The Institute of Municipal Engineering, Zhejiang University, Hangzhou, China.
Hangzhou Shangcheng District Municipal Engineering Group Co., Ltd, Hangzhou, China.
Water Sci Technol. 2024 Jun;89(11):2894-2906. doi: 10.2166/wst.2024.174. Epub 2024 May 27.
With the impact of global climate change and the urbanization process, the risk of urban flooding has increased rapidly, especially in developing countries. Real-time monitoring and prediction of flooding extent and drainage system are the foundation of effective urban flood emergency management. Therefore, this paper presents a rapid nowcasting prediction method of urban flooding based on data-driven and real-time monitoring. The proposed method firstly adopts a small number of monitoring points to deduce the urban global real-time water level based on a machine learning algorithm. Then, a data-driven method is developed to achieve dynamic urban flooding nowcasting prediction with real-time monitoring data and high-accuracy precipitation prediction. The results show that the average MAE and RMSE of the urban flooding and conduit system in the deduction method for water level are 0.101 and 0.144, 0.124 and 0.162, respectively, while the flooding depth deduction is more stable compared to the conduit system by probabilistic statistical analysis. Moreover, the urban flooding nowcasting method can accurately predict the flooding depth, and the are as high as 0.973 and 0.962 of testing. The urban flooding nowcasting prediction method provides technical support for emergency flood risk management.
随着全球气候变化和城市化进程的影响,城市洪灾风险迅速增加,特别是在发展中国家。实时监测和预测洪水范围和排水系统是有效城市洪水应急管理的基础。因此,本文提出了一种基于数据驱动和实时监测的城市洪水快速实时预测方法。该方法首先采用少量监测点,基于机器学习算法推导出城市全局实时水位。然后,开发了一种数据驱动方法,利用实时监测数据和高精度降水预测实现动态城市洪水实时预测。结果表明,在水位推导方法中,城市洪水和管道系统的平均 MAE 和 RMSE 分别为 0.101 和 0.144、0.124 和 0.162,而概率统计分析表明,洪水深度推导比管道系统更稳定。此外,城市洪水实时预测方法可以准确预测洪水深度,测试的准确率高达 0.973 和 0.962。城市洪水实时预测方法为应急洪水风险管理提供了技术支持。