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High-precision measurements of the co-polar correlation coefficient: non-Gaussian errors and retrieval of the dispersion parameter µ in rainfall

机译:同相相关系数的高精度测量:非高斯误差和降雨中色散参数μ的获取

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摘要

The co-polar correlation coefficient (ρhv) has many applications, including hydrometeor classification, ground clutter and melting layer identification, interpretation of ice microphysics and the retrieval of rain drop size distributions (DSDs). However, we currently lack the quantitative error estimates that are necessary if these applications are to be fully exploited. Previous error estimates of ρhv rely on knowledge of the unknown "true" ρhv and implicitly assume a Gaussian probability distribution function of ρhv samples. We show that frequency distributions of ρhv estimates are in fact highly negatively skewed. A new variable: L = -log10(1 - ρhv) is defined, which does have Gaussian error statistics, and a standard deviation depending only on the number of independent radar pulses. This is verified using observations of spherical drizzle drops, allowing, for the first time, the construction of rigorous confidence intervals in estimates of ρhv. In addition, we demonstrate how the imperfect co-location of the horizontal and vertical polarisation sample volumes may be accounted for.ududThe possibility of using L to estimate the dispersion parameter (µ) in the gamma drop size distribution is investigated. We find that including drop oscillations is essential for this application, otherwise there could be biases in retrieved µ of up to ~8. Preliminary results in rainfall are presented. In a convective rain case study, our estimates show µ to be substantially larger than 0 (an exponential DSD). In this particular rain event, rain rate would be overestimated by up to 50% if a simple exponential DSD is assumed.
机译:同极相关系数(ρhv)有许多应用,包括水凝流星分类,地物杂波和融化层识别,冰微物理学的解释以及雨滴大小分布(DSD)的检索。但是,我们目前缺乏定量误差估计,而这些误差是要充分利用这些应用所必需的。 ρhv的先前误差估计依赖于未知的“真实”ρhv的知识,并隐含地假设ρhv样本的高斯概率分布函数。我们表明ρhv估计的频率分布实际上高度负偏斜。定义了一个新变量:L = -log10(1-ρhv),它确实具有高斯误差统计信息,并且其标准偏差仅取决于独立雷达脉冲的数量。球形细雨滴的观察证实了这一点,这首次允许在ρhv的估计中构建严格的置信区间。此外,我们演示了如何解释水平极化极化样本量和垂直极化极化样本量的不理想位置。 ud ud研究了使用L估计伽玛液滴尺寸分布中色散参数(μ)的可能性。我们发现,对于这种应用,必须包括液滴振荡,否则,在取回的µ中可能会有偏差,偏差最大为〜8。给出了降雨的初步结果。在对流降雨案例研究中,我们的估计表明µ显着大于0(指数DSD)。在这种特殊的降雨事件中,如果采用简单的指数DSD,降雨率将被高估多达50%。

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