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Scale-by-scale analysis of probability distributions for global MODIS-AQUA cloud properties: how the large scale signature of turbulence may impact statistical analyses of clouds

机译:全球Modis-Aqua云属性的概率分布规模分析:湍流的大规模签名是如何影响云的统计分析

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Means, standard deviations, homogeneity parameters used in models based on their ratio, and the probability distribution functions (PDFs) of cloud properties from the MODerate resolution Infrared Spectrometer (MODIS) are estimated globally as function of averaging scale varying from 5 to 500 km. The properties – cloud fraction, droplet effective radius, and liquid water path – all matter for cloud-climate uncertainty quantification and reduction efforts. Global means and standard deviations are confirmed to change with scale. For the range of scales considered, global means vary only within 3% for cloud fraction, 7% for liquid water path, and 0.2% for cloud particle effective radius. These scale dependences contribute to the uncertainties in their global budgets. Scale dependence for standard deviations and generalized flatness are compared to predictions for turbulent systems. Analytical expressions are identified that fit best to each observed PDF. While the best analytical PDF fit to each variable differs, all PDFs are well described by log-normal PDFs when the mean is normalized by the standard deviation inside each averaging domain. Importantly, log-normal distributions yield significantly better fits to the observations than gaussians at all scales. This suggests a possible approach for both sub-grid and unified stochastic modeling of these variables at all scales. The results also highlight the need to establish an adequate spatial resolution for two-stream radiative studies of cloud-climate interactions.
机译:基于它们的比率的模型中使用的模型中使用的标准偏差,来自中等分辨率红外光谱仪(MODIS)的概率分布函数(PDF)在全球范围内估算,因为平均比例从5到500km变化。性能 - 云分数,液滴有效半径和液态水路 - 云气候不确定性量化和减少努力的所有物质。全球手段和标准偏差被确认以规模变化。对于考虑的尺度范围,全局方式仅在云分数的3%范围内,液体水路为7%,云颗粒有效半径为0.2%。这些规模的依赖性有助于其全球预算的不确定性。将对标准偏差和广义平整度的缩放依赖性与湍流系统的预测进行了比较。鉴定分析表达式,其最适合每个观察到的PDF。虽然最佳分析PDF适合每个变量的不同之处,但是当通过在每个平均域内的标准偏差归一化时,所有PDF都是通过逻辑正常的PDF进行良好的。重要的是,日志正常分布的产量明显更好地符合所有尺度的高斯观察。这表明对所有尺度的这些变量的子网格和统一随机建模的可能方法。结果还突出了建立足够的空间分辨率的需要进行云气候相互作用的两流辐射研究。

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