Risk Assessment of Landfalling Tropical Cyclones in China Based on Hazard Risk Theory
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data
2.2. Study Area
2.3. Methodology
2.3.1. Integrated Risk Assessment Theory for Tropical Cyclone Hazards
2.3.2. Analytic Hierarchy Process
2.3.3. ArcGIS Spatial Analysis
- Inverse Distance Weighting
- 2.
- ANUSPLIN Spatial Interpolation
2.3.4. Data Standardization
2.3.5. Processing of Evaluation Indicators and Calculation of Weights
- The Hazard of Hazard-Causing Factors
- 2.
- Sensitivity of Natural Carriers
- 3.
- Integrated Risk of Tropical Cyclone Hazards
3. Results and Discussion
3.1. Analysis of the Characteristics of Tropical Cyclone Hazards in China
3.1.1. Temporal Distribution Characteristics of Landfalling Tropical Cyclones
3.1.2. Distribution Characteristics of the Impact Intensity of Landfalling Tropical Cyclones
3.2. Hazard Analysis and Assessment of Causative Factors
3.3. Sensitivity Analysis and Assessment of Natural Carriers
3.4. Comprehensive Risk Analysis and Assessment of Tropical Cyclone Hazards
4. Conclusions
- Between 1949 and 2023, the overall number of tropical cyclone landfalls showed a fluctuating downward trend, with landfall frequency staying below the mean after 1986. In terms of intensity, strong tropical storms and typhoons accounted for the highest proportion, at 50.6% of the total, over the past 75 years. After 1980, the intensity of tropical cyclones making landfall in China increased by 12.4% to 14.7%. Landfalls primarily occurred from June to October each year, with August being the peak month. The occurrence of strong typhoons has gradually shifted from autumn to late summer, leading to more frequent typhoon events in the summer. Therefore, prevention efforts against tropical cyclone hazards should be intensified, particularly in summer and autumn.
- Along the eastern coastal areas of China, the hazard susceptibility due to the direct impacts of typhoons is highest, then gradually decreases inland. Some areas in Jiangxi Province experience abundant precipitation, while central Liaoning, Jilin, and western Heilongjiang are influenced by Mongolian cyclones, resulting in persistently high average daily wind speeds and significantly higher hazard levels, when compared to surrounding areas.
- The sensitivity of the natural environment is concentrated mainly in central Liaoning, Tianjin, eastern Hebei, Shandong, eastern Henan, central-northern Anhui, Jiangsu, and Shanghai, where flat terrain and low vegetation coverage are predominant.
- The risk distribution characteristics present a decreasing trend from south to north and from east to west. On a larger scale, the southeastern regions of China remain high-risk areas for tropical cyclones, necessitating continued emphasis on hazard prevention efforts in key provinces and cities. However, while enhancing prevention measures in high-risk areas, corresponding measures should also be tailored based on the specific hazard situation in inland cities.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Data | Source | Content | Purpose |
---|---|---|---|
The CMA-STI Tropical Cyclone Best Track Data [20,21] | Cma Tropical Cyclone Data Center “http://tcdata.typhoon.org.cn/ (accessed on 12 July 2023)” | Best track and intensity of landfalling tropical cyclones from 1949 to 2023 | Analysis of regions affected by historical tropical cyclone paths |
Meteorological Station Observation Records | China Meteorological Data Service Centre “http://data.cma.cn/ (accessed on 19 January 2023)” | The accumulated precipitation of each station at 20–20 h every day and the average wind speed of 10 min at an hourly height of 10 m from 1997 to 2021 | Risk data of hazard factors |
Topographic Elevation Data | Resource and Environmental Science Data Platform “https://www.resdc.cn/ (accessed on 19 January 2023)” | Longitude, latitude, and terrain with 90 m spatial resolution | Natural carrier sensitivity data |
MOD13A1 Product Data | EarthData “https://search.earthdata.nasa.gov/ (accessed on 20 May 2023)” | The year 2019 has 16-day intervals and 500 m NDVI spatial distribution data | Natural carrier sensitivity data |
Primary Index | Single Sort Weight | Positive/Negative Indicators | Secondary Index | Single Sort Weight | Positive/Negative Indicators | Total Sort Weight |
---|---|---|---|---|---|---|
The Hazard of Hazard-Causing Factors | 0.67 | Positive | Average Daily Rainfall | 0.68 | Positive | 0.45 |
Average Daily Wind Speed | 0.19 | Positive | 0.13 | |||
Average Daily Maximum Wind Speed | 0.13 | Positive | 0.09 | |||
Sensitivity of Natural Carriers | 0.33 | Positive | Terrain Elevation | 0.83 | Negative | 0.28 |
Vegetation Coverage | 0.17 | Negative | 0.05 |
Strength Level | Tropical Depression | Tropical Storm | Severe Tropical Storm | Typhoon | Severe Typhoon | Super Typhoon |
---|---|---|---|---|---|---|
Quantity | 116 | 128 | 158 | 166 | 54 | 18 |
Proportion/% | 18.1 | 20.0 | 24.7 | 25.9 | 8.4 | 2.8 |
Level | Low | Relatively Low | Moderate | Relatively High | High |
---|---|---|---|---|---|
Scoring range (×100) | H ≤ 16.44 | 16.44 < H ≤ 23.95 | 23.95 < H ≤ 36.98 | 36.98 < H ≤ 53.9 | 53.9 < H |
Level | Low | Relatively Low | Moderate | Relatively High | High |
---|---|---|---|---|---|
Scoring range (×100) | N ≤ 17.54 | 17.54 < N ≤ 34.25 | 34.25 < N ≤ 51.36 | 51.36 < N ≤ 68.79 | 68.79 < N |
Level | Low | Relatively Low | Moderate | Relatively High | High |
---|---|---|---|---|---|
Scoring range (×100) | CRTY ≤ 17.24 | 17.24 < CRTY ≤ 34.65 | 34.65 < CRTY ≤ 51.28 | 51.28 < CRTY ≤ 68.17 | 68.17 < CRTY |
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Xu, J.; Xue, X.; Yang, B.; Wang, W.; Wu, W.; Ji, X. Risk Assessment of Landfalling Tropical Cyclones in China Based on Hazard Risk Theory. Appl. Sci. 2024, 14, 5126. https://doi.org/10.3390/app14125126
Xu J, Xue X, Yang B, Wang W, Wu W, Ji X. Risk Assessment of Landfalling Tropical Cyclones in China Based on Hazard Risk Theory. Applied Sciences. 2024; 14(12):5126. https://doi.org/10.3390/app14125126
Chicago/Turabian StyleXu, Jin, Xinyue Xue, Bo Yang, Wen Wang, Wenxiang Wu, and Xiaodong Ji. 2024. "Risk Assessment of Landfalling Tropical Cyclones in China Based on Hazard Risk Theory" Applied Sciences 14, no. 12: 5126. https://doi.org/10.3390/app14125126
APA StyleXu, J., Xue, X., Yang, B., Wang, W., Wu, W., & Ji, X. (2024). Risk Assessment of Landfalling Tropical Cyclones in China Based on Hazard Risk Theory. Applied Sciences, 14(12), 5126. https://doi.org/10.3390/app14125126