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Provision of snow water equivalent from satellite data and the hydrological model PROMET using data assimilation techniques

机译:使用数据同化技术提供卫星数据和水文模型PROMET等同的雪水

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Information on snow cover and snow properties is an important factor for hydrology and runoff modelling. Frequent updates of snow cover information can help to improve water balance and discharge calculations. Within the frame of Polar View, snow products from multisensoral satellite data are operationally provided to control and update water balance models for large parts of Southern Germany. Optical AVHRR sensors of the NOAA satellite are used for snow mapping and snow line delineation. Although these acquisitions are available several times per day, cloud cover hinders frequent updates of snow cover maps. As an additional remote sensing data source microwave data from ASAR on ENVISAT is used. Since C-band SAR sensors are only sensitive to snow with a high content of liquid water, the application of ASAR is limited to the meltingperiods. However under these conditions the developed procedure allows not only to delineate the snow cover in a comparable way as from optical data, also the additional information where the snow is melting is provided. In order to demonstrate how the remote sensing products can be used for improved water balance modelling, an application example for the watershed of the Upper Danube will be presented. This testsite is the research area of the integrative research project GLOWA-DANUBE that is conducted by the University of Munich. Model results using the PROMET-model of snow distributions with and without data assimilation of the remote sensing products will be given. Developed data assimilation concepts will be presented. Through data assimilation, the modelled snow cover agrees better with the mapped snow cover information from satellite. The optimised model provides maps of snow water equivalent, that can not directed be assessed by remote sensing. The impact of data assimilation on the modelled runoff will thus further be analysed.
机译:在积雪和雪特性的信息是水文径流模拟的一个重要因素。的积雪信息频繁更新可以帮助改善水平衡和流量计算。在极地景观框架,从multisensoral卫星数据产品的积雪在操作上提供给控制和更新水平衡模型德国南部的大部分地区。的NOAA卫星的光学AVHRR传感器用于雪映射和雪线划定。尽管这些收购是每天可多次使用的,云层阻碍频繁积雪地图的更新。如从ASAR ENVISAT上一个额外的遥感数据源微波的数据被使用。由于C波段SAR传感器仅雪与液体水含量高敏感,ASAR的应用仅限于meltingperiods。然而,这些条件下所开发的程序不仅允许以描绘积雪以可比较的方法,从光学数据,还其中雪被提供熔化的附加信息。为了证明所述远程传感产品可如何用于改进的水平衡建模,对于流域上部多瑙河的应用例将呈现。该测试网站是综合性研究项目GLOWA - 多瑙河由德国慕尼黑大学进行的研究领域。使用雪分布的PROMET模型具有和不具有遥感产品的数据同化模型的结果将给出。开发的数据同化概念将提交。通过数据同化,模拟的积雪同意来自卫星的映射积雪信息的更好。优化模型提供雪水当量的地图,这是不能由定向遥感来评估。数据同化的上建模的径流的影响将因此进一步进行分析。

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