| Literature DB >> 31861677 |
Junfei Chen1,2, Qian Li2, Huimin Wang1,2, Menghua Deng1,2.
Abstract
The Yangtze River Delta (YRD) is one of the most developed regions in China. This is also a flood-prone area where flood disasters are frequently experienced; the situations between the people-land nexus and the people-water nexus are very complicated. Therefore, the accurate assessment of flood risk is of great significance to regional development. The paper took the YRD urban agglomeration as the research case. The driving force, pressure, state, impact and response (DPSIR) conceptual framework was established to analyze the indexes of flood disasters. The random forest (RF) algorithm was used to screen important indexes of floods risk, and a risk assessment model based on the radial basis function (RBF) neural network was constructed to evaluate the flood risk level in this region from 2009 to 2018. The risk map showed the I-V level of flood risk in the YRD urban agglomeration from 2016 to 2018 by using the geographic information system (GIS). Further analysis indicated that the indexes such as flood season rainfall, urban impervious area ratio, gross domestic product (GDP) per square kilometer of land, water area ratio, population density and emergency rescue capacity of public administration departments have important influence on flood risk. The flood risk has been increasing in the YRD urban agglomeration during the past ten years under the urbanization background, and economic development status showed a significant positive correlation with flood risks. In addition, there were serious differences in the rising rate of flood risks and the status quo among provinces. There are still a few cities that have stabilized at a better flood-risk level through urban flood control measures from 2016 to 2018. These results were basically in line with the actual situation, which validated the effectiveness of the model. Finally, countermeasures and suggestions for reducing the urban flood risk in the YRD region were proposed, in order to provide decision support for flood control, disaster reduction and emergency management in the YRD region.Entities:
Keywords: RBF neural network; YRD urban agglomeration; random forest (RF); regulation countermeasure; urban flood
Mesh:
Year: 2019 PMID: 31861677 PMCID: PMC6982166 DOI: 10.3390/ijerph17010049
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1The regional schematic diagram of Yangtze River Delta (YRD) urban agglomeration.
Figure 2The conceptual framework of driving force, pressure, state, impact and response (DPSIR).
Figure 3The schematic diagram of the random forest (RF) algorithm.
Figure 4The iterative flow chart of the gradient descent method.
Figure 5The diagram of radial basis function (RBF) structure.
Significance assessment of indexes based on RF model.
| Index Code | Index Name | Index Weight |
|---|---|---|
| I1 | Flood season rainfall (mm) | 0.0923 |
| I2 | Elevation (m) | 0.0826 |
| I3 | Urbanization rate (%) | 0.0473 |
| I4 | Population density (Person/km2) | 0.0608 |
| I5 | Urban impervious area ratio (%) | 0.0746 |
| I6 | GDP per square kilometer of land (¥0.1B/km2) | 0.0648 |
| I7 | Per capita water resources (L) | 0.0272 |
| I8 | Arable land per capita (10,000/km2) | 0.0564 |
| I9 | Water area ratio (%) | 0.0416 |
| I10 | Vegetation coverage (%) | 0.0559 |
| I11 | Density of highway network in built-up area (km/km2) | 0.0492 |
| I12 | Density of drainage network in built-up area (km/km2) | 0.0501 |
| I13 | Direct economic loss from flood disasters (¥0.1B) | 0.046 |
| I14 | Flood area population (10,000) | 0.037 |
| I15 | Municipal flood control investment per unit area (¥10,000) | 0.0849 |
| I16 | Public disaster response capacity | 0.0463 |
| I17 | Emergency rescue capacity of public administration departments | 0.0494 |
| I18 | Reserve and distribution capacity of flood control materials | 0.0337 |
Figure 6Index significance assessment results based on RF.
Classification standard of flood risk rating index.
| First-Class Indicator | Second-Class Indicator | I | II | III | IV | V |
|---|---|---|---|---|---|---|
| Driving factor | Flood season rainfall (mm) | 0–250 | 250–500 | 500–750 | 750–1000 | 1000–1250 |
| Elevation (m) | 100–20 | 20–15 | 15–10 | 10–5 | 5–0 | |
| Urbanization rate (%) | 0–0.4 | 0.4–0.5 | 0.5–0.6 | 0.6–0.7 | 0.7–1 | |
| Pressure factor | Population density (Persons/ km2) | 1000–1500 | 1500–2000 | 2000–2500 | 2500–3000 | 3000–5000 |
| Urban impervious area ratio (%) | 0–0.3 | 0.3–0.4 | 0.4–0.5 | 0.5–0.6 | 0.6–1 | |
| GDP per square kilometer of land (¥0.1B/km2) | 0–1 | 1–2 | 2–3 | 3–4 | 4–10 | |
| State factor | Arable land per capita (10,000/km2) | 0.5–0.2 | 0.2–0.15 | 0.15–0.1 | 0.1–0.05 | 0.05–0 |
| Water area ratio (%) | 0.5–0.2 | 0.2–0.15 | 0.15–0.1 | 0.1–0.05 | 0.05–0 | |
| Vegetation coverage (%) | 10–6 | 6–5 | 5–4 | 4–2 | 2–0 | |
| Density of highway network in built-up area (km/km2) | 0–5 | 5–6 | 6–7 | 7–8 | 8–9 | |
| Density of drainage network in built-up area (km/km2) | 35–20 | 20–15 | 15–10 | 10–5 | 5–0 | |
| Impact factor | Direct economic loss from flood disasters (¥0.1B) | 0–1.5 | 1.5–3 | 3–4.5 | 4.5–6 | 6–10 |
| Municipal flood control investment per unit area (¥10,000) | 30–12 | 12–9 | 9–6 | 6–3 | 3–0 | |
| Response factor | Public disaster response capacity | 100–85 | 85–80 | 80–75 | 75–70 | 70–0 |
| Emergency rescue capacity of public administration departments | 100–85 | 85–80 | 80–75 | 75–70 | 70–0 |
Figure 7Flood risk diagram of YRD urban agglomeration in 2016.
Figure 8Flood risk diagram of YRD urban agglomeration in 2017.
Figure 9Flood risk diagram of YRD urban agglomeration in 2018.