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State updating of a distributed hydrological model with ensemble kalman Filtering: Effects of updating frequency and observation network density on forecast accuracy

机译:用集合卡尔曼滤波对分布式水文模型进行状态更新:更新频率和观测网络密度对预报准确性的影响

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This paper presents a study on the optimal setup for discharge assimilation within a spatially distributed hydrological model. The Ensemble Kalman filter (EnKF) is employed to update the grid-based distributed states of such an hourly spatially distributed version of the HBV-96 model. By using a physically based model for the routing, the time delay and attenuation are modelled more realistically. The discharge and states at a given time step are assumed to be dependent on the previous time step only (Markov property). Synthetic and real world experiments are carried out for the Upper Ourthe (1600 km2), a relatively quickly responding catchment in the Belgian Ardennes. We assess the impact on the forecasted discharge of (1) various sets of the spatially distributed discharge gauges and (2) the filtering frequency. The results show that the hydrological forecast at the catchment outlet is improved by assimilating interior gauges. This augmentation of the observation vector improves the forecast more than increasing the updating frequency. In terms of the model states, the EnKF procedure is found to mainly change the pdfs of the two routing model storages, even when the uncertainty in the discharge simulations is smaller than the defined observation uncertainty.
机译:本文提出了一种在空间分布水文模型中优化排水同化的研究。 Ensemble Kalman滤波器(EnKF)用于更新HBV-96模型的这种每小时时空分布版本的基于网格的分布状态。通过使用基于物理的模型进行路由,可以更现实地建模时间延迟和衰减。假定给定时间步长的放电和状态仅取决于前一个时间步长(马尔可夫性质)。 对上奥特河(1600 km2)进行了综合和真实的实验,这是比利时阿登地区相对较快响应的集水区。我们评估(1)各种空间分布的排放量表和(2)过滤频率对预测排放量的影响。结果表明,通过同化内部水位计可以改善集水口的水文预报。观察向量的这种增加比增加更新频率更能改善预测。就模型状态而言,即使放电模拟中的不确定性小于定义的观测不确定性,也发现EnKF程序主要改变了两个路由模型存储的pdf。

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