Discovering worst fire scenarios in subway stations : a simulation approach

This paper develops a systematic hybrid approach that integrates Available Safe Egress Time (ASET), Required Safe Egress Time (RSET), numerical simulation, and Multi-Attribute Decision Analysis (MADA) to support fire safety risk assessment and to discover the worst fire scenarios for improving evacu...

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Main Authors: Zhang, Limao, Wu, Xianguo, Liu, Menjie, Liu, Wenli, Ashuri, Baabak
Other Authors: School of Civil and Environmental Engineering
Format: Article
Language:English
Published: 2021
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Online Access:https://hdl.handle.net/10356/150605
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1506052021-06-07T05:58:46Z Discovering worst fire scenarios in subway stations : a simulation approach Zhang, Limao Wu, Xianguo Liu, Menjie Liu, Wenli Ashuri, Baabak School of Civil and Environmental Engineering Engineering::Civil engineering Fire Simulation Risk Assessment This paper develops a systematic hybrid approach that integrates Available Safe Egress Time (ASET), Required Safe Egress Time (RSET), numerical simulation, and Multi-Attribute Decision Analysis (MADA) to support fire safety risk assessment and to discover the worst fire scenarios for improving evacuation efficiency. Three factors, namely heat release rate, fire location, and occupants, are used to identify the most likely fire scenarios with a high-potential risk. The main classes of hazards yielded by fire, including heat (temperature), toxic gases (carbonic oxide), and smoke obscuration (visibility), are employed as untenability criteria for the estimation of ASET in the numerical simulation. A more comprehensive indicator, SITotal, is proposed to quantify the magnitude of the overall safety risk of a building fire, in order to fully consider the fire escape performance in different evacuation routes. One realistic subway station located at the Wuhan Metro System in China is utilized as a case to testify the applicability and feasibility of the proposed approach in this research. Result indicate that (i) among the identified four most likely fire scenarios, Scenario IV, where the fire is located at the exit of Sair I at the hall floor of the station with a heat release rate of 3 MW/m2, is identified to be the worst fire scenario with an associated lowest value of SITotal; (ii) the fire release rate plays a very significant role in the magnitude of the fire safety risk, as a 50% increase of the fire release rate can lead to a rough 36% decrease of SITotal; and (iii) exits should be regarded as super bottlenecks with significant importance during the fire escape process, and much more attention should be paid to those bottlenecks in the possible evacuation routes. The simulation models developed in this research are further validated by the observed results from the field test and experiment. This research contributes: (a) to the body of knowledge by providing an improved ASET/RSET approach that is capable of taking numerical factors (i.e., fire, building, and human features) into account to assess the safety risk of fire conditions in a three-dimensional environment; and (ii) to the state of practice by providing a more accurate data-driven solution for the perception and discovery of the worst fire scenarios. Nanyang Technological University The National Key Research Projects of China (Grant No. 2016YFC0800208), National Natural Science Foundation of China (Grant Nos. 51378235, 51578260, 71801101 and 71571078), China Postdoctoral Science Foundation (No. 2018M632880) and Start-up Grant at Nanyang Technological University, Singapore, (No. M4082160.030) are acknowledged for their financial support of this research. The authors also want to thank Assistant Engineer Ms. Menjie Liu from the China Three Gorges Corporation in China for her assistance in data collection and analytics. 2021-06-07T05:58:46Z 2021-06-07T05:58:46Z 2019 Journal Article Zhang, L., Wu, X., Liu, M., Liu, W. & Ashuri, B. (2019). Discovering worst fire scenarios in subway stations : a simulation approach. Automation in Construction, 99, 183-196. https://dx.doi.org/10.1016/j.autcon.2018.12.007 0926-5805 https://hdl.handle.net/10356/150605 10.1016/j.autcon.2018.12.007 2-s2.0-85058707572 99 183 196 en M4082160.030 Automation in Construction © 2018 Elsevier B.V. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Civil engineering
Fire Simulation
Risk Assessment
spellingShingle Engineering::Civil engineering
Fire Simulation
Risk Assessment
Zhang, Limao
Wu, Xianguo
Liu, Menjie
Liu, Wenli
Ashuri, Baabak
Discovering worst fire scenarios in subway stations : a simulation approach
description This paper develops a systematic hybrid approach that integrates Available Safe Egress Time (ASET), Required Safe Egress Time (RSET), numerical simulation, and Multi-Attribute Decision Analysis (MADA) to support fire safety risk assessment and to discover the worst fire scenarios for improving evacuation efficiency. Three factors, namely heat release rate, fire location, and occupants, are used to identify the most likely fire scenarios with a high-potential risk. The main classes of hazards yielded by fire, including heat (temperature), toxic gases (carbonic oxide), and smoke obscuration (visibility), are employed as untenability criteria for the estimation of ASET in the numerical simulation. A more comprehensive indicator, SITotal, is proposed to quantify the magnitude of the overall safety risk of a building fire, in order to fully consider the fire escape performance in different evacuation routes. One realistic subway station located at the Wuhan Metro System in China is utilized as a case to testify the applicability and feasibility of the proposed approach in this research. Result indicate that (i) among the identified four most likely fire scenarios, Scenario IV, where the fire is located at the exit of Sair I at the hall floor of the station with a heat release rate of 3 MW/m2, is identified to be the worst fire scenario with an associated lowest value of SITotal; (ii) the fire release rate plays a very significant role in the magnitude of the fire safety risk, as a 50% increase of the fire release rate can lead to a rough 36% decrease of SITotal; and (iii) exits should be regarded as super bottlenecks with significant importance during the fire escape process, and much more attention should be paid to those bottlenecks in the possible evacuation routes. The simulation models developed in this research are further validated by the observed results from the field test and experiment. This research contributes: (a) to the body of knowledge by providing an improved ASET/RSET approach that is capable of taking numerical factors (i.e., fire, building, and human features) into account to assess the safety risk of fire conditions in a three-dimensional environment; and (ii) to the state of practice by providing a more accurate data-driven solution for the perception and discovery of the worst fire scenarios.
author2 School of Civil and Environmental Engineering
author_facet School of Civil and Environmental Engineering
Zhang, Limao
Wu, Xianguo
Liu, Menjie
Liu, Wenli
Ashuri, Baabak
format Article
author Zhang, Limao
Wu, Xianguo
Liu, Menjie
Liu, Wenli
Ashuri, Baabak
author_sort Zhang, Limao
title Discovering worst fire scenarios in subway stations : a simulation approach
title_short Discovering worst fire scenarios in subway stations : a simulation approach
title_full Discovering worst fire scenarios in subway stations : a simulation approach
title_fullStr Discovering worst fire scenarios in subway stations : a simulation approach
title_full_unstemmed Discovering worst fire scenarios in subway stations : a simulation approach
title_sort discovering worst fire scenarios in subway stations : a simulation approach
publishDate 2021
url https://hdl.handle.net/10356/150605
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