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Dealing with rainfall forecast uncertainties in real-time flood control along the Demer river

机译:在Demer River沿着实时防洪预测不确定性处理降雨预测

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Real-time Model Predictive Control (MPC) of hydraulic structures strongly reduces flood consequences under ideal circumstances. The performance of such flood control may, however, be significantly affected by uncertainties. This research quantifies the influence of rainfall forecast uncertainties and related uncertainties in the catchment rainfall-runoff discharges on the control performance for the Herk river case study in Belgium. To limit the model computational times, a fast conceptual model is applied. It is calibrated to a full hydrodynamic river model. A Reduced Genetic Algorithm is used as optimization method. Next to the analysis of the impact of the rainfall forecast uncertainties on the control performance, a Multiple Model Predictive Control (MMPC) approach is tested to reduce this impact. Results show that the deterministic MPC-RGA outperforms the MMPC and that it is inherently robust against rainfall forecast uncertainties due to its receding horizon strategy.
机译:液压结构的实时模型预测控制(MPC)在理想情况下强烈降低了洪水后果。然而,这种防洪的性能可能受到不确定性的显着影响。本研究量化了降雨预测不确定性及相关不确定性在比利时赫克河案例研究的控制绩效中的影响力和相关的不确定性的影响。为了限制模型计算时间,应用了快速概念模型。它被校准为一个完整的流体动力河模型。减少的遗传算法用作优化方法。在分析降雨预测对控制性能的影响下,测试了多模型预测控制(MMPC)方法以减少这种影响。结果表明,决定性MPC-RGA优于MMPC,并且由于其后退地平线策略而导致的降雨预测不确定性本质上是强大的。

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