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Flood forecasting within urban drainage systems using NARX neural network

机译:使用Narx神经网络的城市排水系统洪水预测

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Urbanization activity and climate change increase the runoff volumes, and consequently the surcharge of the urban drainage systems (UDS). In addition, age and structural failures of these utilities limit their capacities, and thus generate hydraulic operation shortages, leading to flooding events. The large increase in floods within urban areas requires rapid actions from the UDS operators. The proactivity in taking the appropriate actions is a key element in applying efficient management and flood mitigation. Therefore, this work focuses on developing a flooding forecast system (FFS), able to alert in advance the UDS managers for possible flooding. For a forecasted storm event, a quick estimation of the water depth variation within critical manholes allows a reliable evaluation of the flood risk. The Nonlinear Auto Regressive with eXogenous inputs (NARX) neural network was chosen to develop the FFS as due to its calculation nature it is capable of relating water depth variation in manholes to rainfall intensities. The campus of the University of Lille is used as an experimental site to test and evaluate the FFS proposed in this paper.
机译:城市化活动和气候变化增加了径流量,从而增加了城市排水系统(UDS)的附加费。此外,这些公用事业公司的年龄和结构故障限制了它们的能力,从而产生了液压运行短缺,导致洪水事件。城市地区洪水的大幅增加需要uds运营商的快速行动。采取适当行动的接受性是应用有效管理和洪水缓解的关键因素。因此,这项工作侧重于开发洪水预测系统(FFS),能够提前提醒UDS管理者以实现可能的洪水。对于预测的风暴事件,快速估计临界人洞内的水深变化允许可靠地评估洪水风险。选择具有外源性输入(NARX)神经网络的非线性自动回归,以开发FFS,因为它的计算性能能够将沙井的水深变化与降雨强度相关。里尔大学校园被用作试验网站,以测试和评估本文提出的FFS。

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