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Study of global cloud droplet number concentration with A-Train satellites

机译:利用A-Train卫星研究全球云滴数浓度

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pstrongAbstract./strong Cloud droplet number concentration (CDNC) is an important microphysical property of liquid clouds that impacts radiative forcing, precipitation and is pivotal for understanding clouda??aerosol interactions. Current studies of this parameter at global scales with satellite observations are still challenging, especially because retrieval algorithms developed for passive sensors (i.e., MODerate Resolution Imaging Spectroradiometer (MODIS)/Aqua) have to rely on the assumption of cloud adiabatic growth. The active sensor component of the A-Train constellation (i.e., Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP)/CALIPSO) allows retrievals of CDNC from depolarization measurements at 532 nm. For such a case, the retrieval does not rely on the adiabatic assumption but instead must use a priori information on effective radius (ir/isube/sub), which can be obtained from other passive sensors. brbr In this paper, ir/isube/sub values obtained from MODIS/Aqua and Polarization and Directionality of the Earth Reflectance (POLDER)/PARASOL (two passive sensors, components of the A-Train) are used to constrain CDNC retrievals from CALIOP. Intercomparison of CDNC products retrieved from MODIS and CALIOP sensors is performed, and the impacts of cloud entrainment, drizzling, horizontal heterogeneity and effective radius are discussed. By analyzing the strengths and weaknesses of different retrieval techniques, this study aims to better understand global CDNC distribution and eventually determine cloud structure and atmospheric conditions in which they develop. The improved understanding of CDNC can contribute to future studies of global clouda??aerosola??precipitation interaction and parameterization of clouds in global climate models (GCMs)./p.
机译:> >摘要。云滴数浓度(CDNC)是液态云的重要微物理性质,它影响辐射强迫,降水,对于理解云气溶胶相互作用至关重要。当前通过卫星观测在全球范围内对该参数进行的研究仍然具有挑战性,特别是因为为无源传感器(即,现代分辨率成像光谱仪(MODIS)/ Aqua)开发的检索算法必须依赖于云绝热生长的假设。 A火车星座中的有源传感器组件(即具有正交偏振(CALIOP)/ CALIPSO的云气激光雷达)允许从532 nm的去极化测量结果中检索CDNC。在这种情况下,检索不依赖于绝热假设,而必须使用关于有效半径( r e )的先验信息,该信息可以从其他被动信息中获取。传感器。 在本文中,从MODIS / Aqua和地球反射的偏振和方向性(POLDER)/ PARASOL(两个无源传感器, A火车的组件)用于约束从CALIOP进行CDNC检索。进行了从MODIS和CALIOP传感器获取的CDNC产品的比对,并讨论了云夹带,毛毛雨,水平异质性和有效半径的影响。通过分析不同检索技术的优缺点,本研究旨在更好地了解CDNC的全球分布,并最终确定其发展的云结构和大气条件。对CDNC的更好理解可以为全球云在未来气候研究中的研究提供参考。

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