R. Polikar et al., Artificial intelligence methods for selection of an optimized sensor arrayfor identification of volatile organic compounds, SENS ACTU-B, 80(3), 2001, pp. 243-254
We have investigated two artificial intelligence (Al)-based approaches for
the optimum selection of a sensor array for the identification of volatile
organic compounds (VOCs). The array consists of quartz crystal microbalance
s (QCMs), each coated with a different polymeric material. The first approa
ch uses a decision tree classification algorithm to determine the minimum n
umber of features that are required to classify the training data correctly
. The second approach employs the hill-climb search algorithm to search the
feature space for the optimal minimum feature set that maximizes the perfo
rmance of a neural network classifier. We also examined the value of simple
statistical procedures that could be integrated into the search algorithm
in order to reduce computation time. The strengths and limitations of each
approach are discussed. (C) 2001 Elsevier Science B.V. All rights reserved.