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首页> 外文期刊>Hydrology and Earth System Sciences >A statistical approach for rain intensity differentiation using Meteosat Second Generation-Spinning Enhanced Visible and InfraRed Imager observations
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A statistical approach for rain intensity differentiation using Meteosat Second Generation-Spinning Enhanced Visible and InfraRed Imager observations

机译:使用Meteosat第二代自旋增强型可见光和红外成像仪观测结果进行雨强度区分的统计方法

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This study exploits the Meteosat Second Generation (MSG)-Spinning Enhanced Visible and Infrared Imager (SEVIRI) observations to evaluate the rain class at high spatial and temporal resolutions and, to this aim, proposes the Rain Class Evaluation from Infrared and Visible observation (RainCEIV) technique. RainCEIV is composed of two modules: a cloud classification algorithm which individuates and characterizes the cloudy pixels, and a supervised classifier that delineates the rainy areas according to the three rainfall intensity classes, the non-rainy (rain rate value<0.5mm h~(-1)) class, the light-to-moderate rainy class (0.5mm h~(-1) ≤rain rate value<4mm h~(-1)), and the heavy-to-very-heavy-rainy class (rain rate value≥4mm h~(-1)). The second module considers as input the spectral and textural features of the infrared and visible SEVIRI observations for the cloudy pixels detected by the first module. It also takes the temporal differences of the brightness temperatures linked to the SEVIRI water vapour channels as indicative of the atmospheric instability strongly related to the occurrence of rainfall events. The rainfall rates used in the training phase are obtained through the Precipitation Estimation at Microwave frequencies, PEMW (an algorithm for rain rate retrievals based on Atmospheric Microwave Sounder Unit (AMSU)-B observations). RainCEIV's principal aim is that of supplying preliminary qualitative information on the rainy areas within the Mediterranean Basin where there is no radar network coverage. The results of RainCEIV have been validated against radar-derived rainfall measurements from the Italian Operational Weather Radar Network for some case studies limited to the Mediterranean area. The dichotomous assessment related to daytime (nighttime) validation shows that RainCEIV is able to detect rainyon-rainy areas with an accuracy of about 97% (96 %), and when all the rainy classes are considered, it shows a Heidke skill score of 67% (62 %), a bias score of 1.36 (1.58), and a probability of detection of rainy areas of 81% (81 %).
机译:这项研究利用气象卫星第二代(MSG)旋转增强型可见光和红外成像仪(SEVIRI)观测值来评估高时空分辨率下的雨量等级,为此,提出了从红外和可见光观测来的雨量等级评估(RainCEIV )技术。 RainCEIV由两个模块组成:云分类算法,用于区分和表征多云像素;监督分类器,根据三个降雨强度等级(非降雨(降雨率值<0.5mm h〜( -1))级,轻至中雨等级(0.5mm h〜(-1)≤降雨率值<4mm h〜(-1))和重到非常多雨等级(降雨率值≥4mmh〜(-1))。第二个模块将第一个模块检测到的浑浊像素的红外和可见SEVIRI观测的光谱和纹理特征视为输入。它还将与SEVIRI水蒸气通道有关的亮度温度的时间差异视为与降雨事件发生密切相关的大气不稳定性的指标。训练阶段使用的降雨率是通过微波频率下的降水估计PEMW(基于大气微波测深仪(AMSU)-B观测值的降雨率检索算法)获得的。 RainCEIV的主要目的是提供有关地中海盆地内没有雷达网络覆盖的多雨地区的初步定性信息。 RainCEIV的结果已针对意大利运行天气雷达网络的雷达降雨测量结果进行了验证,仅适用于地中海地区的一些案例研究。与白天(夜间)验证有关的二分评估显示,RainCEIV能够检测到雨天/非雨天区域,其准确度约为97%(96%),当考虑所有雨天等级时,它显示了Heidke技能得分率为67%(62%),偏差得分为1.36(1.58),发现雨天的概率为81%(81%)。

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