Satellite-based Synthetic Aperture Radar (SAR) has proved useful for obtaining information on flood extent, which, when intersected with a Digital Elevation Model (DEM) of the floodplain, provides water level observations that can be assimilated into a hydrodynamic model to decrease forecast uncertainty. With an increasing number of operational satellites with SAR capability, information on the relationship between satellite first visit and revisit times and forecast performance is required to optimise the operational scheduling of satellite imagery. By using an Ensemble Transform Kalman Filter (ETKF) and a synthetic analysis with the 2D hydrodynamic model LISFLOOD-FP based on a real flooding case affecting an urban area (summer 2007,Tewkesbury, Southwest UK), we evaluate the sensitivity of the forecast performance to visit parameters. We emulate a generic hydrologic-hydrodynamic modelling cascade by imposing a bias and spatiotemporal correlations to the inflow error ensemble into the hydrodynamic domain. First, in agreement with previous research, estimation and correction for this bias leads to a clear improvement in keeping the forecast on track. Second, imagery obtained early in the flood is shown to have a large influence on forecast statistics. Revisit interval is most influential for early observations. The results are promising for the future of remote sensing-based water level observations for real-time flood forecasting in complex scenarios.udud
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机译:事实证明,基于卫星的合成孔径雷达(SAR)可用于获取洪水范围信息,当与洪泛区的数字高程模型(DEM)相交时,它可以提供水位观测结果,可以将其同化为水动力模型以减少预报不确定。随着具有SAR功能的可运行卫星数量的增加,需要有关卫星首次访问和重访时间与预测性能之间的关系的信息,以优化卫星图像的运行调度。通过使用Ensemble变换卡尔曼滤波器(ETKF),并基于影响城市地区的实际洪水案例(2007年夏季,英国西南,图克斯伯里),使用二维流体动力学模型LISFLOOD-FP进行综合分析,我们评估了预测性能的敏感性访问参数。我们通过对流入水动力域的入流误差集合施加偏差和时空相关性来模拟通用的水文-水动力建模级联。首先,与先前的研究一致,对该偏差的估计和更正可以使跟踪保持明显改善。其次,洪水早期获得的图像显示对预报统计数据有很大的影响。重访间隔对早期观察影响最大。这些结果对于在复杂情况下基于遥感的水位观测进行实时洪水预报具有广阔的前景。 ud ud
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