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Real-time flood forecasting coupling different postprocessing techniques of precipitation forecast ensembles with a distributed hydrological model. The case study of may 2008 flood in western Piemonte, Italy

机译:具有分布式水文模型的实时洪水预测耦合不同后处理技术的降水预测集团。 2008年5月洪水在意大利西部Piemonte洪水的案例研究

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In this work, we compare the performance of an hydrological model when driven by probabilistic rain forecast derived from two different post-processing techniques. The region of interest is Piemonte, northwestern Italy, a complex orography area close to the Mediterranean Sea where the forecast are often a challenge for weather models. The May 2008 flood is here used as a case study, and the very dense weather station network allows us for a very good description of the event and initialization of the hydrological model. The ensemble probabilistic forecasts of the rainfall fields are obtained with the Bayesian model averaging, with the classical poor man ensemble approach and with a new technique, the Multimodel SuperEnsemble Dressing. In this case study, the meteo-hydrological chain initialized with the Multimodel SuperEnsemble Dressing is able to provide more valuable discharge ranges with respect to the one initialized with Bayesian model averaging multi-model.
机译:在这项工作中,我们在通过两种不同后处理技术推动的概率雨预测驱动时比较水文模型的性能。感兴趣的地区是意大利西北部的Piemonte,靠近地中海的复杂的地区,预测通常是天气模型的挑战。 2008年5月洪水在这里用作案例研究,非常密集的气象站网络允许我们对水文模型的事件和初始化的非常好的描述。随着贝叶斯模型的平均,通过古典贫困人体集合方法和新技术,获得了降雨场的集合概率预测。在这种情况下,利用多模型超级敷料初始化的Meteo-水文链能够为与贝叶斯模型平均多模型初始化的初始化的初始化的放电范围提供更有价值的放电范围。

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