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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Statistics of precipitation reflectivity images and cascade of Gaussian-scale mixtures in the wavelet domain: A formalism for eproducing extremes and coherent multiscale structures
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Statistics of precipitation reflectivity images and cascade of Gaussian-scale mixtures in the wavelet domain: A formalism for eproducing extremes and coherent multiscale structures

机译:降水统计反射率图像和Gaussian-scale混合物的级联小波域:eproducing的形式主义极端和连贯的多尺度结构

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摘要

To estimate precipitation intensity in a Bayesian framework, given multiple sources of noisy measurements, a priori information about the multiscale statistics of precipitation is essential. In this paper, statistics of remotely sensed precipitation reflectivity imageries are studied using two different data sets of randomly selected storms for which coincident ground-based and spaceborne precipitation radar data were available. Two hundred reflectivity images of independent storm events were collected over two ground validation sites of the Tropical Rainfall Measurement Mission (TRMM) in the United States. Comparing ground-based and spaceborne images, second-order statistics of the measurement error is characterized. The average spectral signature and second-order scaling properties of those images are documented at different orientations in the Fourier domain. Decomposition of images using band-pass multiscale oriented filters reveals remarkable non-Gaussian marginal statistics and scale-to-scale dependence. Our results show that despite different physical storm structures, there are some inherent statistical properties which can be robustly parametrized and exploited as a priori information for parsimonious multiscale estimation of precipitation fields. A particular mixture of Gaussian random variables in the wavelet domain was found to be a suitable probability model that can reproduce the non-Gaussian marginal distribution as well as the scale-to-scale joint statistics of precipitation reflectivity data, important for properly capturing extremes and the coherent multiscale features of rainfall fields.
机译:贝叶斯估计降水强度框架,给出多个来源的噪音测量,先验信息多尺度降水的统计数据必不可少的。感觉到降水反射率意象使用两种不同的数据集的随机研究选择与地面的风暴和星载降水雷达数据可用。独立的风暴事件收集/ 2地面验证网站的热带降雨测量任务(TRMM)在美国。地面和星载图像相比,二阶统计数据的测量误差特点是。和二阶扩展属性图像记录在不同的方向在傅里叶域中。使用带通面向多尺度的过滤器显示显著的非高斯边际统计和scale-to-scale依赖。结果表明,尽管不同的物理风暴结构,有一些固有的统计特性可以强劲参数化和利用先验信息简洁的多尺度估计降水字段。混合高斯随机变量的小波域被发现一个合适的概率模型能够再现非高斯边际分布以及scale-to-scale联合降水统计反射率数据,正确地重要捕捉极端和相干多尺度降雨的特征字段。

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