A procedure for the classification of data from an Electronic Nose (EN) is
proposed, which is beneficial in the case in which the number of classes is
big and/or the classes are not nicely clustered (for instance, as seen in
a PCA score plot). The procedure consists of separating the original classi
fication problem in successive, less demanding sub-classification tasks. Th
e advantages, which are due to the greater flexibility, include the followi
ng: smaller processing times, enhanced performances and better interpretati
on of the results. Each classification step uses PCA and Multilayer Percept
rons (MLP) in cascade and, for comparison, Simca. The method has been teste
d on a data set formed by 242 measurements of 14 olive oil types performed
with a commercial EN that was equipped with 12 MOS sensors. (C) 2000 Elsevi
er Science S.A. All rights reserved.