Study of a Signal Classification Method in Electronic Noses Based on Suprathreshold Stochastic Resonance

The research on stochastic resonance (SR) in threshold systems has received much attention recently, for multithreshold networks, SR is also observed in suprathreshold system. Generally suprathreshold SR (SSR) has been shown to exist by the mutual information and input-output cross-correlation. In t...

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Hauptverfasser: Wu, Lili, Yuan, Chao, Lin, Aiying, Zheng, Baozhou, Guo, Miao
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:The research on stochastic resonance (SR) in threshold systems has received much attention recently, for multithreshold networks, SR is also observed in suprathreshold system. Generally suprathreshold SR (SSR) has been shown to exist by the mutual information and input-output cross-correlation. In this project, a novel method of ¿maximum cross-correlation coefficient¿ based on SSR was proposed to identify five gases gathered by the electronic nose. In the experiment, six carbon nanotubes gas sensors were chosen to compose a sensor array of the electronic nose, which were all sensitive to formaldehyde, benzene, toluene, xylene and ammonia. The data gathered from the sensor array were passed through the SSR system, which was quantified by the cross-correlation coefficient. Form the SSR curves, ¿maximum cross-correlation coefficient¿ of different gas classes was found to be completely different, and the ¿maximum cross-correlation coefficient¿ was a constant for each gas. So it can be used to accurately represent the different classes of gases. Compared with the classified results of the BP(back propagation) network, the method of ¿maximum cross-correlation coefficient¿ based on SSR has high accuracy in identifying five kinds of gases. So the method of ¿maximum cross-correlation coefficient¿ can be used as a new signal classification method.
ISSN:2157-1473
DOI:10.1109/ICMTMA.2010.205