Ga. Bakken et al., Pattern recognition analysis of optical sensor array data to detect nitroaromatic compound vapors, SENS ACTU-B, 79(1), 2001, pp. 1-10
A fiber optic-based sensor array has been employed to determine the presenc
e or absence of nitroaromatic compound (NAC) vapors in variable backgrounds
of volatile organic compound (VOC) vapors. The system is based on previous
ly developed cross-reactive array technology and employs a sensor array att
ached to the distal. tips of an optical fiber bundle. Four different sensor
s, with 50 replicates of each type, were used to computationally train the
system to detect and recognize the presence of explosives-like NAC vapors.
Two of the NACs were employed because they are commonly detected on the soi
l surface above buried 2,4,6-trinitrotoluene plastic land mines. Based on f
luorescent responses, samples in an external prediction set were classified
with 100% accuracy using models trained to determine if NAC vapors were pr
esent. Additionally, models were developed with one of the three NAC vapors
held out of the training process, but included in the prediction set. In a
ll three models, over 92% of samples in an external prediction set were cla
ssified correctly. (C) 2001 Elsevier Science BN. All rights reserved.