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Low-level liquid cloud properties during ORACLES retrieved using airborne polarimetric measurements and a neural network algorithm

机译:使用空机偏振测量和神经网络算法检索的oracells期间的低级液体云属性

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In this study we developed a?neural network (NN) that can be used to retrieve cloud microphysical properties from multiangular and multispectral polarimetric remote sensing observations. This effort builds upon our previous work, which explored the sensitivity of neural network input, architecture, and other design requirements for this type of remote sensing problem. In particular this work introduces a?framework for appropriately weighting total and polarized reflectances, which have vastly different magnitudes and measurement uncertainties. The NN is trained using an artificial training set and applied to research scanning polarimeter (RSP) data obtained during the ORACLES field campaign (ObseRvations of Aerosols above CLouds and their intEractionS). The polarimetric RSP observations are unique in that they observe the same cloud from a?very large number of angles within a?variety of spectral bands, resulting in a?large dataset that can be explored rapidly with a?NN approach. The usefulness of applying a?NN to a?dataset such as this one stems from the possibility of rapidly obtaining a?retrieval that could be subsequently applied as a?first guess for slower but more rigorous physical-based retrieval algorithms. This approach could be particularly advantageous for more complicated atmospheric retrievals – such as when an aerosol layer lies above clouds like in ORACLES. For RSP observations obtained during ORACLES 2016, comparisons between the NN and standard parametric polarimetric (PP) cloud retrieval give reasonable results for droplet effective radius (re: R=0.756, RMSE=1.74?μm) and cloud optical thickness (τ: R=0.950, RMSE=1.82). This level of statistical agreement is shown to be similar to comparisons between the two most well-established cloud retrievals, namely, the polarimetric and the bispectral total reflectance cloud retrievals. The NN retrievals from the ORACLES 2017 dataset result in retrievals of re (R=0.54, RMSE=4.77?μm) and τ (R=0.785, RMSE=5.61) that behave much more poorly. In particular we found that our NN retrieval approach does not perform well for thin (τ3), inhomogeneous, or broken clouds. We also found that correction for above-cloud atmospheric absorption improved the NN retrievals moderately – but retrievals without this correction still behaved similarly to existing cloud retrievals with a?slight systematic offset.
机译:在这项研究中,我们开发了一种α神经网络(NN),其可用于从多边形和多光谱极性遥感观察中检索云微物理特性。这项努力建立在我们以前的工作岗位上,这探讨了神经网络输入,架构和其他设计要求对这种类型的遥感问题的敏感性。特别是这项工作介绍了一个适当加权的框架,用于适当加权的总和反射,其具有巨大不同的大小和测量不确定性。 NN使用人工训练训练训练,并应用于在奥卡尔场运动期间获得的研究扫描偏振仪(RSP)数据(云高于云的气溶胶及其相互作用)。 Polarimetric RSP观察是独一无二的,因为它们在一个频谱频带内从A的非常大的角度观察到相同的云,导致了一个大的数据集,可以用a nn方法迅速探索。将a nn施加到a的有用性诸如此,诸如此之类的可能性源于快速获取的可能性?检索,可以随后应用于a?首先猜测较慢但更严格的物理的检索算法。这种方法对于更复杂的大气检索可能是特别有利的 - 例如当气溶胶层在惰性岩石中呈现在云上。对于在2016年的oracles期间获得的RSP观察,NN和标准参数偏振(PP)云检索之间的比较为液滴有效半径(RE:r = 0.756,Rmse =1.74Ωμm)和云光学厚度(τ:r =)提供合理的结果0.950,RMSE = 1.82)。这一级别的统计协议被认为类似于两个最良好的云检索之间的比较,即偏振和双光谱总反射率云检索。来自oracles 2017数据集的NN检索导致Re的检索(r = 0.54,rmse = 4.77?μm)和τ(r = 0.785,Rmse = 5.61)的表现得更差。特别是我们发现我们的NN检索方法对薄(τ3),不均匀或破碎的云进行良好。我们还发现,对上云大气吸收的校正适度地改善了NN检索 - 但没有这种校正的检索仍然表现出与现有的云检索相似,并且有轻微的系统偏移。

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