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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >New approaches to removing cloud shadows and evaluating the 380nm surface reflectance for improved aerosol optical thickness retrievals from the GOSAT/TANSO-Cloud and Aerosol Imager
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New approaches to removing cloud shadows and evaluating the 380nm surface reflectance for improved aerosol optical thickness retrievals from the GOSAT/TANSO-Cloud and Aerosol Imager

机译:通过GOSAT / TANSO-Cloud和Aerosol Imager去除云影并评估380nm表面反射率的新方法,以改善气溶胶光学厚度

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[1] A satellite aerosol retrieval algorithm was developed to utilize a near-ultraviolet band of the Greenhouse gases Observing SATellite/Thermal And Near infrared Sensor for carbon Observation (GOSAT/TANSO)-Cloud and Aerosol Imager (CAI). At near-ultraviolet wavelengths, the surface reflectance over land is smaller than that at visible wavelengths. Therefore, it is thought possible to reduce retrieval error by using the near-ultraviolet spectral region. In the present study, we first developed a cloud shadow detection algorithm that uses first and second minimum reflectances of 380 nm and 680 nm based on the difference in Rayleigh scattering contribution for these two bands. Then, we developed a new surface reflectance correction algorithm, the modified Kaufman method, which uses minimum reflectance data at 680 nm and the NDVI to estimate the surface reflectance at 380 nm. This algorithm was found to be particularly effective at reducing the aerosol effect remaining in the 380 nm minimum reflectance; this effect has previously proven difficult to remove owing to the infrequent sampling rate associated with the three-day recursion period of GOSAT and the narrow CAI swath of 1000 km. Finally, we applied these two algorithms to retrieve aerosol optical thicknesses over a land area. Our results exhibited better agreement with sun-sky radiometer observations than results obtained using a simple surface reflectance correction technique using minimum radiances.
机译:[1]开发了一种卫星气溶胶检索算法,以利用温室气体的近紫外波段观测卫星/热和近红外传感器进行碳观测(GOSAT / TANSO)-云和气溶胶成像仪(CAI)。在近紫外波长下,陆地表面的反射率小于可见波长下的反射率。因此,认为可以通过使用近紫外光谱区域来减少检索误差。在本研究中,我们首先基于这两个波段的瑞利散射贡献的差异,开发了一种云影检测算法,该算法使用380 nm和680 nm的第一和第二最小反射率。然后,我们开发了一种新的表面反射率校正算法,即改进的Kaufman方法,该方法使用680 nm处的最小反射率数据和NDVI来估算380 nm处的表面反射率。已发现该算法在降低残留在380 nm最小反射率的气溶胶效果方面特别有效。由于GOSAT的三天递归周期和1000 km的窄CAI范围相关的采样率不高,以前已证明很难消除这种影响。最后,我们应用了这两种算法来检索陆地区域的气溶胶光学厚度。与使用简单辐射反射率最小的简单表面反射校正技术获得的结果相比,我们的结果与太阳辐射计的观测结果具有更好的一致性。

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