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The suitability of remotely sensed soil moisture for improving operational flood forecasting

机译:遥感土壤水分对改善洪水预报的适用性

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We evaluate the added value of assimilated remotely sensed soil moisture for the European Flood Awareness System (EFAS) and its potential to improve the prediction of the timing and height of the flood peak and low flows. EFAS is an operational flood forecasting system for Europe and uses a distributed hydrological model (LISFLOOD) for flood predictions with lead times of up to 10 days. For this study, satellite-derived soil moisture from ASCAT (Advanced SCATterometer), AMSR-E (Advanced Microwave Scanning Radiometer - Earth Observing System) and SMOS (Soil Moisture and Ocean Salinity) is assimilated into the LISFLOOD model for the Upper Danube Basin and results are compared to assimilation of discharge observations only. To assimilate soil moisture and discharge data into the hydrological model, an ensemble Kalman filter (EnKF) is used. Information on the spatial (cross-) correlation of the errors in the satellite products, is included to ensure increased performance of the EnKF. For the validation, additional discharge observations not used in the EnKF are used as an independent validation data set. Our results show that the accuracy of flood forecasts is increased when more discharge observations are assimilated; the mean absolute error (MAE) of the ensemble mean is reduced by 35 %. The additional inclusion of satellite data results in a further increase of the performance: forecasts of baseflows are better and the uncertainty in the overall discharge is reduced, shown by a 10% reduction in the MAE. In addition, floods are predicted with a higher accuracy and the continuous ranked probability score (CRPS) shows a performance increase of 5–10%on average, compared to assimilation of discharge only. When soil moisture data is used, the timing errors in the flood predictions are decreased especially for shorter lead times and imminent floods can be forecasted with more skill. The number of false flood alerts is reduced when more observational data is assimilated into the system. The added values of the satellite data is largest when these observations are assimilated in combination with distributed discharge observations. These results show the potential of remotely sensed soil moisture observations to improve nearreal time flood forecasting in large catchments.
机译:我们评估了欧洲洪水预警系统(EFAS)吸收的遥感土壤水分的附加值及其在改善洪水高峰和低流量时间和高度的预测方面的潜力。 EFAS是欧洲的洪水预报系统,使用分布式水文模型(LISFLOOD)进行洪水预报,交货时间最多为10天。在本研究中,将来自ASCAT(高级SCATterometer),AMSR-E(高级微波扫描辐射仪-地球观测系统)和SMOS(土壤水分和海洋盐度)的卫星源土壤水分同化为多瑙河上流域和北部地区的LISFLOOD模型。将结果仅与放电观测的同化进行比较。为了将土壤水分和排放数据吸收到水文模型中,使用了集成卡尔曼滤波器(EnKF)。包括有关卫星产品中误差的空间(交叉)相关性的信息,以确保提高EnKF的性能。为了进行验证,EnKF中未使用的其他排放观测值用作独立的验证数据集。我们的结果表明,当更多的流量观测结果被同化时,洪水预报的准确性将提高。整体平均值的平均绝对误差(MAE)降低了35%。卫星数据的附加包含可进一步提高性能:对基流的预测更好,总排放量的不确定性也降低了,MAE降低了10%。此外,洪水预报的准确性更高,与仅排泄的同化相比,连续排名概率评分(CRPS)显示平均性能提高5-10%。当使用土壤湿度数据时,洪水预报中的时间误差会减少,尤其是对于较短的交货时间,可以用更多的技巧来预测即将发生的洪水。当更多的观测数据被吸收到系统中时,虚假洪水警报的数量将减少。当这些观测值与分布式排放观测值结合使用时,卫星数据的附加值最大。这些结果表明,遥感土壤湿度观测有可能改善大型流域的近实时洪水预报。

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