Multi-Disaster Integrated Risk Assessment in City Range—A Case Study of Jinan, China
Abstract
:1. Introduction
2. Study Area
3. Methods
3.1. Methods of Disasters Hazard Assessment
3.1.1. Hazard Assessment Method of Geological Disaster
3.1.2. Hazard Assessment Method of Earthquake
- (1)
- The seismicity level of the seismic belt is measured by analyzing the seismicity of the seismic belt as a statistical unit.
- (2)
- Determine the magnitude distribution. Assume that seismic activity follows the G-R relationship:
- (3)
- According to different structures, different potential sources are divided. In the well-divided areas, the earthquake occurrence satisfies the assumption of uniform distribution, but the occurrence may be different in different focal areas.
- (4)
- It is assumed that the number of earthquakes in the potential source area accords with Poisson distribution.
- (5)
- Combining the effects of all statistical areas, if Ns statistical areas are related to the site, the total exceeding probability is:
3.1.3. Hazard Assessment Method of Flood
3.1.4. Hazard Assessment Method of Meteorology Disaster
3.1.5. Risk Assessment Method of Fire
3.2. Index System
4. Results
4.1. Result of Disaster Hazard Assessment
4.2. Result of Exposure Assessment
4.3. Result of Vulnerability Assessment
4.4. Result of Resilience Assessment
4.5. Result of Multi-Disaster Integrated Risk Assessment
5. Discussion
5.1. Suggestions and Measures for Disaster Prevention and Mitigation
- Based on the results of the geological hazard risk analysis in this study, the Jinan government should allocate special funds to carry out engineering measures such as cutting slopes and building walls at the geological collapse sites. The results show that the hazard level of geological disasters in the urban area of Jinan, Laiwu, and Zhangqiu is relatively high, so it is necessary to carry out a geological survey for the mine goafs in Zhangqiu and Laiwu, clarify the distribution range of the goafs, predict the ecological environment and geological problems of the existing mines, hold expert seminars to propose reasonable and efficient mine restoration and management plans.
- The research result shows the hazard level of an earthquake in Jinan is low, but the earthquake disaster has a wide range of impacts, is easy to break out, and is difficult to predict. Therefore, the prevention of earthquake disasters should focus on the seismic evaluation and reinforcement of buildings, comprehensively checking the seismic grade of urban houses, schools, reservoirs, dams, and dangerous chemical plants in Jinan, and reinforcing or rebuilding old houses that cannot meet the seismic fortification requirements in urban and rural areas. At the same time, the results show the level of an earthquake in the southeast is relatively high, so the layout of seismic stations should be optimized, and active fault detection should be carried out.
- The hazard level of floods is low, and the occurrence of urban flood disasters can be effectively prevented by carrying out protection and control work on the Yellow River, Xiaoqing River, Baiyun Lake, etc. Combining big data intelligent analysis and 5G technology, improve the intelligence of the hydrological monitoring network and do a good job in flood disaster prediction and early warning in Laiwu.
- The government should focus on strengthening the construction of irrigation, drainage, power, and transportation lines in agricultural planting areas with high meteorological disaster hazards levels, such as the south of Laiwu and the middle of Zhangqiu, to mitigate the impact of drought, rainstorm, and cold wave on agricultural production.
- The study shows that the hazard of fire in Jinan presents a spatial distribution trend of spreading from the urban area to the surrounding areas. The government should strengthen the supervision of flammable and explosive materials in urban areas and districts, counties, and cooperate with grass-roots mass autonomous organizations to avoid fire.
5.2. Suggestions and Measures for Territorial Spatial Planning
5.3. Research Deficiencies and Prospects
6. Conclusions
- The hazard level of geological disasters, meteorological disasters, and fires in the central part of Jinan is relatively high. The risk level of geological disasters, earthquakes, floods, meteorology, and fires in the southeast part of Jinan is high, while the risk level of disasters in other areas is low.
- Jinan has a low level of disaster hazard, exposure, and vulnerability, and a high level of resilience. The areas with high disaster exposure are concentrated in central Jinan and Laiwu, the areas with a high level of disaster vulnerability are scattered throughout the city, and the areas with high resilience levels are mainly concentrated in urban areas of Jinan and urban areas of all districts and counties. The overall level of multi-disaster integrated risk in Jinan is at a medium or low level, the high-level areas are mainly distributed in the urban areas of Jinan, Zhangqiu, and Laiwu.
- 24.9% of Jinan’s GDP, 21.1% of its population, and 41.8% of the buildings are distributed in the medium and high multi-disaster integrated risk level areas that account for 14.3% of Jinan’s total area. The risk assessment results of Jinan are of great significance to the implementation of disaster prevention and mitigation projects and the compilation of territorial spatial planning, which can effectively reduce the planning cost and improve scientific and effective planning.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Category | Weight | Index | Weight |
---|---|---|---|
Hazard | 0.0738 | Risk of geological disaster | 0.0172 |
Risk of earthquake | 0.0161 | ||
Risk of floods | 0.0145 | ||
Risk of meteorological disaster | 0.0131 | ||
Risk of fire risk | 0.0129 | ||
Exposure | 0.1482 | Population density | 0.0429 |
Economic density | 0.0303 | ||
Building density | 0.0607 | ||
Infrastructure density | 0.0143 | ||
Vulnerability | 0.1889 | Proportion of primary sector of the economy | 0.1567 |
Proportion of old people and children | 0.0322 | ||
Resilience | 0.5891 | Emergency evacuation capability 1 | 0.1281 |
Emergency water supply capability 2 | 0.0848 | ||
Emergency fire fighting facilities | 0.0383 | ||
Emergency medical facilities | 0.2095 | ||
Emergency placement capacity | 0.0643 | ||
Density of village (community) | 0.0641 |
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Chang, J.; Yin, Z.; Zhang, Z.; Xu, X.; Zhao, M. Multi-Disaster Integrated Risk Assessment in City Range—A Case Study of Jinan, China. Int. J. Environ. Res. Public Health 2023, 20, 3483. https://doi.org/10.3390/ijerph20043483
Chang J, Yin Z, Zhang Z, Xu X, Zhao M. Multi-Disaster Integrated Risk Assessment in City Range—A Case Study of Jinan, China. International Journal of Environmental Research and Public Health. 2023; 20(4):3483. https://doi.org/10.3390/ijerph20043483
Chicago/Turabian StyleChang, Jun, Zuotang Yin, Zhendong Zhang, Xiaotong Xu, and Min Zhao. 2023. "Multi-Disaster Integrated Risk Assessment in City Range—A Case Study of Jinan, China" International Journal of Environmental Research and Public Health 20, no. 4: 3483. https://doi.org/10.3390/ijerph20043483
APA StyleChang, J., Yin, Z., Zhang, Z., Xu, X., & Zhao, M. (2023). Multi-Disaster Integrated Risk Assessment in City Range—A Case Study of Jinan, China. International Journal of Environmental Research and Public Health, 20(4), 3483. https://doi.org/10.3390/ijerph20043483