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A Self-Organizing Maps Multivariate Spatio-temporal Approach for the Classification of Atmospheric Conditions

机译:自组织映射多元时空方法用于大气条件分类

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This work demonstrates the potential of Self-Organizing Maps (SOM) as a multivariate clustering approach of spatio-temporal datasets in atmospheric physics. A comprehensive framework is proposed and the method is applied and assessed for its performance in the field of synoptic climatology within a specific region at southeastern Mediterranean. The results indicate that the SOM can be a powerful tool for the identification and classification of atmospheric conditions, allowing an analytical description of the principal atmospheric states. The coupling of sea level pressure (SLP) and 500hPa geopotential ($500) in a synoptic-scale domain with the wind, the specific humidity and the air and dew point temperature in the chosen mesoscale subdomain, allows the SOM algorithm to define the relevant atmospheric circulation patterns. The corresponding patterns are well documented and the method accounts for their seasonality. Furthermore, in the resulting two-dimensional lattice the similar patterns are mapped closer to each other, compared to more dissimilar ones.
机译:这项工作证明了自组织图(SOM)作为大气物理学中时空数据集的多元聚类方法的潜力。提出了一个全面的框架,并对该方法在地中海东南部特定区域内的天气气候学领域中的应用进行了评估。结果表明,SOM是大气条件识别和分类的有力工具,可以对主要大气状态进行分析描述。天气尺度域中的海平面压力(SLP)和500hPa地势($ 500)与所选中尺度子域中的风,比湿度以及空气和露点温度的耦合,使SOM算法可以定义相关的大气循环模式。正确记录了相应的模式,该方法考虑了它们的季节性。此外,在所得的二维晶格中,与更多不相似的图案相比,相似的图案相互映射得更近。

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