Time Series Classification with Multiple Wavelength Scattering Signals for Nuisance Alarm Mitigation

Author:

Han Kyuwon1ORCID,Kim Soocheol1,Yang Hoesung1,Cho Kwangsoo1,Lee Kangbok1

Affiliation:

1. Defense & Safety ICT Research Department, Electronics and Telecommunications Research Institute, Daejeon 34129, Republic of Korea

Abstract

Smoke detectors are the most widely used fire detectors due to their high sensitivity. However, they have persistently faced issues with false alarms, known as nuisance alarms, as they cannot distinguish smoke particles, and their responsiveness varies depending on the particle size and concentration. Although technologies for distinguishing smoke particles have shown promising results, the hardware limitations of smoke detectors necessitate an intelligent approach to analyze scattering signals of various wavelengths and their temporal changes. In this paper, we propose a pipeline that can distinguish smoke particles based on scattering signals of various wavelengths as input. In the data extraction phase, we propose methods for extracting datasets from time series data. We propose a method that combines traditional approaches, early detection methods, and a Dynamic Time Warping technique that utilizes only the shape of the signal without preprocessing. In the learning model and classification phase, we present a method to select and compare various architectures and hyperparameters to create a model that achieves the best classification performance for time series data. We create datasets for six different targets in our presented sensor and smoke particle test environment and train classification models. Through performance comparisons, we identify architecture and parameter combinations that achieve up to 98.7% accuracy. Ablation studies under various conditions demonstrate the validity of the chosen architecture and the potential of other models.

Funder

the Institute for Information & Communications Technology Promotion

Publisher

MDPI AG

Subject

Earth and Planetary Sciences (miscellaneous),Safety Research,Environmental Science (miscellaneous),Safety, Risk, Reliability and Quality,Building and Construction,Forestry

Reference32 articles.

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2. (2023). UL268: UL Standard for Safety Smoke Detectors for Fire Alarm Systems (Standard No. UL 268-2016).

3. Yan, S., Deng, T., Xu, W., and Wang, S. (2017, January 12–14). Selecting an Optimal Set of Scattering Angles and Wavelengths for Practical Photoelectric Smoke Detector. Proceedings of the 2017 Suppression, Detection, and Signaling Research and Applications Conference, College Park, MD, USA.

4. Zhang, Q., Liu, Z., Luo, J., Wang, F., Wang, J., and Zhang, Y. (2018, January 22–24). Characterization of Typical Fire and Non-fire Aerosols by Polarized Light Scattering for Reliable Optical Smoke Detection. Proceedings of the 11th Asia-Oceania Symposium on Fire Science and Technology, Taipei, Taiwan.

5. Dual-wavelength optical sensor for measuring the surface area concentration and the volume concentration of aerosols;Deng;Sens. Actuators B Chem.,2016

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