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Aerosol characterization and optical thickness retrievals using GOME and METEOSAT satellite data

机译:使用GOME和METEOSAT卫星数据进行气溶胶表征和光学厚度反演

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Retrievals of atmospheric aerosol optical thickness are highly dependent on the choice of the class describing the aerosol properties leading to significant errors while using classes available in the literature. High spectral resolution measurements from GOME (Global Ozone Monitoring Experiment) between the ultraviolet and the near infrared can be used for an accurate characterization of the aerosol optical properties. The radiometer MVIRI (METEOSAT Visible and Infrared Imager) on board the geostationary satellite METEOSAT, while being equipped only with broadband VIS channel, ensures an adequate half-hourly monitoring of the atmospheric conditions over a large portion of the Earth. The present algorithm is based on a combination of data from both sensors for the retrieval of the aerosol optical thickness at the reference wavelength of 0.55 #mu#m (AOT). A case of a desert dust outbreak from the African continent over the Atlantic Ocean is examined. AOT values obtained using a priori fixed classes taken from the literature are compared with those retrieved with this algorithm using the GOME-derived classes. Systematic differences of the order of a few tenths on average are found which remain significant also after considering the measurement errors. This represents a novelty introduced by the synergetic use of both sensors.
机译:大气气溶胶光学厚度的检索高度依赖于描述气溶胶特性的类别的选择,而使用文献中提供的类别会导致明显的误差。来自GOME(全球臭氧监测实验)的紫外和近红外之间的高光谱分辨率测量可用于精确表征气溶胶的光学特性。对地静止卫星METEOSAT上的辐射计MVIRI(METEOSAT可见光和红外成像仪)虽然仅配备了宽带VIS通道,但可以确保对地球大部分区域的大气状况进行半小时的适当监控。本算法基于来自两个传感器的数据的组合,用于检索参考波长为0.55#mu#m(AOT)的气溶胶光学厚度。调查了非洲大陆上大西洋上空发生的沙漠尘埃爆发案例。使用从文献中获取的先验固定类获得的AOT值与使用该算法从GOME派生的类检索的AOT值进行比较。在考虑到测量误差后,发现平均系统差异只有十分之几。这代表了两个传感器协同使用所带来的新颖性。

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