Title of article :
One Fire Detection Method Using Neural Networks
Author/Authors :
Caixia, CHENG China University of Mining and Technology - State Key Laboratory of Coal Resources and Mine Safety, China , Fuchun, SUN Tsinghua University - Department of Computer Science and Technology, State Key Laboratory of Intelligent Technology and Systems, China , Xinquan, ZHOU China University of Mining and Technology - State Key Laboratory of Coal Resources and Mine Safety, China
Abstract :
A neural network fire detection method was developed using detection information for temperature, smoke density, and CO concentration to determine the probability of three representative fire conditions. The method overcomes the shortcomings of domestic fire alarm systems using single sensor information. Test results show that the identification error rates for fires, smoldering fires, and no fire are less than 5%, which greatly reduces leak-check rates and false alarms. This neural network fire alarm system can fuse a variety of sensor data and improve the ability of systems to adapt in the environment and accurately predict fires, which has great significance for life and property safety.
Keywords :
fire detection , neural network , multi , sensor information fusion , simulation
Journal title :
Tsinghua Science and Technology
Journal title :
Tsinghua Science and Technology