Dynamic Assessment of the Impact of Flood Disaster on Economy and Population under Extreme Rainstorm Events
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Sources
2.3. Methods
2.3.1. Principle and Method of Urban Flood Hydrodynamic Model
- h2D < h1D, the node water level was higher than the surface water level, the water flowed from the drainage network to the surface;
- h1D < Z2D < h2D, the node water level was lower than the surface elevation, the water flowed from the surface to the drainage network;
- Z2D < h1D < h2D, the node water level was higher than the surface elevation and lower than the surface water level, the water flowed from the surface to the drainage network;
- Z2D = h1D = h2D, the node water level, surface elevation, and surface water level were all equal, and were in a critical state of water exchange. In this case, it was assumed that no water exchange occurred.
2.3.2. Flood Hazard Classification Method
2.3.3. Spatialization Method of Fine-Resolution GDP and Population
2.3.4. Dynamic Assessment Method
3. Results
3.1. Urban Flood Simulation Results
3.1.1. Model Rationality Verification
3.1.2. Flood Simulation Results
3.2. Flood Hazard Classification Results
3.3. Flood Disaster Loss Dynamic Assessment
3.3.1. Spatialization of Fine-Resolution GDP and Population Data Based on POIs Kernel Density
3.3.2. Dynamic Assessment of the Effect of Flood Disaster on GDP
3.3.3. Dynamic Assessment of the Effect of Flood Disaster on Population
4. Discussion
4.1. The Development Rules of Flood Disaster Loss under Different Flood Hazards
4.2. Suggestions on Measures to Reduce Flood Disaster Loss
4.3. Uncertainty in Research
4.3.1. The Uncertainty of Flood Simulation
4.3.2. The Uncertainty of Flood Disaster Loss Assessment
4.3.3. The Uncertainty of Machine Learning
4.4. Future Studies
- The prediction accuracy of the GDP spatial distribution data was 65%. Future studies should try some methods to solve this problem, such as adding training samples, increasing the type of input variables, or comparing the accuracy of different machine learning methods;
- Machine learning algorithms have been widely used, but they are rarely used in the field of urban hydrology. This study attempted to use machine learning algorithms to obtain fine-resolution socio-economic data, which provided data for a flood disaster loss assessment. Future studies should explore the application of machine learning algorithms in the field of urban hydrology such as obtaining flood inundation maps based on machine learning to improve the timeliness of flood simulations;
- The results of this study showed that the return period had an effect on the initial time and peak occurrence time of the flood disaster. However, only two rainstorm situations were set in this study, resulting in limitations in the conclusions. Future studies will construct a variety of rainstorm situations by setting different peak coefficients, rainfall durations, and return periods to investigate the dynamic assessment of flood disaster loss under various rainstorm designs, and to identify the influence of rainfall characteristics on the development process of flood disaster loss;
- Different from property distribution, people should adopt different risk avoidance strategies, which would lead to a great uncertainty when using a static assessment method to calculate the number of the affected population. Therefore, future research should combine the multi-agent model to study the impact of different risk avoidance strategies on the number of the affected population and improve the accuracy of the assessment model.
5. Conclusions
- Under extreme rainstorm conditions, flood disaster had a serious impact on economy and population. For the 50- and 100-year return periods, the maximum direct economic loss was 2.77 billion CNY and 3.18 billion CNY, respectively, accounting for 2.63% and 3.02% of the total GDP, respectively. The affected population was 160,303 and 189,924, respectively, accounting for 14.76% and 17.49% of the total population, respectively;
- The higher degree flood hazard areas were mainly distributed on built-up land. Moreover, with the increase in the return period, the higher degree flood hazard areas had a greater proportion of increase;
- In terms of the occurrence time of flood disaster loss, the initial time and the peak time of flood disaster loss increased with an increasing flood hazard degree and decreased with the increase in the return period. In terms of the flood disaster loss, in moderate-, significant-, and extreme-degree hazard areas, the total loss increased with the increase in the return period, and the unit loss decreased with the increase in the return period;
- Under the design rainstorm scenario of the Chicago rain pattern, the process of flood loss development had a stage of rapid increase.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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CN Value | Class A Soil | Class B Soil | Class C Soil | Class D Soil |
---|---|---|---|---|
Waters | 98 | 98 | 98 | 98 |
Woodland | 30 | 55 | 70 | 77 |
Farmland | 49 | 69 | 79 | 84 |
Built-up land | 89 | 92 | 94 | 95 |
Unused land | 81 | 88 | 91 | 93 |
Type of Land Use | Waters | Woodland | Farmland | Built-Up Land | Unused Land |
---|---|---|---|---|---|
Manning coefficient | 0.027 | 0.15 | 0.035 | 0.016 | 0.025 |
Depth (cm) | Number of WPs | The Average Inundation Depth (cm) | ||
---|---|---|---|---|
50-Year | 100-Year | 50-Year | 100-Year | |
<15 | 22 | 20 | 4 | 3 |
15–30 | 25 | 24 | 22 | 23 |
>30 | 34 | 37 | 67 | 70 |
Land Use Types | Return Period | Flood Hazard Degrees | |||
---|---|---|---|---|---|
Low | Moderate | Significant | Extreme | ||
Woodland | 50-year | 95.39 | 2.50 | 0.50 | 0.02 |
100-year | 94.04 | 3.45 | 0.86 | 0.06 | |
Farmland | 50-year | 65.86 | 1.55 | 0.35 | 0.05 |
100-year | 64.94 | 2.22 | 0.57 | 0.09 | |
Built-up land | 50-year | 119.92 | 25.04 | 3.83 | 0.23 |
100-year | 113.64 | 28.86 | 6.13 | 0.38 |
Algorithm | Hyperparameters | R-Square | Hyperparameters | R-Square | ||
---|---|---|---|---|---|---|
GDP | Population | |||||
Train Set | Test Set | Train Set | TEST SET | |||
Random Forest | bootstrap: ‘True’ max_depth: 30 max_features: ‘log2′ min_samples_leaf: 1 min_samples_split: 2 n_estimators: 260 | 0.9244 | 0.6549 | bootstrap: ‘True’ max_depth: 80 max_features: ‘auto’ min_samples_leaf: 1 min_samples_split: 2 n_estimators: 340 | 0.9742 | 0.8368 |
Disaster-Bearing Bodies | Return Period | The Initial Time of Flood Disaster Loss (thmin) | Trend | |||
---|---|---|---|---|---|---|
Low | Moderate | Significant | Extreme | |||
GDP | 50-year | 3 | 18 | 30 | 45 | ↑ |
100-year | 3 | 15 | 24 | 39 | ↑ | |
Trend | --- | ↓ | ↓ | ↓ | ||
Population | 50-year | --- | 18 | 30 | 45 | ↑ |
100-year | --- | 18 | 27 | 42 | ↑ | |
Trend | --- | ↓ | ↓ | ↓ |
Disaster-Bearing Bodies | Return Period | The Peak Time of Flood Disaster Loss (thmin) | Trend | |||
---|---|---|---|---|---|---|
Low | Moderate | Significant | Extreme | |||
GDP | 50-year | 63 | 123 | 264 | 330 | ↑ |
100-year | 57 | 120 | 192 | 246 | ↑ | |
Trend | ↓ | ↓ | ↓ | ↓ | ||
Population | 50-year | --- | 120 | 129 | 345 | ↑ |
100-year | --- | 120 | 126 | 324 | ↑ | |
Trend | --- | --- | ↓ | ↓ |
Disaster-Bearing Bodies | Return Period | Statistical Objects | Flood Loss under Different Flood Hazard Degrees | |||
---|---|---|---|---|---|---|
Low | Moderate | Significant | Extreme | |||
GDP | 50-year | Total | 106,667.12 | 133,422.35 | 45,500.95 | 7301.00 |
Unit area | 347.79 | 4583.16 | 8544.30 | 12,577.09 | ||
100-year | Total | 110,196.26 | 151,310.90 | 67,224.17 | 9032.20 | |
Unit area | 356.42 | 4382.20 | 7962.21 | 12,451.33 | ||
Population | 50-year | Total | --- | 136,231 | 23,075 | 2197 |
Unit area | --- | 4683 | 4694 | 3791 | ||
100-year | Total | --- | 152,211 | 36,242 | 2785 | |
Unit area | --- | 4408 | 4503 | 3692 |
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Su, X.; Shao, W.; Liu, J.; Jiang, Y.; Wang, K. Dynamic Assessment of the Impact of Flood Disaster on Economy and Population under Extreme Rainstorm Events. Remote Sens. 2021, 13, 3924. https://doi.org/10.3390/rs13193924
Su X, Shao W, Liu J, Jiang Y, Wang K. Dynamic Assessment of the Impact of Flood Disaster on Economy and Population under Extreme Rainstorm Events. Remote Sensing. 2021; 13(19):3924. https://doi.org/10.3390/rs13193924
Chicago/Turabian StyleSu, Xin, Weiwei Shao, Jiahong Liu, Yunzhong Jiang, and Kaibo Wang. 2021. "Dynamic Assessment of the Impact of Flood Disaster on Economy and Population under Extreme Rainstorm Events" Remote Sensing 13, no. 19: 3924. https://doi.org/10.3390/rs13193924
APA StyleSu, X., Shao, W., Liu, J., Jiang, Y., & Wang, K. (2021). Dynamic Assessment of the Impact of Flood Disaster on Economy and Population under Extreme Rainstorm Events. Remote Sensing, 13(19), 3924. https://doi.org/10.3390/rs13193924