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Abstract:
With the advancement of science and technology, an increasing number of industries and fields are striding towards the informationization. The utility tunnels have become important facilities for urban energy transmission.In the context of the centralized development of large-scale municipal infrastructure, the fire hazards of utility tunnels have gradually become prominent.The convolutional neural network established by YOLO V5 can perform high-precision fire recognition, and then is able to extract the important fire parameters, including real-time fire spread range, the fire spread speed and the flame width.By designing 12 sets of fire experiments in the utility tunnel with different fire development speeds, the convolutional neural network is trained and verified for the accuracy of its parameter extraction.The results show that the average relative error (ARE) of the extracted spread position of fire front, fire spread speed and flame width are around 5%~15%, 6%~20% and 10%~27%, respectively.Furthermore, it is verified that the method can guarantee good extraction accuracy.For informationization of building fire protection, this method can be applied to formulating the fire rescue measures at the fire scene, and make it possible to examine and judge the fire development trends, assess the severity of fire accidents, and estimate the accident losses in real time. © 2022, Editorial Office of China Civil Engineering Journal. All right reserved.
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China Civil Engineering Journal
ISSN: 1000-131X
CN: 11-2120/TU
Year: 2022
Issue: 6
Volume: 55
Page: 112-120 and 128
Cited Count:
WoS CC Cited Count: 0
SCOPUS Cited Count:
ESI Highly Cited Papers on the List: 0 Unfold All
WanFang Cited Count:
Chinese Cited Count:
30 Days PV: 8
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