首页> 美国卫生研究院文献>International Journal of Environmental Research and Public Health >A Machine Learning Ensemble Approach Based on Random Forest and Radial Basis Function Neural Network for Risk Evaluation of Regional Flood Disaster: A Case Study of the Yangtze River Delta China
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A Machine Learning Ensemble Approach Based on Random Forest and Radial Basis Function Neural Network for Risk Evaluation of Regional Flood Disaster: A Case Study of the Yangtze River Delta China

机译:基于随机森林和径向基函数神经网络的机器学习集成方法在区域洪灾风险评估中的应用-以中国长江三角洲为例

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摘要

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.
机译:长江三角洲是中国最发达的地区之一。这也是一个易发生洪水的地区,经常发生洪水灾害。人与土地之间的关系与人与水之间的关系非常复杂。因此,准确评估洪水风险对区域发展具有重要意义。本文以长三角城市群为研究案例。建立了驱动力,压力,状态,影响和响应(DPSIR)概念框架,以分析洪水灾害的指标。使用随机森林(RF)算法筛选洪水风险的重要指标,并构建了基于径向基函数(RBF)神经网络的风险评估模型来评估该地区2009年至2018年的洪水风险水平。风险图通过地理信息系统(GIS)显示了2016年至2018年长三角地区城市群的洪水风险IV级。进一步分析表明,汛期降雨,城市防渗面积比,每平方公里土地生产总值,水面积比,人口密度和公共管理部门的紧急救援能力等指标对洪灾风险具有重要影响。在城市化背景下,近十年来长三角城市群的洪灾风险一直在增加,经济发展状况与洪灾风险呈显着正相关。此外,各省之间的洪灾风险上升率和现状之间存在严重差异。从2016年到2018年,仍有少数城市通过城市防洪措施将洪水风险稳定在一个较好的水平。这些结果与实际情况基本相符,从而验证了该模型的有效性。最后,提出了降低长三角地区城市洪灾风险的对策建议,为长三角地区的防洪减灾和应急管理提供决策支持。

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