• Title of article

    Data preprocessing enhances the classification of different brands of Espresso coffee with an electronic nose

  • Author/Authors

    Pardo، نويسنده , , M and Niederjaufner، نويسنده , , G and Benussi، نويسنده , , G and Comini، نويسنده , , E and Faglia، نويسنده , , G and Sberveglieri، نويسنده , , G and Holmberg، نويسنده , , M and Lundstrom، نويسنده , , I، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2000
  • Pages
    7
  • From page
    397
  • To page
    403
  • Abstract
    Two different ways of preprocessing chemical sensor data are presented as a means to improve the interpretation and the classification ability of an electronic nose (EN). The practical problem at hand is the distinction between four commercial coffee blends — containing up to 12 types of coffees — all of which are to be consumed as Espresso. Coffee was sampled in three successive preparation phases: as beans, ground (powder) or liquid (the actual Espresso). In the case of beans, stress is put on the improved clusters visualization after the preprocessing and before the actual classification is performed. Different catalysed sensors and successive extractions were used to differentiate the response pattern towards the various coffees. The features which permitted the best samplesʹ classification as judged from Principal Component Analysis (PCA) score plots were selected. To this end, an empirical search strategy inside the feature space is presented. Scores from PCA were subsequently utilized as inputs for a feed forward multilayer perceptron (MLP) with cross-validation resulting in 100% correct classification with just two sensors. In the case of ground coffee, a (supervised) drift compensation algorithm was developed. It essentially consists of removing the first principal component (PC) for every cluster since this is seen to be given by the drift. An 87.5% classification performance was achieved. Liquid coffee, on the other hand, was not successfully classified, probably due to the difficulty in assuring reproducible sampling conditions.
  • Keywords
    Electronic nose , Thin films gas sensors , feature selection , Pattern recognition , Drift compensation , ANN
  • Journal title
    Sensors and Actuators B: Chemical
  • Serial Year
    2000
  • Journal title
    Sensors and Actuators B: Chemical
  • Record number

    1412620