B. Yea et al., THE DISCRIMINATION OF MANY KINDS OF ODOR SPECIES USING FUZZY-REASONING AND NEURAL NETWORKS, Sensors and actuators. A, Physical, 45(2), 1994, pp. 159-165
To discriminate many kinds of odor species, a system composed of multi
ple gas sensors and neural networks is proposed. Three commercial gas
sensors are used for the system, and four kinds of inflammable gases,
four kinds of fragrant smells and one kind of offensive odor are intro
duced as odor species. The discrimination is performed in two steps to
increase the efficiency of the system; the first step is classificati
on of the odor group, that is, the groups of inflammable gases, fragra
nt smells and offensive odor; the second step is the discrimination of
individual odor species in the classified group. 100% group classific
ation rate is obtained by the use of simple fuzzy reasoning and the st
eady-state response patterns of the sensors. The discrimination of ind
ividual odor species is performed with a neural network and transient
response patterns of the sensors and a high discrimination rate (99.2%
) is achieved.