首页> 外文期刊>Food microbiology >A comparison of artificial neural networks and partial least squares modelling for the rapid detection of the microbial spoilage of beef fillets based on Fourier transform infrared spectral fingerprints
【24h】

A comparison of artificial neural networks and partial least squares modelling for the rapid detection of the microbial spoilage of beef fillets based on Fourier transform infrared spectral fingerprints

机译:基于傅里叶变换红外光谱指纹图的人工神经网络与偏最小二乘建模用于牛肉片微生物变质快速检测的比较

获取原文
获取原文并翻译 | 示例
           

摘要

A series of partial least squares (PLS) models were employed to correlate spectral data from FTIR analysis with beef fillet spoilage during aerobic storage at different temperatures (0,5,10,15, and 20 °C) using the dataset presented by Argyri et al. (2010). The performance of the PLS models was compared with a three-layer feed-forward artificial neural network (ANN) developed using the same dataset. FTIR spectra were collected from the surface of meat samples in parallel with microbiological analyses to enumerate total viable counts. Sensory evaluation was based on a three-point hedonic scale classifying meat samples as fresh, semi-fresh, and spoiled. The purpose of the modelling approach employed in this work was to classify beef samples in the respective quality class as well as to predict their total viable counts directly from FTIR spectra. The results obtained demonstrated that both approaches showed good performance in discriminating meat samples in one of the three predefined sensory classes. The PLS classification models showed performances ranging from 72.0 to 98.2% using the training dataset, and from 63.1 to 94.7% using independent testing dataset. The ANN classification model performed equally well in discriminating meat samples, with correct classification rates from 98.2 to 100% and 63.1 to 73.7% in the train and test sessions, respectively. PLS and ANN approaches were also applied to create models for the prediction of microbial counts. The performance of these was based on graphical plots and statistical indices (bias factor, accuracy factor, root mean square error). Furthermore, results demonstrated reasonably good correlation of total viable counts on meat surface with FTIR spectral data with PLS models presenting better performance indices compared to ANN.
机译:使用由Argyri等提供的数据集,使用一系列偏最小二乘(PLS)模型将来自FTIR分析的光谱数据与有氧存储在不同温度(0、5、10、15和20°C)期间的牛肉里脊变质相关联。等(2010)。将PLS模型的性能与使用相同数据集开发的三层前馈人工神经网络(ANN)进行了比较。 FTIR光谱是从肉类样品表面收集的,同时进行了微生物学分析,以计算总的活菌计数。感官评估基于三点享乐主义规模,将肉类样品分类为新鲜,半新鲜和变质。在这项工作中使用的建模方法的目的是将牛肉样品分类为各自的质量等级,并直接从FTIR光谱预测其总可行数量。获得的结果表明,两种方法在区分三种预定义的感官类别之一中的肉类样品中均显示出良好的性能。 PLS分类模型使用训练数据集显示的性能为72.0%至98.2%,使用独立测试数据集显示的性能为63.1%至94.7%。 ANN分类模型在区分肉类样品方面表现同样出色,在训练和测试期间的正确分类率分别为98.2%至100%和63.1%至73.7%。 PLS和ANN方法也被用于创建预测微生物数量的模型。这些的性能基于图形图和统计指标(偏差因子,准确性因子,均方根误差)。此外,结果表明,与ANN相比,PLS模型具有更好的性能指标,因此肉表面上的总存活数与FTIR光谱数据具有相当好的相关性。

著录项

  • 来源
    《Food microbiology》 |2011年第4期|p.782-790|共9页
  • 作者单位

    Agricultural University of Athens, Department of Food Science, Technology and Human Nutrition, Laboratory of Microbiology and Biotechnology of Foods,Iera Odos 75, 118 55 Athens, Greece;

    Bioinformatics Croup, Cranfield Health, Cranfield University, College Road, Cranfield, Bedfordshire MK43 OAL, UK;

    Agricultural University of Athens, Department of Food Science, Technology and Human Nutrition, Laboratory of Microbiology and Biotechnology of Foods,Iera Odos 75, 118 55 Athens, Greece,Applied Mycology Croup, Cranfield Health, Cranfield University, College Road, Cranfield, Bedfordshire MK43 OAL, UK;

    Bioinformatics Croup, Cranfield Health, Cranfield University, College Road, Cranfield, Bedfordshire MK43 OAL, UK;

    Agricultural University of Athens, Department of Food Science, Technology and Human Nutrition, Laboratory of Microbiology and Biotechnology of Foods,Iera Odos 75, 118 55 Athens, Greece;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Artificial neural networks; Aerobic storage; Beef fillets; Ftir; Machine learning; Meat spoilage; Partial least squares regression; Pattern recognition;

    机译:人工神经网络;有氧存储;牛肉片;Ftir;机器学习;肉类变质;偏最小二乘回归;模式识别;

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号