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Real-time multi-step-ahead water level forecasting by recurrent neural networks for urban flood control

机译:基于递归神经网络的城市防洪实时多步超前预报

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Urban flood control is a crucial task, which commonly faces fast rising peak flows resulting from urbanization. To mitigate future flood damages, it is imperative to construct an on-line accurate model to forecast inundation levels during flood periods. The Yu-Cheng Pumping Station located in Taipei City of Taiwan is selected as the study area. Firstly, historical hydrologic data are fully explored by statistical techniques to identify the time span of rainfall affecting the rise of the water level in the floodwater storage pond (FSP) at the pumping station. Secondly, effective factors (rainfall stations) that significantly affect the FSP water level are extracted by the Gamma test (GT). Thirdly, one static artificial neural network (ANN) (backpropagation neural network-BPNN) and two dynamic ANNs (Elman neural network-Elman NN; nonlinear autoregressive network with exogenous inputs-NARX network) are used to construct multi-step-ahead FSP water level forecast models through two scenarios, in which scenario I adopts rainfall and FSP water level data as model inputs while scenario II adopts only rainfall data as model inputs. The results demonstrate that the GT can efficiently identify the effective rainfall stations as important inputs to the three ANNs; the recurrent connections from the output layer (NARX network) impose more effects on the output than those of the hidden layer (Elman NN) do; and the NARX network performs the best in real-time forecasting. The NARX network produces coefficients of efficiency within 0.9-0.7 (scenario I) and 0.7-0.5 (scenario II) in the testing stages for 10-60-min-ahead forecasts accordingly. This study suggests that the proposed NARX models can be valuable and beneficial to the government authority for urban flood control.
机译:城市防洪是一项至关重要的任务,通常面临着城市化带来的快速上升的洪峰流量。为了减轻未来的洪水灾害,必须构建一个在线准确模型来预测洪水期间的淹没水平。位于台湾台北市的裕成泵站被选为研究区域。首先,通过统计技术全面探索历史水文数据,以确定降雨时间跨度影响泵站洪水蓄水池(FSP)水位上升的时间跨度。其次,通过伽马检验(GT)提取对FSP水位有重大影响的有效因素(降雨站)。第三,使用一个静态人工神经网络(反向传播神经网络-BPNN)和两个动态神经网络(Elman神经网络-Elman NN;带有外来输入的非线性自回归网络-NARX网络)来构造多步前进的FSP水两种情况下的水位预测模型,其中方案I采用降雨和FSP水位数据作为模型输入,而方案II仅采用降雨数据作为模型输入。结果表明,GT可以有效地将有效的降雨站确定为三个人工神经网络的重要输入;与隐藏层(Elman NN)相比,来自输出层(NARX网络)的循环连接对输出的影响更大。而NARX网络的实时预测效果最好。在提前10-60分钟的预测阶段,NARX网络在测试阶段产生的效率系数在0.9-0.7(方案I)和0.7-0.5(方案II)之间。这项研究表明,所提出的NARX模型可能对政府防洪当局具有重要价值。

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