In the field of hydrological prediction for medium-sized watersheds, characterized by complex orography and short response times, forecasts cannot rely only upon observed precipitation: predicted rainfall is in this case an essential input for hydrological models. However, the quality and reliability of deterministic numerical precipitation forecasts driving a hydrological model are often unsatisfactory, because uncertainty in Quantitative Precipitation Forecasts (QPFs) is considerable at the scales of interest for hydrological purposes. The uncertainty inherent in precipitation forecast can be accounted for better estimating the uncertainty associated with the flood forecast, in order to provide a more informative hydrological prediction. The methodology proposed and adopted in this work is based on a hydrological ensemble forecasting approach that uses multiple precipitation scenarios provided by different high-resolution numerical weather prediction models, driving the same hydrological model. In this way, the uncertainty associated with the meteorological forecasts can propagate into the hydrological models and be used in warnings and decision making procedures relying upon a probabilistic approach. In the framework of RISK AWARE, an INTERREG III B EU project, a detailed analysis of two cases of intense precipitation affecting the Reno river basin, a medium-sized catchment in northern Italy, has been performed. One case study has been performed using lateral boundary values derived from analysed fields, the other simulating a real time forecast, i.e., using forecasted boundary conditions. Four different meteorological models (Lokal Modell, RAMS, BOLAM and MOLOCH), operating at different horizontal resolutions, provide QPFs which are used to force the hydrological model. The discharge predictions are obtained by means of the physically based rainfall-runoff model TOPKAPI. The results provide examples of the uncertainties inherent in the QPF and show that the hydrological response of the Reno river basin, as simulated by the TOPKAPI model, is highly sensitive to the correct space-time localization of precipitation, even if the total amount of rainfall is, on average, well forecasted. The system seems able to provide useful information concerning the discharge peaks (amount and timing) for warning purposes.
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机译:在地形复杂且响应时间短的中型流域的水文预报领域,预报不能仅依靠观测到的降水量:在这种情况下,预报的降雨量是水文模型的必要输入。但是,确定性数值降水预报的质量和可靠性常常无法令人满意,因为定量降水预报(QPF)的不确定性在水文目的的关注尺度上相当可观。降水预报中固有的不确定性可以用来更好地估算与洪水预报有关的不确定性,以便提供更多信息的水文预报。在这项工作中提出和采用的方法是基于水文系综预报方法,该方法使用由不同的高分辨率数值天气预报模型提供的多个降水情景来驱动相同的水文模型。这样,与气象预报有关的不确定性可以传播到水文模型中,并依靠概率方法用于预警和决策程序。在INTERREG III B EU项目RISK AWARE的框架下,已对影响意大利北部中型集水区里诺河流域的两场强降雨案例进行了详细分析。一个案例研究是使用从分析场获得的横向边界值进行的,另一个案例是模拟实时预测,即使用预测的边界条件。在不同的水平分辨率下运行的四个不同的气象模型(Lokal Model1,RAMS,BOLAM和MOLOCH)提供了用于强制水文模型的QPF。通过基于物理的降雨径流模型TOPKAPI获得排放量预测。结果提供了QPF固有不确定性的实例,并表明,由TOPKAPI模型模拟的里诺河流域的水文响应对正确的时空降水定位高度敏感,即使总降雨量也是如此平均而言,它是很好的预测。该系统似乎能够提供有关放电峰值(数量和时间)的有用信息,以进行警告。
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