Efficient detection of different fire scenarios or nuisance incidents using deep learning methods

被引:2
|
作者
Ozyurt, Osman [1 ]
机构
[1] Yeditepe Univ, Dept Elect & Elect Engn, ?, Istanbul, Turkiye
来源
关键词
Fire safety building systems; Fire type detection; Light scattering; Time series classification; Deep learning; SMOKE; PARTICLES; AMPLIFIER; SIGNALS; RATIO;
D O I
10.1016/j.jobe.2024.109898
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Fire is a major disaster in buildings, consequences of which can be minimized or even prevented by appropriate measures. Traditional smoke detectors usually create an alarm without distinguishing between a fire or nuisance. Frequent false alarms result in unnecessary evacuations, costly fire-fighter responses, and waste of extinguishing agents. Early and accurate fire detection is crucial. Therefore, DL (deep learning) models are developed to distinguish smokes of cotton, wood, N-heptane, polyurethane foam, sunflower oil, cigarettes, printed circuit board (PCB), aerosols of paraffin, PAO (Polyalphaolefins), DEHS (Di-Ethyl-Hexyl-Sebacat), cement or plaster powders, fabric and mixtures of some of them. An existing non-complex high-sensitivity optical cell has been improved and adapted. DL models are trained using orientation-dependent scattering of light from particles at wavelengths of 405 and 980 nm. With paraffin aerosol, the highest smoke density at which the cell saturates is about 1.4 % obs/m. Five different DL models are created, trained with fire events with slowest fire growth rates and evaluated against unknown fire events with fastest fire growth rates. To consider the component tolerances of the amplifier electronics, Monte Carlo methods are performed, and the test data are manipulated accordingly. The F1 scores of the largest DL model for individual particle and fire event type discriminations surpass 88.0 % and 99.4 %, respectively, with augmented data. Due to its high sensitivity at low particle concentrations, transferring the methods from this study to smoke detectors in buildings can significantly decrease false alarms and enables precise localization of fire instances via source type prediction.
引用
收藏
页数:30
相关论文
共 50 条
  • [41] A Survey on Arrhythmia Disease Detection Using Deep Learning Methods
    Lufiya, George C.
    Thomas, Jyothi
    Aswathy, S. U.
    INNOVATIONS IN BIO-INSPIRED COMPUTING AND APPLICATIONS, IBICA 2021, 2022, 419 : 55 - 64
  • [42] A Study for Sign Language Detection Using Deep Learning Methods
    Tewari, Dhruv
    Mishra, Siddharth
    Kumar, Ashutosh
    Chaudhry, Rashmi
    PROCEEDINGS OF THIRD DOCTORAL SYMPOSIUM ON COMPUTATIONAL INTELLIGENCE, DOSCI 2022, 2023, 479 : 493 - 501
  • [43] Early esophageal adenocarcinoma detection using deep learning methods
    Noha Ghatwary
    Massoud Zolgharni
    Xujiong Ye
    International Journal of Computer Assisted Radiology and Surgery, 2019, 14 : 611 - 621
  • [44] Early esophageal adenocarcinoma detection using deep learning methods
    Ghatwary, Noha
    Zolgharni, Massoud
    Ye, Xujiong
    INTERNATIONAL JOURNAL OF COMPUTER ASSISTED RADIOLOGY AND SURGERY, 2019, 14 (04) : 611 - 621
  • [45] A Survey on Attack Detection Methods For IOT Using Machine Learning And Deep Learning
    Babu, Meenigi Ramesh
    Veena, K. N.
    ICSPC'21: 2021 3RD INTERNATIONAL CONFERENCE ON SIGNAL PROCESSING AND COMMUNICATION (ICPSC), 2021, : 625 - 630
  • [46] Review of Different Techniques for Object Detection using Deep Learning
    Mittal, Usha
    Srivastava, Sonal
    Chawla, Priyanka
    PROCEEDINGS OF THE THIRD INTERNATIONAL CONFERENCE ON ADVANCED INFORMATICS FOR COMPUTING RESEARCH (ICAICR '19), 2019,
  • [47] Detection and Classification of Different Weapon Types Using Deep Learning
    Kaya, Volkan
    Tuncer, Servet
    Baran, Ahmet
    APPLIED SCIENCES-BASEL, 2021, 11 (16):
  • [48] Forest fire and smoke detection using deep learning-based learning without forgetting
    Veerappampalayam Easwaramoorthy Sathishkumar
    Jaehyuk Cho
    Malliga Subramanian
    Obuli Sai Naren
    Fire Ecology, 19
  • [49] Forest fire and smoke detection using deep learning-based learning without forgetting
    Sathishkumar, Veerappampalayam Easwaramoorthy
    Cho, Jaehyuk
    Subramanian, Malliga
    Naren, Obuli Sai
    FIRE ECOLOGY, 2023, 19 (01)
  • [50] Comparison of deep learning methods for the radiographic detection of patients with different periodontitis stages
    Ayyildiz, Berceste Guler
    Karakis, Rukiye
    Terzioglu, Busra
    Ozdemir, Durmus
    DENTOMAXILLOFACIAL RADIOLOGY, 2024, 53 (01) : 32 - 42