A Dual-Layer Complex Network-Based Quantitative Flood Vulnerability Assessment Method of Transportation Systems
Abstract
:1. Introduction
- Propose a dual-layer network model for flood vulnerability assessment based on complex network theory.
- Integrate the interconnection between road networks and surface conditions into the assessment.
- Apply the assessment model to evaluate spatial and road flood vulnerabilities in Shenzhen.
2. Materials and Methods
2.1. Dataset
2.2. Proposed Method
2.3. Underlying Network Construction
2.3.1. Urban Flooding Vulnerability Index (UFVI) Calculation
- (1)
- First, measure weights using the EWM method.
- (2)
- Then, measure weights using the AHP method.
- (3)
- Finally, combine the weights calculated by the two methods.
2.3.2. Node Weight Calculation
2.3.3. Adjacent Matrix of the Network
2.4. Top-Level Network Construction
2.4.1. Road Disaster Vulnerability Analysis
2.4.2. Analysis of the Structural Significance of Roads
Algorithm 1 Yen’s K-Shortest Paths Algorithm |
Require: A graph G with vertices V and edges E represented as adjacency list, source vertex s, and target vertex t.
|
Algorithm 2 Damage and Recovery Assessment Algorithm |
Require: Road network vector data.
|
2.4.3. Assessing Roads’ Disaster-Bearing Capabilities from Road Conditions
2.4.4. Calculation of Overall Road Flood Vulnerability
3. Experiment
3.1. Study Area
3.2. Experimental Setup
3.2.1. Underlying Network Data Interpretation
Category | Indicator | Properties | Indicator Meaning |
---|---|---|---|
Nature | Rainfall | Positive | Rainfall is an important cause of flood and waterlogging disasters, so considering it an important indicator in the assessment is necessary [81]. |
Elevation | Negative | Altitude affects the pressure in urban storm-water systems; low-lying areas are more vulnerable to rain and flood damage [82,83]. | |
Vegetation distribution | Negative | Vegetation has water storage capacity and certain flood and waterlogging disaster resistance. | |
Water body distribution | Negative | The closer a region is to rivers and lakes, the greater the possibility of flood inundation [84]. | |
Economic | Night lighting | Positive | The higher the night light value and the more vibrant the economy, the greater the losses resulting from flood and waterlogging disasters [85,86]. |
Population distribution | Positive | The most direct impact of floods is on the urban population [19]. The greater the population density, the greater the damage caused by flood and waterlogging disasters. | |
Building height | Positive | Urban buildings are the main bearers of waterlogging [19]. The taller the buildings and the more developed the economy, the higher the losses caused by flood and waterlogging disasters. |
3.2.2. Top-Level Network Data Interpretation
3.2.3. Data Preprocessing
3.3. Network Construction and Analysis
3.3.1. Underlying Network Construction and Analysis
- UFVI calculation and analysis.
- Node weight calculation and analysis.
- Adjacent matrix of the network.
3.3.2. Top-Level Network Construction and Analysis
3.3.3. Dual-Layer Network Construction
3.4. Experimental Results
3.4.1. Analysis of Spatial Flood Vulnerability in Shenzhen
3.4.2. Analysis of Roadway Flood Vulnerability in Shenzhen City
4. Discussion
4.1. Waterlogging Point Verification
4.2. Comparison with Other Evaluation Methods
4.3. Measures to Reduce Flood Vulnerability
5. Conclusions
- (1)
- This study proposes a dual-layer complex network model for evaluating the flood vulnerability of urban transportation systems, and it examines the spatial distribution of flood vulnerability within cities. The model incorporates the complex interplay between road network structures and the ground surface, offering an analysis of road flood disaster vulnerability from the perspective of a multi-layer complex network. Using this model, the study quantitatively assessed and analyzed the flood vulnerability of Shenzhen’s road networks and spatial flood vulnerability.
- (2)
- According to the results, the overall vulnerability to flooding in Shenzhen is under control, but some areas exhibit higher vulnerability levels. The spatial distribution of flood vulnerability in Shenzhen City is pronounced, primarily concentrated in the northern and western regions, forming a vulnerability gradient that weakens progressively from west to east. The Nanshan, Futian, and Luohu districts of Shenzhen City are identified as having higher flood vulnerability and are situated in economically developed areas. The roads in Shenzhen with high flood vulnerability are primarily located in the central urban area of the southwest, with ten road sections including the Caitian Road North Section identified as highly vulnerable to flooding, requiring reasonable protection strategies.
- (3)
- The study conducted validation of the model assessment results through waterlogging point verification and proposed recommended preventative measures based on the assessment outcomes. The quantitative results of the model are consistent with the recorded distribution trend in inundation points, indicating that the model outcomes are authentic and reliable.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Data Name | Data Type | Details | Data Source |
---|---|---|---|
Elevation | Raster data | 2009, 30 m resolution | Geospatial Data Cloud |
Rainfall | Raster data | 2021, 30 m resolution | National Meteorological Science Data Center, China |
CLCD 1 | Raster data | 2021, 30 m resolution | National Earth System Science Data Center |
Nightlight | Raster data | 2021, 1000 m resolution | National Centers for Environmental Information (NCEI) |
Population density | Raster data | 2020, 1000 m resolution | WorldPop |
Building height | Raster data | 2023, 10 m resolution | CNBH Dataset [45] |
Water distribution | Vector data | 2021 | OpenStreetMap |
Road network | Vector data | 2021 | OpenStreetMap |
Traffic flow | Attribute data | 2023 | Shenzhen Road Traffic Operation Index System |
Lane information 2 | Attribute data | 2023 | Shenzhen Housing and Construction Bureau |
Scale | Meaning |
---|---|
1 | Equally important |
3 | Moderately more important |
5 | Strongly more important |
7 | Very strongly more important |
9 | Extremely more important |
2, 4, 6, 8 | Intermediate values |
Order | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 |
RI | 0.00 | 0.00 | 0.58 | 0.90 | 1.12 | 1.24 | 1.32 | 1.41 | 1.45 |
Matrix | CR | CI |
---|---|---|
Criteria Layer Matrix | 0 | 0 |
Scheme Layer Matrix 1 1 | ||
Scheme Layer Matrix 2 2 |
Indicator | Rainfall | Elevation | Vegetation | Water Body | Night Lighting | Population | Building Height |
---|---|---|---|---|---|---|---|
Unit | mm/year | m | m | m | / | people/km2 | m |
Data Name | Explanation |
---|---|
Road Network | The structure of the road network determines the structural importance of roads [87]. Structural importance can be analyzed through road network data. |
Traffic Volume | This reflects the number of vehicles passing on a road unit over time [88]. A higher traffic volume implies greater damage to the road and higher subsequent losses. In this experiment, the traffic volume of the roads is measured on an annual basis. |
Lane Grade | This is related to urban planning, in which different grades correspond to different construction standards. Higher grades imply greater safety and stronger resistance to damage. |
Lane Elevation | This is basic information about a road. Higher lanes have a lower water retention capacity and stronger flood resistance. |
Index | Weight |
---|---|
Vegetation | 0.125197903 |
Building Height | 0.137840032 |
Population | 0.124066944 |
Water Body | 0.246290453 |
Rainfall | 0.151109107 |
Elevation | 0.115716417 |
Nightlight | 0.099779145 |
Road ID | Road Name | RFV Value | Road ID | Road Name | RFV Value |
---|---|---|---|---|---|
100 | Caitian Road South Section | 0.59785 | 108 | Hongli Road West Section | 0.60161 |
111 | Xiangmi Lake Road | 0.60853 | 110 | Shennan Avenue West Section | 0.61369 |
33 | Guangshen Road | 0.61562 | 172 | Baoan Avenue | 0.64177 |
106 | Xinzhou Road North Section | 0.75087 | 98 | Caitian Road North Section | 0.80870 |
101 | Shennan Avenue East Section | 0.81012 | 104 | Hongli Road Middle Section | 0.84268 |
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Ding, J.; Wang, Y.; Li, C. A Dual-Layer Complex Network-Based Quantitative Flood Vulnerability Assessment Method of Transportation Systems. Land 2024, 13, 753. https://doi.org/10.3390/land13060753
Ding J, Wang Y, Li C. A Dual-Layer Complex Network-Based Quantitative Flood Vulnerability Assessment Method of Transportation Systems. Land. 2024; 13(6):753. https://doi.org/10.3390/land13060753
Chicago/Turabian StyleDing, Jiayu, Yuewei Wang, and Chaoyue Li. 2024. "A Dual-Layer Complex Network-Based Quantitative Flood Vulnerability Assessment Method of Transportation Systems" Land 13, no. 6: 753. https://doi.org/10.3390/land13060753
APA StyleDing, J., Wang, Y., & Li, C. (2024). A Dual-Layer Complex Network-Based Quantitative Flood Vulnerability Assessment Method of Transportation Systems. Land, 13(6), 753. https://doi.org/10.3390/land13060753