Using clustering algorithms and GPM data to identify spatial precipitation patterns over southeastern Brazil

IF 1 4区 地球科学 Q4 METEOROLOGY & ATMOSPHERIC SCIENCES Atmosfera Pub Date : 2022-08-05 DOI:10.20937/atm.53155
Bruno Guerreiro Miranda, Rogério Galante Negri, Luana Albertani Pampuch
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Abstract

Southeastern Brazil comprises an important geoeconomic and populous region in South America. Consequently, it is essential to analyze and understand the precipitation profiles in this region. Among different data sources and techniques available to perform such study, the use of clustering algorithms and information from the Global Precipitation Measurement (GPM) project rises as a convenient yet few exploited alternative. Precisely, this study employs the K-Means, the Hierarchical Ward, and the Self-Organizing Maps methods to cluster the annual and seasonal precipitation data from GPM project recorded from 2001 to 2019. The adopted methods are compared in terms of quantitative measures and the number of clusters defined through a well-established rule. The results demonstrate that the annual and seasonal periods are organized according to different number of clusters. Moreover, the results allow: identify the presence of a spatially heterogeneous distribution in the study area; to conclude that the K-Means algorithm is a suitable clustering method in the context of this investigation when compared to Ward’s Hierarchical and Self-Organizing Maps methods in terms of the Calinski-Harabasz and Davies-Bouldin measures; and that the spatial precipitation distribution over Southeastern Brazil is represented by 10 clusters in annual and summer periods, 11 clusters in autumn and spring and 9 clusters in winter period.
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利用聚类算法和GPM数据识别巴西东南部的空间降水模式
巴西东南部是南美洲重要的地缘经济和人口稠密地区。因此,分析和了解该地区的降水廓线是十分必要的。在可用于进行此类研究的不同数据源和技术中,使用聚类算法和来自全球降水测量(GPM)项目的信息是一种方便但很少被利用的替代方法。具体而言,本研究采用K-Means、分层区(Hierarchical Ward)和自组织地图(Self-Organizing Maps)方法对2001 - 2019年GPM项目记录的年度和季节性降水数据进行了聚类。采用的方法在定量度量和通过一个完善的规则定义的簇的数量方面进行了比较。结果表明,年周期和季节周期根据不同的集群数量进行组织。此外,结果允许:确定研究区域存在空间异质性分布;与Ward的Calinski-Harabasz和Davies-Bouldin测量的分层和自组织地图方法相比,K-Means算法是本研究背景下的一种合适的聚类方法;巴西东南部的空间降水分布在年和夏季由10个聚类代表。秋季和春季有11个聚集,冬季有9个聚集。
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来源期刊
Atmosfera
Atmosfera 地学-气象与大气科学
CiteScore
2.20
自引率
0.00%
发文量
46
审稿时长
6 months
期刊介绍: ATMÓSFERA seeks contributions on theoretical, basic, empirical and applied research in all the areas of atmospheric sciences, with emphasis on meteorology, climatology, aeronomy, physics, chemistry, and aerobiology. Interdisciplinary contributions are also accepted; especially those related with oceanography, hydrology, climate variability and change, ecology, forestry, glaciology, agriculture, environmental pollution, and other topics related to economy and society as they are affected by atmospheric hazards.
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