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Modeling Angular Dependences in Land Surface Temperatures From the SEVIRI Instrument Onboard the Geostationary Meteosat Second Generation Satellites

机译:利用地球静止气象卫星第二代卫星上的SEVIRI仪器对地表温度的角相关性进行建模

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Satellite-based estimates of land surface temperature (LST) are widely applied as an input to models. A model output is often very sensitive to error in the input data, and high-quality inputs are therefore essential. One of the main sources of errors in LST estimates is the dependence on vegetation structure and viewing and illumination geometry. Despite this, these effects are not considered in current operational LST products from neither polar-orbiting nor geostationary satellites. In this paper, we simulate the angular dependence that can be expected when estimating LST with the viewing geometry of the geostationary Meteosat Second Generation Spinning Enhanced Visible and Infrared Imager sensor across the African continent and compare it to a normalized view geometry. We use the modified geometric projection model that estimates the scene thermal infrared radiance from a surface covered by different land covers. The results show that the sun–target-sensor geometry plays a significant role in the estimated temperature, with variations strictly due to the angular configuration of more than $pm 3 ^{circ}hbox{C}$ in some cases. On the continental scale, the average error is small except in hot-spot conditions, but large variations occur both geographically and temporally. The sun zenith angle, the amount of vegetation, and the vegetation structure are all shown to affect the magnitude of the errors. The findings highlight the need for taking the angular effects into account when applying LST estimates in models and when comparing LST estimates from different sensors or from different times, both on the daily and seasonal scale.
机译:基于卫星的陆地表面温度(LST)估计被广泛用作模型的输入。模型输出通常对输入数据中的错误非常敏感,因此高质量的输入至关重要。 LST估计误差的主要来源之一是对植被结构以及观察和照明几何形状的依赖性。尽管如此,目前极地轨道卫星和对地静止卫星的LST产品都没有考虑这些影响。在本文中,我们模拟了非洲大陆对地静止Meteosat第二代旋转增强型可见光和红外成像仪传感器的观测几何形状估计LST时预期的角度依赖性,并将其与归一化的视野几何形状进行比较。我们使用修改后的几何投影模型,该模型从不同土地覆盖物覆盖的表面估算场景的红外热辐射。结果表明,太阳目标传感器的几何形状在估计温度中起着重要作用,在某些情况下,由于角配置超过$ pm 3 ^ {circ} hbox {C} $而导致的变化很大。在大陆范围内,除热点条件外,平均误差很小,但在地理和时间上都会发生较大的变化。太阳天顶角,植被数量和植被结构都显示出会影响误差的大小。研究结果突出表明,在模型中应用LST估计以及在每日和季节性尺度上比较来自不同传感器或不同时间的LST估计时,必须考虑角度影响。

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