Author :
Lozano, Jesús ; Santos, José Pedro ; Aleixandre, Manuel ; Sayago, Isabel ; Gutiérrez, Javier ; Horrillo, Maria Carmen
Author_Institution :
Lab. de Sensores, Inst. de Fisica Aplicada, Madrid, Spain
Abstract :
In the field of electronic noses (e-noses), it is not very usual to find many applications to wine detection. Most of them are related to the discrimination of wines in order to prevent their illegal adulteration and detection of off-odors, but their objective is not the identification of wine aromas. In this paper, an application of an e-nose for the identification of typical aromatic compounds present in white and red wines is shown. The descriptors of these compounds are fruity, floral, herbaceous, vegetative, spicy, smoky, and microbiological, and they are responsible for the usual aromas in wines; concentrations differ from 2-8× the threshold concentration humans can smell. Some of the measured aromas are pear, apple, peach, coconut, rose, geranium, cut green grass, mint, vanilla, clove, almond, toast, wood, and butter. Principal component analysis and linear discriminant analysis show that datasets of these groups of compounds are clearly separated, and a comparison among several types of artificial neural networks has been also performed. The results confirm that the system has good performance in the classification of typical red and white wine aromas.
Keywords :
array signal processing; chemical variables measurement; electronic noses; neural nets; pattern classification; principal component analysis; sensor fusion; aroma measurement; aromatic compound identification; artificial neural networks; electronic nose; linear discriminant analysis; pattern recognition techniques; principal component analysis; red wine aroma; thin film gas sensors; white wine aroma; wine aroma identification; wine detection; Chemical analysis; Chemical compounds; Dairy products; Electronic noses; Humans; Linear discriminant analysis; Magnetic analysis; Pattern recognition; Pipelines; Principal component analysis; Aromatic compounds; pattern recognition techniques; thin film gas sensors; wine;