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EXPLOITING SENTINEL 1 DATA FOR IMPROVING (FLASH) FLOOD MODELLING VIA DATA ASSIMILATION TECHNIQUES

机译:利用Data Assimilation Techniques改进的Sentinel 1用于改进(闪存)洪水建模的数据

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As part of the Copernicus Programme, Sentinel 1 (S1) synthetic aperture radar (SAR) mission represents a unique monitoring tool whose potentialities for hydrological risk mitigation need to be evaluated. To this aim, S1-A derived soil moisture maps with high spatial resolution (100 m) and moderate temporal resolution (12 days) were assimilated within a time-continuous, spatially-distributed, physically-based hydrological model (Continuum) with the specific objective to evaluate the impact on discharge predictions and (flash) flood modelling. A Nudging assimilation scheme was chosen for the DA experiment due to its computational efficiency, particularly useful for operational applications. Results were evaluated in the Orba River catchment (Italy) in the time period October 2014 - November 2016, corresponding to the first two years of activity of the S1-A mission.
机译:作为Copernicus程序的一部分,Sentinel 1(S1)合成孔径雷达(SAR)任务代表了一种独特的监测工具,其需要进行水文风险减缓的潜力。为此目的,S1-A具有高空间分辨率(100μm)和中度时间分辨率(12天)的S1-A衍生的土壤湿度图在时间连续的空间分布的物理水文模型(连续核)内同化了特定的目的评价对放电预测的影响和(闪存)洪水建模。选择了一种戒烟同化方案,为其计算效率,特别适用于运营应用,选择了DA实验。结果在2014年10月10月至2016年11月期间的奥尔巴河流域(意大利)评估了,对应于S1-A代表团的前两年。

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