Regional High-Rise Building Fire Risk Assessment Based on the Spatial Markov Chain Model and an Indicator System
Abstract
:1. Introduction
2. Methodology and Model
2.1. Spatial Markov Chain Model
2.2. Indicator System Method
2.2.1. Construction of the Indicator System
2.2.2. Indicator Weight Calculation
2.2.3. Scoring Method
2.3. Fire Risk Analysis Framework for HRBs
2.3.1. HRB Fire Risk Calculation
2.3.2. Framework of Fire Risk Assessment
3. Results and Discussion
3.1. Study Area
3.2. Regional Fire Risk Prediction
3.2.1. Spatial Autocorrelation
3.2.2. Model Validation
3.2.3. Distribution of Regional Fire Probability
3.3. HRB Fire Consequence Assessment
3.3.1. Indicator Weight Calculation
3.3.2. Distribution of Building Fire Consequence
3.4. Distribution of HRB Fire Risk
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Fire Data State | Description |
---|---|
Two-state | No fire |
At least one fire | |
Three-state | No fire |
One fire | |
Two or more fires | |
Four-state | No fire |
One fire | |
Two fires | |
Three or more fires |
Primary Indicator | Secondary Indicators | Tertiary Indicators |
---|---|---|
Fire risk of HRB | Building characteristics (BC) | Fire compartment |
Building height | ||
Fire resistance rating | ||
Building structure | ||
Building fire extinguishing capacity (BFEC) | Sprinkler systems | |
Automatic fire alarm system | ||
Fire hydrant system | ||
Smoke control system | ||
External fire extinguishing ability (EFEA) | Fire department arrival time | |
Micro fire station construction status | ||
Personnel characteristics (PC) | Population density | |
Population flow | ||
Fire management (FM) | Number of fire inspections | |
Number of fire safety education | ||
Number of fire drills |
Indicator 1 | Indicator 2 | … | Indicator n | |
---|---|---|---|---|
Expert 1 | ||||
Expert 2 | ||||
Expert 3 | ||||
… | … | … | … | … |
20 | … |
No. | Codes and Regulations |
---|---|
1 | Code for fire protection design of buildings (GB50016-2014) (2018 edition) [2] |
2 | General code for fire protection of buildings and constructions (GB55037-2022) [31] |
3 | Unified standard for reliability design of building structures (GB50068-2008) [32] |
4 | Regulations on fire safety management of high-rise civil buildings [33] |
No. | Risk Level | Ratio |
---|---|---|
1 | High risk | 0–10% |
2 | Medium risk | 10–50% |
3 | General risk | 50–90% |
4 | Low risk | 90–100% |
Time Periods | Fire States | Performance Metrics | Ratio of Training Set Ratio | |
---|---|---|---|---|
75% | 80% | |||
Month | Two-state | χ2 | 6.774059743 | 6.402080914 |
p value | 0.158880366 | 0.162542209 | ||
Three-state | χ2 | 9.145245405 | 9.657936508 | |
p value | 0.151558868 | 0.153508278 | ||
Four-state | χ2 | 4.79915848 | 4.67874029 | |
p value | 0.192373038 | 0.175196289 | ||
Week | Two-state | χ2 | 5.63045442 | 4.834498277 |
p value | 0.171997492 | 0.178639024 | ||
Three-state | χ2 | 12.94804599 | 10.90285724 | |
p value | 0.029097193 | 0.043257354 | ||
Four-state | χ2 | 11.21326049 | 9.353785163 | |
p value | 0.055188108 | 0.064072835 |
Primary Indicator | Secondary Indicators | Tertiary Indicators |
---|---|---|
Fire risk of HRB | Building characteristics (BC) (0.2073) | Fire compartment (0.2579) |
Building height (0.2576) | ||
Fire resistance rating (0.2424) | ||
Building structure (0.2421) | ||
Building fire extinguishing capacity (BFEC) (0.1790) | Sprinkler systems (0.2571) | |
Automatic fire alarm system (0.3773) | ||
Fire hydrant system (0.1583) | ||
Smoke control system (0.2073) | ||
External fire extinguishing ability (EFEA) (0.2070) | Fire department arrival time (0.5015) | |
Micro fire station construction status (0.4985) | ||
Personnel characteristics (PC) (0.1883) | Population density (0.6856) | |
Population flow (0.3144) | ||
Fire management (FM) (0.2184) | Number of fire inspection (0.3479) | |
Number of fire safety education (0.3479) | ||
Number of emergency drill (0.3042) |
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Share and Cite
Zhang, Y.; Wang, G.; Wang, X.; Kong, X.; Jia, H.; Zhao, J. Regional High-Rise Building Fire Risk Assessment Based on the Spatial Markov Chain Model and an Indicator System. Fire 2024, 7, 16. https://doi.org/10.3390/fire7010016
Zhang Y, Wang G, Wang X, Kong X, Jia H, Zhao J. Regional High-Rise Building Fire Risk Assessment Based on the Spatial Markov Chain Model and an Indicator System. Fire. 2024; 7(1):16. https://doi.org/10.3390/fire7010016
Chicago/Turabian StyleZhang, Yan, Guru Wang, Xuehui Wang, Xin Kong, Hongchen Jia, and Jinlong Zhao. 2024. "Regional High-Rise Building Fire Risk Assessment Based on the Spatial Markov Chain Model and an Indicator System" Fire 7, no. 1: 16. https://doi.org/10.3390/fire7010016
APA StyleZhang, Y., Wang, G., Wang, X., Kong, X., Jia, H., & Zhao, J. (2024). Regional High-Rise Building Fire Risk Assessment Based on the Spatial Markov Chain Model and an Indicator System. Fire, 7(1), 16. https://doi.org/10.3390/fire7010016