pp. 397-402
S&M932 Research Paper of Special Issue https://doi.org/10.18494/SAM.2013.872 Published: August 26, 2013 Bayesian-Estimation-Algorithm-Based Gas Detection Modules [PDF] Kuo-Lan Su, Yi-Lin Liao, Sheng-Wen Shiau and Jr-Hung Guo (Received November 5, 2012; Accepted February 4, 2013) Keywords: intelligent building system, Bayesian estimation algorithm, Holtek microchip
In this study, we develop two types of gas detection module using multiple sensors and applied them to the intelligent building system. Bayesian estimation algorithm is applied in the competitive gas detection module and complementary gas detection module, and the proposed algorithm is implemented for various gas sensor combination methods. In the competitive gas detection module, we use two gas sensors to improve the accuracy of the proposed algorithm. In the complementary gas detection module, we use an NH3 sensor, an air pollution sensor, an alcohol sensor, a HS sensor, a smoke sensor, a CO sensor, an LPG sensor, and a natural gas sensor. The module classifies various unknown gases using Bayesian estimation algorithm. The controller of the two gas detection modules is a Holtek microchip. The modules can communicate with the supervised computer via a wired series interface or a wireless RF interface and alarm users using the voice module. Finally, we present some experimental results to measure known and unknown gases using the two gas detection modules.
Corresponding author: Kuo-Lan SuCite this article Kuo-Lan Su, Yi-Lin Liao, Sheng-Wen Shiau and Jr-Hung Guo, Bayesian-Estimation-Algorithm-Based Gas Detection Modules, Sens. Mater., Vol. 25, No. 6, 2013, p. 397-402. |