| Literature DB >> 35590999 |
Fawad Khan1, Zhiguang Xu2, Junling Sun3, Fazal Maula Khan4, Adnan Ahmed1, Yan Zhao1.
Abstract
Fire is indeed one of the major contributing factors to fatalities, property damage, and economic disruption. A large number of fire incidents across the world cause devastation beyond measure and description every year. To minimalize their impacts, the implementation of innovative and effective fire early warning technologies is essential. Despite the fact that research publications on fire detection technology have addressed the issue to some extent, fire detection technology still confronts hurdles in decreasing false alerts, improving sensitivity and dynamic responsibility, and providing protection for costly and complicated installations. In this review, we aim to provide a comprehensive analysis of the current futuristic practices in the context of fire detection and monitoring strategies, with an emphasis on the methods of detecting fire through the continuous monitoring of variables, such as temperature, flame, gaseous content, and smoke, along with their respective benefits and drawbacks, measuring standards, and parameter measurement spans. Current research directions and challenges related to the technology of fire detection and future perspectives on fabricating advanced fire sensors are also provided. We hope such a review can provide inspiration for fire sensor research dedicated to the development of advanced fire detection techniques.Entities:
Keywords: fire detection; flame; gas; heat; sensor; smoke
Mesh:
Substances:
Year: 2022 PMID: 35590999 PMCID: PMC9100504 DOI: 10.3390/s22093310
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1A brief timeline on the development of fire sensors.
Figure 2A summary of current fire sensing technologies.
Figure 3Heat sensors: (a) bi-metal strip sensor working principal; (b) thermocouple working principal.
Figure 4Optical fiber: (a) typical cross-section and waveguide principle; (b) basic scheme of fire sensing setup and different scattering components in optical glass fibers.
Figure 5(a) Thermal-induced reduction of GO; (b) cross-section SEM images of GO/PDMAEMA/BN fabric before and after burning (Adapted with permission from Ref. [44]. 2021, John Wiley and Sons).
Figure 6(a) Schematic illustration of the fabrication procedure of GO/PDMAEMA/BN and conductive ink/BN patterned fabric. (b) Example of a large piece of striped fabric coated with conductive electrode and fire-sensing lines. (c) Construction of a large-area early warning sensor by connecting the conductive ink/BN lines in an interdigitated way. (d) A strip of 33 cm long patterned fabric was used for the demonstration of large-area sensing. (Adapted with permission from Ref. [44]. 2021, John Wiley and Sons).
Recent developments and comparison of different heat sensors and their characteristics.
| Sensor | Detection Element | Construction and Working Principle | Response Time | Detection Area | Features and Advantages | Ref. |
|---|---|---|---|---|---|---|
| Distributed Optical Fiber Heat Detectors | Two parallel optical fibers | By measuring the temperature of hot air flows | 40 s | Wide ranges | Simple and efficient | [ |
| Graphene-coated optical fiber | Fiber Bragg grating | 18-fold faster than conventional fiber heat detectors | 1 km | Long-distance and fast optical transmission | [ | |
| Multi-core fiber | Raman scattering | Real-time | 10 km | Self-calibration | [ | |
| Thermal Resistance Sensors | Ammonium polyphosphate and GO | Freeze-drying | ~2.6 s | Small | Compressible | [ |
| FGO/CNTs | Layer-by-layer | 5 s | Small | Twisted and bended | [ | |
| AgNW/FPVB and GO/FC | Spray coating | 0.83 s | Large (>30 cm) | Hydrophobic and self-cleaning | [ | |
| MPMS and LLA | EISA | ∼1 s | Small | Twisted, folded and Structure stability | [ | |
| RGOP-NaCl | Evaporation-induced self-assembly | 5.3 s | Small | Twisted, can fuse function and can cut off in fire | [ | |
| GO-BA | Evaporation-induced self-assembly | ∼0.8 s | Small | Twisted and bended | [ | |
| APP/GO/TFTS | Water-based coating | 2 s | Small | Flexible and Super-hydrophobic | [ | |
| MPTS-GO | TEISA | 1 s | Small | Twisted and bended | [ | |
| CCS/MMT/A-CNT | Freeze-drying | ~0.25 s | Small | Light weight and Compressible | [ | |
| Miscellaneous Heat Detectors | Thermistor | Steinhart-Hart equation | 260 s | Small | Suitable for sprinklers | [ |
| Bi-spectrum camera | YOLOv3 and TNNI | 0.6 s | Limited to camera vision | Low cost, and automatic disposal of devices | [ | |
| Thermocouple anddigital multimeter | Operational algorithm | 2.3 times faster | Small | Useful where temperaturevaries | [ | |
| Artificial intelligence | LSTM and TCNN | 1 s | 5 m | Predict fire danger before 60 s | [ | |
| Rate of temperature rise | Operational algorithm | 120–180 s | Small | Useful where temperature varies | [ |
Note: FGO: functionalized graphene oxide; AgNW: silver nanowire; FPVB: fluoride polyvinyl butyral; FC: functional cellulose; MPMS: 3-methacryloxypropyltrimethoxysilane; LAA: L-ascorbic acid; EISA: evaporation-induced self-assembly process; CCS: carboxymethyl chitosan; MMT: montmorillonite; A-CNT: amino-functionalized carbon nanotube; RGOP: reduced graphene oxide paper; TFTS: tetra hydroperfluorodecyltrimethoxy silane; TEISA: low-temperature evaporation-induced self-assembling; LSTM: long short-term memory; TCNN: transpose convolution neural network; TNNI: turing neural network inference.
Figure 7Gas sensors: (a) catalytic beads combustible gas sensor; (b) metal oxide semiconductor (MOS)-based resistive sensor.
Figure 8Flow chart for fire pixel detection using RGB and YCbCr color models.
Figure 9Schematic illustration of convolutional neural networks (CNNs) for fire detection.