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Cloud and aerosol studies using combined CPL and MAS data

机译:使用组合CPL和MAS数据的云和气溶胶研究

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Current uncertainties in the role of aerosols and clouds in the Earth's climate system limit our abilities to model the climate system and predict climate change. These limitations are due primarily to difficulties of adequately measuring aerosols and clouds on a global scale. The A-train satellites (Aqua, CALIPSO, CloudSat, PARASOL, and Aura) will provide an unprecedented opportunity to address these uncertainties. The various active and passive sensors of the A-train will use a variety of measurement techniques to provide comprehensive observations of the multi-dimensional properties of clouds and aerosols. However, to fully achieve the potential of this ensemble requires a robust data analysis framework to optimally and efficiently map these individual measurements into a comprehensive set of cloud and aerosol physical properties. In this work we introduce the Multi-Instrument Data Analysis and Synthesis (MIDAS) project, whose goal is to develop a suite of physically sound and computationally efficient algorithms that will combine active and passive remote sensing data in order to produce improved assessments of aerosol and cloud radiative and microphysical properties. These algorithms include (a) the development of an intelligent feature detection algorithm that combines inputs from both active and passive sensors, and (b) identifying recognizable multi-instrument signatures related to aerosol and cloud type derived from clusters of image pixels and the associated vertical profile information. Classification of these signatures will lead to the automated identification of aerosol and cloud types. Testing of these new algorithms is done using currently existing and readily available active and passive measurements from the Cloud Physics Lidar and the MODIS Airborne Simulator, which simulate, respectively, the CALIPSO and MODIS A-train instruments.
机译:地球气候系统中气溶胶和云的作用的目前的不确定性限制了模拟气候系统的能力,并预测气候变化。这些限制主要是由于全球规模充分测量气溶胶和云的困难。 A-Train卫星(Aqua,Calipso,Cloudsat,Parasol和Aura)将提供前所未有的机会来解决这些不确定性。 A-Train的各种主动和无源传感器将使用各种测量技术来提供云和气溶胶的多维特性的综合观察。然而,为了充分实现该集合的潜力需要强大的数据分析框架,以最佳和有效地将这些单独的测量映射成一套综合云和气溶胶物理性质。在这项工作中,我们介绍了多仪器数据分析和综合(MIDAS)项目,其目标是开发一套物理声音和计算有效的算法,这些算法将结合主动和被动遥感数据,以便产生对气溶胶的改进评估和云辐射和微手术性质。这些算法包括(a)开发智能特征检测算法,该智能特征检测算法组合来自主动和无源传感器的输入,(b)识别与源自图像像素和相关联的垂直簇导出的植物和云类型相关的可识别的多仪器签名档案信息。这些签名的分类将导致气溶胶和云类型的自动识别。这些新算法的测试是使用来自云物理激光器和Modis Airbore模拟器的当前现有的和易于提供的主动和被动测量来完成的,分别模拟Calipso和Modis A-Train Instruments。

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