Flood Risk Assessment Based on a Cloud Model in Sichuan Province, China
Abstract
:1. Introduction
2. Related Work
3. Materials and Methods
3.1. An Overview of the Study Area
3.2. The Establishment of the Sichuan River Basin Flood Evaluation Indicator System
3.2.1. Hazard Indicators of Disaster-Causing Factors
- (1)
- Precipitation in the past 1 h
- (2)
- Precipitation for the previous 12 and 24 h
- (3)
- Precipitation for the past 5 days
3.2.2. Indicators of the Disaster-Conceiving Environment
- (1)
- River network density
- (2)
- Topographic factors
- (3)
- Factors of secondary geological disasters
3.2.3. Indicators of Exposure to Disaster-Bearing Bodies
- (1)
- Population density and distribution
- (2)
- GDP density and distribution
- (3)
- Facilities and assets such as roads
- (4)
- Hazardous chemical enterprises.
3.2.4. Indicators of Regional Disaster Resilience
3.3. Data Collection and Processing
- The basic geographic data, including river network and water system data, administrative divisions, etc., were obtained from the National Catalogue Service for Geographic Information (NCSGI) of China, in which the final river data used were obtained via DEM correction based on vector river data.
- Elevation data were 12.5 m resolution DEM data downloaded from the U.S. Geological Survey (USGS).
- Meteorological data on precipitation were obtained from the China Meteorological Data Sharing Service Network.
- Socio-economic data were obtained from the Sichuan Statistical Yearbook of the Sichuan Provincial Bureau of Statistics.
3.4. A Quantitative Assessment of Flood Risk Based on Cloud Modeling and the Entropy Weighting Method
- (1)
- Set the factor area and comment area of the evaluation object
- (2)
- Calculate expectation, entropy, and super entropy
- (3)
- Calculate indicator membership degree
- (4)
- Using entropy weight method to determine the weights of indicators
- (5)
- Calculate fuzzy subsets
4. Case Studies and Results
5. Discussion
5.1. Analysis of the Results
5.2. Advantages and Limitations
6. Conclusions and Future Work
- (1)
- We comprehensively considered the causes of disaster losses and the formation mechanisms of floods; we analyzed the disaster-causing factors, disaster-conceiving environments, disaster-bearing bodies, and the regional disaster response capacity; and we established a flood risk level assessment indicator system. A more complete, reliable and timely indicator system was constructed by increasing the indicators of human impact indicators and increasing the weight of rainfall indicators, which could realize the real-time risk assessment of daily flooding.
- (2)
- A comprehensive assessment model based on cloud modeling, entropy value, and GIS technology was constructed. The entropy weighting method could objectively evaluate the weights of the indicators, and the cloud model could realize the uncertainty mapping from the quantitative value of each indicator to the qualitative assessment level, which could be used to quantitatively predict and assess the risk of continuous flooding.
- (1)
- Since remote sensing data products can provide input parameters for distributed hydrologic models, future studies will use the kilometer-scale grid as the unit of calculation instead of county-level administrative divisions, and remote sensing data products such as land cover and evapotranspiration data will be added to disaster-conceiving environmental indicators to further improve the accuracy of the assessment.
- (2)
- We will further identify high-risk areas and propose countermeasures by simulating and extrapolating the flood inundation process under different scenarios.
- (3)
- Since there are some emerging spatiotemporal models, such as machine learning models and social media data—such as Twitter data—which are used in other applications (e.g., land use suitability analysis, post-earthquake building usability assessment, estimation of local-scale domestic electricity energy consumption) [36,37,38], we will try to apply these emerging models to flood risk assessment in the future.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Category | Indicator | Calculation Method | Correlation | Serial Number |
---|---|---|---|---|
disaster-causing factors | Precipitation for the previous 1 h | Precipitation for the previous 1 h/area | positive | U1 |
Precipitation for the previous 12 h | Precipitation for the previous 12 h/area | positive | U2 | |
Precipitation for the previous 24 h | Precipitation for the previous 24 h/area | positive | U3 | |
Precipitation for the previous 5 days | Precipitation for the previous 5 days | positive | U4 | |
disaster-conceiving environment | Standard deviation of elevation | negative | U5 | |
River network density | Total river length/area | positive | U6 | |
Number of flash flood hazard zones | Number of flash flood hazard zones | positive | U7 | |
disaster-bearing body | Population density | Total population volume/area | positive | U8 |
GDP density | Total GDP volume/area | positive | U9 | |
Number of villages and towns along the river | Number of villages and towns along the river | positive | U10 | |
Number of villages and towns affected by flash floods | Number of villages and towns 1 km from flash flood hazardous area | positive | U11 | |
Number of hazardous chemical plants | Number of hazardous chemical plants | positive | U12 | |
regional disaster resilience capacity | Number of rescue teams | Number of rescue teams | negative | U13 |
Number of material warehouses | Number of material warehouses | negative | U14 |
Indicator | No Risk | Very Low Risk | Medium Risk | High Risk | Very High Risk |
---|---|---|---|---|---|
U1 | 0.0000–0.1377 | 0.1377–0.5624 | 0.5624–1.2269 | 1.2269–1.8958 | 1.8958~ |
U2 | 0.2154~6.6398 | 6.6398~15.9247 | 15.9247~27.1622 | 27.1622~40.6293 | 40.6293~ |
U3 | 0.2502~8.9546 | 8.9546~18.6038 | 18.6038~32.2156 | 32.2156~47.2529 | 47.2529~ |
U4 | 0.0000–671.5647 | 671.5647–1675.8150 | 1675.8150–2987.6875 | 2987.6875–5022.2132 | 5022.2132~ |
U5 | 1159.2606–730.1063 | 730.1063–472.6649 | 472.6649–252.1958 | 252.1958–102.7656 | 102.7656~ |
U6 | 0.3317–0.5285 | 0.5285–0.7112 | 0.7112–0.9385 | 0.9385–1.1988 | 1.1988~ |
U7 | 0.0000–79.0000 | 79.0000–162.0000 | 162.0000–278.0000 | 278.0000–434.0000 | 434.0000~ |
U8 | 4.4817–295.3065 | 295.3065–943.1672 | 943.1672–2653.9434 | 2653.9434–8644.5870 | 8644.5870~ |
U9 | 3.7109–3718.8462 | 3718.8462–12,817.41 | 12,817.4100–24,847.9900 | 24,847.9900–89,061.2400 | 89,061.2400~ |
U10 | 1.0000–17.0000 | 17.0000–34.0000 | 34.0000–54.0000 | 54.0000–78.0000 | 78.0000~ |
U11 | 0.0000–83.0000 | 83.0000–176.0000 | 176.0000–299.0000 | 299.0000–454.0000 | 454.0000~ |
U12 | 3.0000–16.0000 | 16.0000–35.0000 | 35.0000–59.0000 | 59.0000–102.0000 | 102.0000~ |
U13 | 308.0000–219.0000 | 219.0000–109.0000 | 109.0000–53.0000 | 53.0000–20.0000 | 20.0000~ |
U14 | 87.0000–51.0000 | 51.0000–30.0000 | 30.0000–18.0000 | 18.0000–7.0000 | 7.0000~ |
Indicator | No Risk | Very Low Risk | Medium Risk | High Risk | Very High Risk |
---|---|---|---|---|---|
U1 | (0.0135, 0.0259, 0.0146) | (0.2993, 0.1204, 0.0418) | (0.8556, 0.1924, 0.0373) | (1.6119, 0.2436, 0.0619) | (2.5953, 0.4018, 0.1264) |
U2 | (2.8692, 2.0870, 0.8268) | (10.5962, 3.2085, 1.4153) | (21.5811, 2.8964, 0.7160) | (32.8361, 4.0261, 1.2196) | (48.6857, 5.5945, 2.1812) |
U3 | (5.0197, 2.2360, 0.1818) | (13.2427, 3.0634, 1.0714) | (25.1203, 3.8477, 1.1188) | (39.4833, 4.014, 1.1764) | (55.6064, 7.0220, 3.1144) |
U4 | (288.1342, 218.1925, 87.7172) | (1134.1979, 308.0468, 105.3966) | (2268.6742, 390.7631, 97.8993) | (3889.4457, 521.0995, 110.7841) | (6870.6748, 1459.5093, 308.6206) |
U5 | (876.9410, 107.5732, 35.0412) | (595.5089, 71.1196, 20.7734) | (348.4263, 62.7807, 22.3094) | (162.5734, 37.9990, 10.7352) | (52.2913, 26.2900, 9.1390) |
U6 | (0.4593, 0.0457, 0.0054) | (0.6169, 0.0494, 0.0178) | (0.8064, 0.0693, 0.0260) | (1.0731, 0.0740, 0.0199) | (1.4087, 0.1519, 0.0637) |
U7 | (42.1333, 28.3342, 11.5988) | (117.9437, 24.6416, 8.6041) | (209.2391, 32.7899, 10.6769) | (363.4000, 47.0494, 16.9884) | (535.0000, 78.2068, 40.6830) |
U8 | (91.3559, 87.3037, 13.0714) | (504.2265, 149.7726, 2.5215) | (1563.4293, 523.8549, 182.7838) | (5649.2651, 3754.0792, 2262.9975) | (11,791.2108, 1883.9385, 210.9787) |
U9 | (908.1125, 931.3529, 173.3850) | (7389.8493, 2788.6865, 1013.7188) | (18,437.3508, 4325.8637, 1245.1571) | (63,303.1645, 24,098.2071, 4986.6123) | (124,642.8009, 29,729.9139, 15,463.0437) |
U10 | (9.4828, 5.2100, 2.1490) | (25.3600, 5.0494, 1.657) | (42.5424, 6.1488, 2.6745) | (65.2581, 7.3086, 2.3688) | (92.4500, 9.6881, 7.4691) |
U11 | (44.2264, 28.8552, 9.0176) | (126.9306, 27.9733, 11.3466) | (224.4222, 35.3230, 13.6335) | (375.9231, 48.8718, 12.6156) | (551.7500, 91.8053, 52.3261) |
U12 | (8.1379, 3.6601, 1.1751) | (24.8033, 5.7240, 1.3607) | (45.7500, 6.5437, 1.8960) | (71.8889, 12.7807, 3.2357) | (391.0000, 362.2078, 218.3426) |
U13 | (263.5000, 55.7725, 33.6202) | (163.6667, 46.2334, 10.9834) | (76.8889, 12.7033, 5.8454) | (31.7447, 9.3252, 1.6515) | (9.2966, 6.0090, 2.2095) |
U14 | (69.0000, 22.5597, 13.5992) | (37.8889, 5.6941, 1.7348) | (22.56, 3.8943, 1.4280) | (13.2500, 3.2551, 0.8612) | (2.0252, 1.4591, 0.5312) |
Indicator | No Risk | Very Low Risk | Medium Risk | High Risk | Very High Risk |
---|---|---|---|---|---|
U1 | 0.0000 | 0.4136 | 0.1220 | 0.0006 | 0.0003 |
U2 | 0.0000 | 0.0000 | 0.0006 | 0.7664 | 0.1054 |
U3 | 0.0000 | 0.0000 | 0.0270 | 0.7735 | 0.0820 |
U4 | 0.9329 | 0.0701 | 0.0003 | 0.0000 | 0.0008 |
U5 | 0.0000 | 0.0001 | 0.0554 | 0.9464 | 0.0021 |
U6 | 0.5797 | 0.1235 | 0.0052 | 0.0000 | 0.0004 |
U7 | 0.0017 | 0.0486 | 0.7391 | 0.0119 | 0.0085 |
U8 | 0.7787 | 0.0621 | 0.0586 | 0.3358 | 0.0000 |
U9 | 0.7966 | 0.0833 | 0.0036 | 0.0472 | 0.0122 |
U10 | 0.0000 | 0.0039 | 0.6945 | 0.0798 | 0.0179 |
U11 | 0.0472 | 0.9968 | 0.0603 | 0.0003 | 0.0095 |
U12 | 0.0000 | 0.0169 | 0.8847 | 0.1030 | 0.5288 |
U13 | 0.0230 | 0.0309 | 0.0219 | 0.9964 | 0.0162 |
U14 | 0.0702 | 0.0000 | 0.0006 | 0.0062 | 0.7135 |
Metrics | U1 | U2 | U3 | U4 | U5 | U6 | U7 |
Hj | 0.9978 | 0.9973 | 0.9972 | 0.9983 | 0.9979 | 0.9980 | 0.9979 |
Wj | 0.0960 | 0.1163 | 0.1218 | 0.0745 | 0.0922 | 0.0850 | 0.0906 |
Metrics | U8 | U9 | U10 | U11 | U12 | U13 | U14 |
Hj | 0.9987 | 0.9989 | 0.9981 | 0.9982 | 0.9996 | 0.9996 | 0.9995 |
Wj | 0.0576 | 0.0467 | 0.0822 | 0.0793 | 0.0187 | 0.0164 | 0.0226 |
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Liu, J.; Wang, K.; Lv, S.; Fan, X.; He, H. Flood Risk Assessment Based on a Cloud Model in Sichuan Province, China. Sustainability 2023, 15, 14714. https://doi.org/10.3390/su152014714
Liu J, Wang K, Lv S, Fan X, He H. Flood Risk Assessment Based on a Cloud Model in Sichuan Province, China. Sustainability. 2023; 15(20):14714. https://doi.org/10.3390/su152014714
Chicago/Turabian StyleLiu, Jian, Kangjie Wang, Shan Lv, Xiangtao Fan, and Haixia He. 2023. "Flood Risk Assessment Based on a Cloud Model in Sichuan Province, China" Sustainability 15, no. 20: 14714. https://doi.org/10.3390/su152014714
APA StyleLiu, J., Wang, K., Lv, S., Fan, X., & He, H. (2023). Flood Risk Assessment Based on a Cloud Model in Sichuan Province, China. Sustainability, 15(20), 14714. https://doi.org/10.3390/su152014714