Resilience Measurement and Enhancement of Subway Station Flood Disasters Based on Uncertainty Theory
Abstract
:1. Introduction
2. Theoretical Framework and Methods
2.1. Subway Station Flood Resilience System
2.1.1. Causes of Flood Disasters in Subway Stations
2.1.2. Flood Resilience Process for Subway Stations
2.1.3. Resilience Framework for Flooding at Subway Stations
2.2. Uncertainty Measurement Principle
2.2.1. Uncertainty Set
2.2.2. Uncertainty Measurement
2.3. Analysis Process
2.3.1. Defining the Resilience Evaluation Space and Grading Criteria
2.3.2. Constructing the Uncertainty Measurement Function
2.3.3. Constructing the Uncertainty Measurement Matrix
2.3.4. Confidence Level Determination Category
2.3.5. Obstacle Degree Analysis
3. Case Analysis
3.1. Introduction to the Research Subject
3.2. Resilience Measurement
3.3. Resilience Enhancement
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Time | Place | Cause | Disaster Situation |
---|---|---|---|
8 August 2007 | New York | Rainstorm | The subway is severely flooded, and New York’s 4, 5, 6, E, F, R, and V lines are suspended |
28 October 2012 | New York | Hurricane Sandy | Seven subway tunnels were flooded |
25 September 2014 | Nagoya | Concentrated rainstorm | The platform of Nagoya Station on the Higashiyama Line of the subway was submerged in water, and all the lines were submerged in water. Some sections of trains on the Higashiyama Line stopped operating |
30 June 2015 | Nanjing | Continuous rainfall | Subway Line 3’s Mozhou East Road Station is submerged |
21 June 2016 | Washington | Rainstorm | The accumulated water rushed into the Cleveland Park subway station, causing the escalator to turn into a waterfall and temporarily closing the subway |
19 July 2016 | Beijing | Heavy rainfall | The subway stations of Line 4, Line 6, Line 7, Line 13, Line 14, and Line 15 have been temporarily closed. The Yihezhuang section of Line 4 has serious water seepage and has been suspended from operation |
13 June 2017 | Shenzhen | Typhoon | Metro Line 1 Chegongmiao Station is flooded with rainwater |
28 June 2018 | Chengdu | Continuous rainfall | A large amount of rainwater has infiltrated Guangfu Station on Metro Line 1, causing water accumulation in the station hall |
21 June 2019 | Wuhan | Rainstorm | Subway Line 11 Guanggu 7th Road Station Passage |
17 July 2019 | New York | Flood | Floods poured into the 23rd Street subway station in Queens due to rainstorm, and the subway cars were soaked |
12 February 2020 | Sydney | Continuous rainfall | The drainage pump in the underground tunnel is unable to cope with the heavy rain that poured down last weekend, and hundreds of meters of Sydney Metro is currently submerged in water |
29 June 2020 | Shijiazhuang | Heavy rainfall | Heavy rainfall caused water to enter the equipment room of Berlin Station on Metro Line 3, and the station was closed |
18 July 2021 | Beijing | Heavy rainfall | Rainwater poured into Jin’anqiao Station on Metro Line 6, causing severe waterlogging |
20 July 2021 | Zhengzhou | Continuous rainfall | The accumulated water washed over the water retaining wall and entered the subway station, causing a train on Line 5 to come to a forced stop. A major accident resulting in 12 deaths and 5 injuries |
1 September 2021 | New York | Hurricane Ida | About 46 locations in the subway system have experienced flooding |
1 June 2022 | Nanchang | Encounter extremely heavy rainstorm | The water barrier of Metro Line 2 has been washed away |
8 August 2022 | Seoul | Continuous rainfall | The subway station has been shut down due to water ingress, ground subsidence, and platform power outage |
5 September 2023 | Fuzhou | Typhoon Haikui | Multiple subway stations have accumulated water, and multiple lines have been flooded |
21 August 2024 | Tokyo | Sudden rainstorm | The subway station leaked rain like a waterfall, and multiple subway lines were flooded |
20 September 2024 | Shanghai | Typhoon Prasang | Multiple subway lines flooded |
Measurement Indicators | Very Low Resilience I Graed [0,2] | Low Resilience II Grade (2,4] | Medium Resilience III Grade (4,6] | High Resilience IV Grade (6,8] | Very High Resilience V Grade (6,8] | |
---|---|---|---|---|---|---|
A1 Resistance | A11 Height of water retaining wall/m | [0,0.3) | [0.3,0.5) | [0.5,1.0) | [1.0,1.5) | [1.5,3.0] |
A12 Height of flood control barrier/m | [0.5,0.8) | [0.8,1.0) | [1.0,1.2) | [1.2,1.5) | [1.5,1.8) | |
A13 Terrain conditions at the entrance and exit | Low | Very low | medium | high | Very high | |
A14 Flood situation information | not have | incomplete | Generally | complete | Very complete | |
A2 Recovery | A21 Drainage capacity coefficient of drainage ditch | [0,0.75) | [0.75,1) | [1.1.25) | [1.25,1.5) | [1.5,100] |
A22 Dense drainage network/(km·km−2) | [0,2) | [2,2.39) | [2.39,2.78) | [2.78.3.17) | [3.17,10] | |
A23 Proportion of professional rescue personnel/% | [0,5) | [5,10) | [10,20) | [20,30) | [30,100] | |
A24 Reserve situation of rescue supplies | not have | incomplete | Generally | complete | Very complete | |
A3 Adaptability | A31 Flood control emergency drill (times/month) | [0,1) | [1,2) | [2,3) | [3,4) | [4,12] |
A32 Quality of flood prevention emergency plan | Very low | low | medium | high | Very high | |
A33 Safety inspection and training (times/month) | [0,1) | [1,4) | [4,6) | [6,8) | [8,30] | |
A34 Flood prevention information management | Very low | low | medium | high | Very high |
Target Layer | Uncertainty Measurement Vector | Criteria Layer | Weight | Uncertainty Measurement Vector | Index Level | Weight | Uncertainty Measurement Vector |
---|---|---|---|---|---|---|---|
A | (0.032,0.253,0.478,0.237,0) | A1 | 0.217 | (0.047,0.201,0.346,0.406,0) | A11 | 0.233 | (0,0,0.24,0.76,0) |
A12 | 0.274 | (0,0,0.88,0.12,0) | |||||
A13 | 0.248 | (0.19,0.81,0,0,0) | |||||
A14 | 0.245 | (0,0,0.2,0.8,0) | |||||
A2 | 0.388 | (0,0.0467,0.549,0.384,0) | A21 | 0.249 | (0,0.16,0.84,0,0) | ||
A22 | 0.221 | (0,0,0.26,0.74,0) | |||||
A23 | 0.274 | (0,0.1,0.9,0,0) | |||||
A24 | 0.256 | (0,0,0.14,0.86,0) | |||||
A3 | 0.395 | (0.054,0.465,0.481,0,0) | A31 | 0.225 | (0,0.46,0.54,0,0) | ||
A32 | 0.278 | (0,0.18,0.82,0,0) | |||||
A33 | 0.227 | (0,0,0.42,0.58,0) | |||||
A34 | 0.270 | (0.2,0.8,0,0,0) |
Criteria Layer | ||
---|---|---|
Obstacle Factor | Mean of Obstacle Degree % | Sort |
A1 | 18.79 | 3 |
A2 | 41.84 | 1 |
A3 | 39.37 | 2 |
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Liu, J.; Zhang, S.; Zheng, W.; Hu, X. Resilience Measurement and Enhancement of Subway Station Flood Disasters Based on Uncertainty Theory. Appl. Sci. 2024, 14, 10930. https://doi.org/10.3390/app142310930
Liu J, Zhang S, Zheng W, Hu X. Resilience Measurement and Enhancement of Subway Station Flood Disasters Based on Uncertainty Theory. Applied Sciences. 2024; 14(23):10930. https://doi.org/10.3390/app142310930
Chicago/Turabian StyleLiu, Jingyan, Shuo Zhang, Wenwen Zheng, and Xinyue Hu. 2024. "Resilience Measurement and Enhancement of Subway Station Flood Disasters Based on Uncertainty Theory" Applied Sciences 14, no. 23: 10930. https://doi.org/10.3390/app142310930
APA StyleLiu, J., Zhang, S., Zheng, W., & Hu, X. (2024). Resilience Measurement and Enhancement of Subway Station Flood Disasters Based on Uncertainty Theory. Applied Sciences, 14(23), 10930. https://doi.org/10.3390/app142310930