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Remote sensing data assimilation in WRF-UCM mesoscale model: Madri case study

机译:WRF-UCM中尺度模型中的遥感数据同化:Madri案例研究

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Data assimilation is a powerful numerical technique that is used to substantially improve numerical meteorological simulations. In this contribution we have used the WRF mesoscale meteorological model (NCAR, US) to show the importance of using remote sensing data (satellite and tower data), the sensitivity of the results and the improvement when compared with observational surface data (wind and temperature). We have used CLC100 m instead of GTOPO 30", 10 m spatial resolution GIS data of Madrid (Spain) city to produce urban land use types according to the Urban Canopy Model (UCM) (NCAR) approach: airborne temperature (4 m spatial resolution), albedo, anthropogenic heat flux, shadowing in UCM and tower data (wind and temperature). The results show a high sensitivity to all of these parameters. For historical simulations - where in-situ meteorological data is available - data assimilation is a crucial tool to improve the results. The sensitivity of the results to the different high resolution input data is also crucial for the results of the simulation. The correlation coefficient for temperature is improved up to 0.960.
机译:数据同化是一种强大的数值技术,可用于大幅改善数值气象模拟。在这项贡献中,我们使用了WRF中尺度气象模型(美国NCAR)来表明使用遥感数据(卫星和塔楼数据)的重要性,与观测地面数据(风和温度)相比,结果的敏感性和改进的重要性)。我们已使用CLC100 m代替了马德里(西班牙)市的10 m空间分辨率GIS数据(GTOPO 30“,空间分辨率为10 m的GIS数据,根据城市机盖模型(UCM)(NCAR)的方法得出城市土地利用类型:机载温度(4 m空间分辨率),反照率,人为热通量,UCM中的阴影和塔数据(风和温度),结果表明对所有这些参数都具有很高的敏感性。改进结果的工具,结果对不同的高分辨率输入数据的敏感性对于仿真结果也至关重要,温度的相关系数提高到0.960。

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