Affiliation:
1. School of Mechatronics Engineering, Harbin Institute of Technology, Harbin 150006, China
2. 703 Research Institute, China State Shipbuilding Corporation Limited, Harbin 150010, China
Abstract
Smoke detectors face the challenges of increasing accuracy, sensitivity, and high reliability in complex use environments to ensure the timeliness, accuracy, and reliability of very early fire detection. The improvement in and innovation of the principle and algorithm of smoke particle concentration detection provide an opportunity for the performance improvement in the detector. This study is a new refinement of the smoke concentration detection principle based on capacitive detection of cell structures, and detection signals are processed by a multiscale smoke particle concentration detection algorithm to calculate particle concentration. Through experiments, it is found that the detector provides effective detection of smoke particle concentrations ranging from 0 to 10% obs/m; moreover, the detector can detect smoke particles at parts per million (PPM) concentration levels (at 2 and 5 PPM), and the accuracy of the detector can reach at least the 0.5 PPM level. Furthermore, the detector can detect smoke particle concentrations at better than 1 PPM accuracy even in an environment with 6% obs/m oil gas particles, 7% obs/m large dust interference particles, or 8% obs/m small dust interference particles.
Reference24 articles.
1. A critical review on the application and problems caused by false alarms;Sharma;Intell. Commun. Control. Devices Proc. ICICCD,2017
2. Smart fire alarm systems for rapid early fire warning: Advances and challenges;He;Chem. Eng. J.,2022
3. Application of aspirating smoke detectors at the fire earliest stage;Liu;Procedia Eng.,2013
4. Wei, M.C., Lin, B.R., Lin, Y.Y., and Chiou, G.-J. (2021, January 29–31). Experimental Study on Effects of Light Source and Different Smoke Characteristics on Signal Intensity of Photoelectric Smoke Detectors. Proceedings of the 2021 IEEE 3rd Eurasia Conference on IOT, Communication and Engineering (ECICE), Yunlin, Taiwan.
5. Very Early Smoke Detection Apparatus (VESDA), David Packham, John Petersen, Martin Cole: 2017 DiNenno Prize;Johnson;Fire Sci. Rev.,2017