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Dynamic neural networks for real-time water level predictions of sewerage systems-covering gauged and ungauged sites

机译:用于排水系统实时水位预测的动态神经网络-覆盖被测和未测站点

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In this research, we propose recurrent neural networks (RNNs) to build a relationship between rainfalls and water level patterns of an urban sewerage system based on historical torrential rain/storm events. The RNN allows signals to propagate in both forward and backward directions, which offers the network dynamic memories. Besides, the information at the current time-step with a feedback operation can yield a time-delay unit that provides internal input information at the next time-step to effectively deal with time-varying systems. The RNN is implemented at both gauged and ungauged sites for 5-, 10-, 15-, and 20-min-ahead water level predictions. The results show that the RNN is capable of learning the nonlinear sewerage system and producing satisfactory predictions at the gauged sites. Concerning the ungauged sites, there are no historical data of water level to support prediction. In order to overcome such problem, a set of synthetic data, generated from a storm water management model (SWMM) under cautious verification process of applicability based on the data from nearby gauging stations, are introduced as the learning target to the training procedure of the RNN and moreover evaluating the performance of the RNN at the ungauged sites. The results demonstrate that the potential role of the SWMM coupled with nearby rainfall and water level information can be of great use in enhancing the capability of the RNN at the ungauged sites. Hence we can conclude that the RNN is an effective and suitable model for successfully predicting the water levels at both gauged and ungauged sites in urban sewerage systems.
机译:在这项研究中,我们提出了递归神经网络(RNN),以基于历史性暴雨/暴雨事件建立城市污水处理系统的降雨与水位模式之间的关系。 RNN允许信号沿正向和反向传播,从而提供网络动态内存。此外,当前时间步长的信息具有反馈操作,可以产生一个时延单元,该单元在下一个时间步长提供内部输入信息,以有效地应对时变系统。 RNN在已规范和未规范的站点上执行,用于提前5、10、15和20分钟的水位预测。结果表明,RNN能够学习非线性下水道系统,并能在测量地点产生令人满意的预测。关于未开挖的地点,没有水位的历史数据可支​​持预测。为了克服这种问题,将基于雨水管理模型(SWMM)在适用性的仔细验证过程中基于附近测量站的数据生成的一组合成数据作为学习目标,作为该训练过程的学习目标。 RNN以及评估未启用站点上RNN的性能。结果表明,SWMM的潜在作用以及附近的降雨和水位信息可以极大地增强未启用站点上RNN的功能。因此,我们可以得出结论,RNN是一种有效且合适的模型,可以成功地预测城市污水系统中有水位和无水位的水位。

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