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Performance of ensemble streamflow forecasts under varied hydrometeorological conditions

机译:在各种水样条件下的集合STREAFFLIF预测的性能

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The paper presents a methodology that gives insight into the performance of ensemble streamflow-forecasting systems. We have developed an ensemble forecasting system for the Biala Tarnowska, a mountainous river catchment in southern Poland, and analysed the performance for lead times ranging from 1 to 10 days for low, medium and high streamflow and different hydrometeorological conditions. Precipitation and temperature forecasts from the European Centre for Medium-Range Weather Forecasts served as inputs to a deterministic lumped hydrological (HBV) model. Due to a non-homogeneous bias in time, pre-and post-processing of the meteorological and streamflow forecasts are not effective. The best forecast skill, relative to alternative forecasts based on meteorological climatology, is shown for high streamflow and snow accumulation low-streamflow events. Forecasts of medium-streamflow events and low-streamflow events under precipitation deficit conditions show less skill. To improve performance of the forecasting system for high-streamflow events, the meteorological forecasts are most important. Besides, it is recommended that the hydrological model be calibrated specifically on low-streamflow conditions and high-streamflow conditions. Further, it is recommended that the dispersion (reliability) of the ensemble streamflow forecasts is enlarged by including the uncertainties in the hydrological model parameters and the initial conditions, and by enlarging the dispersion of the meteorological input forecasts.
机译:本文提出了一种方法,可以深入了解合奏流预测系统的性能。我们已经开发了一个Biala Tarnowska的集合预测系统,这是波兰南部的多山河流集水区,并分析了低,中和高流出和不同水形气象条件的10天的延长时间的性能。欧洲中距离预测中心的降水和温度预测是对确定性集体水文(HBV)模型的输入。由于时间的非均匀偏见,气象和流流程预测的预和后处理无效。相对于基于气象气候学的替代预测的最佳预测技能,显示为高流出和积雪低流流事件。在降水缺陷条件下,中小型流流事件和低流流事件的预测显示较少的技能。为了提高高流流程事件预测系统的性能,气象预测最为重要。此外,建议使用水文模型专门针对低流污染条件和高流出条件进行校准。此外,建议通过包括水文模型参数和初始条件中的不确定性,并通过扩大气象输入预测的分散来放大集合流流量预测的分散(可靠性)。

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