Data di Pubblicazione:
2012
Abstract:
The E-nose system reported is designed to address the problem of early and distributed detection of dangerous gas
mixtures. It is made of a selection of Commercial Off-The-Shelf (COTS) sensors, facing a small volume chamber,
whose signals are conditioned and sampled by a multifunction board connected to a personal computer. A program,
implementing efficient Support Vector Machine and least square model algorithms, executes the gas classification,
the concentration estimation and warns about set risk thresholds overcoming. The system training was performed in
laboratory, over a wide range of concentrations in air of: methane, hexane, pentane, and hydrogen sulfide. Other
boundary conditions, such as oxygen concentration, temperature and RH are also taken into account. The overall cost
of the system can be made very low, adopting an embedded architecture approach, allowing to overcome the
limitations of the monitoring systems deployment inside refinery plants due to the high costs of traditional GC
systems.
Tipologia CRIS:
14.a.2 Proceedings in extenso su rivista
Keywords:
Electronic Nose; Support Vector machine; Safety Monitoring
Elenco autori:
C., Pace; W., Khalaf; Latino, Mariangela; Donato, Nicola; Neri, Giovanni
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