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Bayesian Retrievals of Vertically Resolved Cloud Particle Size Distribution Properties

机译:垂直解析云粒度分布特性的贝叶斯检索

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Retrievals of liquid cloud properties from remote sensing observations by necessity assume sufficient information is contained in the measurements, and in the prior knowledge of the cloudy state, to uniquely determine a solution. Bayesian algorithms produce a retrieval that consists of the joint probability distribution function (PDF) of cloud properties given the measurements and prior knowledge. The Bayesian posterior PDF provides the maximum likelihood estimate, the information content in specific measurements, the effect of observation and forward model uncertainties, and quantitative error estimates. It also provides a test of whether, and in which contexts, a set of observations is able to provide a unique solution. In this work, a Bayesian Markov chain Monte Carlo (MCMC) algorithm is used to sample the joint posterior PDF for retrieved cloud properties in shallow liquid clouds over the remote Southern Ocean. Combined active and passive observations from spaceborneW-band cloud radar and visible and near-infrared reflectance are used to retrieve the parameters of a gamma particle size distribution (PSD) for cloud droplets and drizzle. Combined active and passive measurements are able to distinguish between clouds with and without precipitation; however, unique retrieval of PSD properties requires specification of a scene-appropriate prior estimate. While much of the uncertainty in an unconstrained retrieval can be mitigated by use of information from 94-GHz passive brightness temperature measurements, simply increasing measurement accuracy does not render a unique solution. The results demonstrate the robustness of a Bayesian retrieval methodology and highlight the importance of an appropriately scene-consistent prior constraint in underdetermined remote sensing retrievals.
机译:通过必要性地,从遥感观测的液体云属性的检索是在测量中包含足够的信息,并且在多云状态的先验知识中包含足够的信息,以唯一地确定解决方案。贝叶斯算法产生了一种检索,该检索包括云属性的联合概率分布函数(PDF)给出了测量和先验知识。贝叶斯后部PDF提供最大似然估计,特定测量中的信息内容,观察和前瞻性模型不确定性的效果,以及定量误差估计。它还提供了对是否以及在哪一组观察中能够提供独特的解决方案。在这项工作中,贝叶斯马尔可夫链蒙特卡罗(MCMC)算法用于对远程南海的浅液体云中检索云属性的接头后部PDF进行采样。来自空间和被动的云云雷达和可见和近红外反射率的组合主动和被动观测用于检索云液滴和毛毛仪的伽马粒度分布(PSD)的参数。组合的主动和被动测量能够区分云层,无沉淀;然而,PSD属性的独特检索需要规范场景适当的先验估计。虽然可以通过使用来自94-GHz被动亮度温度测量的信息来减轻无限制检索的大部分不确定性,但只需提高测量精度即可呈现唯一的解决方案。结果展示了贝叶斯检索方法的稳健性,并突出了在未确定的遥感检索中的适当场景一致的事先约束的重要性。

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