Sensors (Oct 2006)

Monitoring the Freshness of Moroccan Sardines with a Neural-Network Based Electronic Nose

  • Benachir Bouchikhi,
  • Xavier Correig,
  • Nezha El Bari,
  • Eduard Llobet,
  • Noureddine El Barbri,
  • Aziz Amari

DOI
https://doi.org/10.3390/s6101209
Journal volume & issue
Vol. 6, no. 10
pp. 1209 – 1223

Abstract

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An electronic nose was developed and used as a rapid technique to classify thefreshness of sardine samples according to the number of days spent under cold storage (4 ±1°C, in air). The volatile compounds present in the headspace of weighted sardine sampleswere introduced into a sensor chamber and the response signals of the sensors wererecorded as a function of time. Commercially available gas sensors based on metal oxidesemiconductors were used and both static and dynamic features from the sensorconductance response were input to the pattern recognition engine. Data analysis wasperformed by three different pattern recognition methods such as probabilistic neuralnetworks (PNN), fuzzy ARTMAP neural networks (FANN) and support vector machines(SVM). The objective of this study was to find, among these three pattern recognitionmethods, the most suitable one for accurately identifying the days of cold storage undergoneby sardine samples. The results show that the electronic nose can monitor the freshness ofsardine samples stored at 4°C, and that the best classification and prediction are obtainedwith SVM neural network. The SVM approach shows improved classificationperformances, reducing the amount of misclassified samples down to 3.75 %.

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