对地静止卫星云特性的无监督聚类估算热带对流云降水概率

IF 2.6 3区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES
Do-Yun Kim, Hee-Jae Kim, Yong-Sang Choi
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引用次数: 0

摘要

了解热带对流云的生长对强降雨的早期预警具有重要意义。本研究探讨了可以发展成具有高概率降水的云的tcc的特性。利用神经网络对地球同步卫星测得的云顶温度(CTT)、云光学厚度(COT)和云有效半径(CER)等遥感云特性进行训练。首先,图像分割识别具有不同云属性的TCC对象。然后,采用自组织映射(SOM)算法对具有相似云微物理特性的TCC对象进行聚类。最后,根据降水tcc占总tcc的比例,计算各tcc簇的降水概率(PP)。利用GPM (Global Precipitation Measurement)降水数据的综合多卫星检索,可以区分降水型tcc和非降水型tcc。结果表明,高PP(> 70%)的SOM团簇满足一定范围的云性质:CER≥20 μm, CTT < 230 K。PP通常随COT的增加而增加,但COT并不能作为确定高PP的明确云性质。然而,对于相对较薄的云(COT < 30), CER必须远远大于20 μm才能具有高PP。更重要的是,这些与PP≥70%相关的TCC条件在不同地区和时期是一致的。我们期望我们的结果将有助于利用地球同步卫星云特性对热带降水进行卫星临近预报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Clustering of Geostationary Satellite Cloud Properties for Estimating Precipitation Probabilities of Tropical Convective Clouds
Understanding the growth of tropical convective clouds (TCCs) is of vital importance for the early detection of heavy rainfall. This study explores the properties of TCCs that can develop into clouds with a high probability of precipitation. Remotely sensed cloud properties, such as cloud-top temperature (CTT), cloud optical thickness (COT), and cloud effective radius (CER) as measured by a geostationary satellite are trained by a neural network. First, image segmentation identifies TCC objects with different cloud properties. Then, a self-organizing map (SOM) algorithm clusters TCC objects with similar cloud microphysical properties. Finally, the precipitation probability (PP) for each cluster of TCCs is calculated based on the proportion of precipitating TCCs among the total number of TCCs. Precipitating TCCs can be distinguished from non-precipitating TCCs using Integrated Multi-satellitE Retrievals for GPM (Global Precipitation Measurement) precipitation data. Results show that SOM clusters with a high PP (> 70%) satisfy a certain range of cloud properties: CER ≥ 20 μm and CTT < 230 K. PP generally increases with increasing COT, but COT cannot be a clear cloud property to confirm a high PP. For relatively thin clouds (COT < 30), however, CER should be much larger than 20 μm to have a high PP. More importantly, these TCC conditions associated with a PP ≥ 70% are consistent across regions and periods. We expect our results will be useful for satellite nowcasting of tropical precipitation using geostationary satellite cloud properties.
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来源期刊
Journal of Applied Meteorology and Climatology
Journal of Applied Meteorology and Climatology 地学-气象与大气科学
CiteScore
5.10
自引率
6.70%
发文量
97
审稿时长
3 months
期刊介绍: The Journal of Applied Meteorology and Climatology (JAMC) (ISSN: 1558-8424; eISSN: 1558-8432) publishes applied research on meteorology and climatology. Examples of meteorological research include topics such as weather modification, satellite meteorology, radar meteorology, boundary layer processes, physical meteorology, air pollution meteorology (including dispersion and chemical processes), agricultural and forest meteorology, mountain meteorology, and applied meteorological numerical models. Examples of climatological research include the use of climate information in impact assessments, dynamical and statistical downscaling, seasonal climate forecast applications and verification, climate risk and vulnerability, development of climate monitoring tools, and urban and local climates.
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