ID2S4FH: A Novel Framework of Intelligent Decision Support System for Fire Hazards
Author:
Kumar Kanak1ORCID, Rajput Navin Singh1ORCID, Shvetsov Alexey V.23, Saif Abdu4, Sahal Radhya56ORCID, Alsamhi Saeed Hamood7ORCID
Affiliation:
1. Department of Electronics Engineering, Indian Institute of Technology (BHU), Varanasi 221005, India 2. Department of Smart Technologies, Moscow Polytechnic University, St. Bolshaya Semenovskaya, 38, 107023 Moscow, Russia 3. Faculty of Transport, North-Eastern Federal University, St. Belinsky, 58, 677000 Yakutsk, Russia 4. Department of Communication and Computer Engineering, Faculty of Engineering and IT, Taiz University, Taiz P.O. Box 6803, Yemen 5. School of Computer Science and IT, University College Cork, T12 K8AF Cork, Ireland 6. Faculty of Computer Science and Engineering, Hodeidah University, Al Hodeidah P.O. Box 3114, Yemen 7. Faculty of Engineering, IBB University, Ibb P.O. Box 70270, Yemen
Abstract
Modern societies and industrial sectors are serviced through storage and distribution centres (SDCs) such as supermarkets, malls, warehouses, etc. Large quantities of supplies are stocked here, e.g., food grains, clothes, shoes, pharmaceuticals, electronics, plastics, edible oils, electrical wires/equipment, petroleum products, painting materials, etc. Fires due to the burning of these materials are categorized into six classes, viz., Class A, Class B, Class C, Class D, Class K, and Class F. A fire is extinguished better when the right type of fire retardant is used. A thumb rule on firefighting also says, “never fight a fire if you do not know what is burning”. In this paper, we have proposed an Intelligent Decision Support System (ID2S4FH) to generate a real-time ‘fire-map’ of such SDCs during a fire hazard. We have interfaced six tin-oxide-based gas sensor elements, a temperature and humidity sensor, and a particulate matter (PM) sensor with microcontrollers to capture the real-time signature patterns of the ambient air. We burned sixteen different types of materials belonging to six classes of fire and created a dataset consisting of 2400 samples. The sensor array responses were then pre-processed and analysed using various classifiers trained in different analysis space domains. Among the classifiers, four classifiers achieved ‘all correct’ identification of the fire classes of 80 unknown test samples, and the lowest mean squared error (MSE) achieved was 2.81 × 10−3. During a fire hazard, our proposed ID2S4FH can generate real-time fire maps of SDCs and help firefighters to extinguish the fire using the appropriate fire retardant.
Subject
Earth and Planetary Sciences (miscellaneous),Safety Research,Environmental Science (miscellaneous),Safety, Risk, Reliability and Quality,Building and Construction,Forestry
Reference30 articles.
1. Deem, F.S. (2016). Firefighter Fatality Investigation, Texas Department of Insurance. Annual Report FY 2016. 2. Hurley, M.J., Gottuk, D.T., Hall, J.R., Harada, K., Kuligowski, E.D., Puchovsky, M., Torero, L., Watts, J., and WIECZOREK, C.J. (2016). SFPE Handbook of Fire Protection Engineering, Springer. [5th ed.]. 3. National Research Council (1986). Fire and Smoke: Understanding the Hazards, National Academies Press. 4. Molded Case Circuit Breakers—Some Holes in the Electrical Safety Net;Aronstein;IEEE Access,2018 5. Evarts, B., and Campbell, R. (2023, April 11). Firefighter Injuries in the United States in 2019. Available online: https://www.nfpa.org/News-and-Research/Publications-and-media/NFPA-Journal/2020/November-December-2020/Features/FFI-Report.
Cited by
11 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|