超过10亿美元的收入。但是,杂货店的新鲜农产品部门遭受的损失高达10%,因为苹果存在未被发现的缺陷,并且在出售之前质量会下降。苹果的缺陷会造成病原体的生长,从而导致食源性疾病。开发非破坏性系统以快速检测有缺陷的新鲜农产品并对其分类非常重要。在这项研究中,开发了基于人工神经网络(ANN)的电子鼻和zNose TM 系统来检测物理受损的苹果。主成分分析用于聚类图和特征提取。电子鼻数据输入选择了前五个主要成分,zNose TM 光谱数据选择了前十个主要成分。建立了不同的ANN模型,反向传播网络(BP),概率神经网络(PNN)和学习矢量量化网络(LVQ),并基于它们的分类准确性,敏感性和特异性,泛化性和增量学习性能进行了比较。对于Enose数据,BP和PNN的分类率分别为85.3%和85.1%,优于LVQ的73.7%;对于zNose TM 数据,这三个ANN模型具有相似的性能,不如Enose更好,分类率为77%,76.8%和74.3%。三种神经网络模型的性能还通过其敏感性,特异性,泛化性和增量学习来衡量

著录项

  • 来源
    《Transactions of the ASABE》 |2007年第6期|p.2285-2294|共10页
  • 作者

    C. Li; P. H. Heinemann;

  • 作者单位

    Changying Li, ASABE Member Engineer, Assistant Professor, Department of Biological and Agricultural Engineering, University of Georgia, Tifton, Georgia;

    and Paul H. Heinemann, ASABE Member Engineer, Professor, Department of Agricultural and Biological Engineering, The Pennsylvania State University, University Park, Pennsylvania. Corresponding author: Paul H. Heinemann, 249 Agricultural Engineering Bldg., The Pennsylvania State University, University Park, PA 16802;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    ANN; Artificial Neural Network; Electronic nose; zNose TM; Apple quality and safety;

    机译:人工神经网络人工神经网络;电子鼻;zNose TM / sup;苹果品质与安全;

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