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Integration of fuzzy cluster analysis and kernel density estimation for tracking typhoon trajectories in the Taiwan region

机译:台湾地区台风轨迹的模糊聚类分析与核密度估计的集成

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摘要

Increasing our understanding of typhoon movements remains a priority in the western North Pacific. In this study, the trajectories of typhoons that affected Taiwan between 1986 and 2010 are used for clustering, where each trajectory consists of 6-hourly latitude-longitude positions over two days. We compare the performance of four statistical clustering methods, namely, k-means clustering, fuzzy c-means (FCM) clustering, hierarchical clustering, and normalized cut techniques. The results show that the FCM technique provides sufficient cluster efficiency with a relatively high degree of goodness of fit. FCM identifies six clusters according to the minimum coefficients of variation (CV). The hotspots of the typhoon centers in each cluster are determined by kernel density estimation (KDE). Moreover, the typhoon track belongs to six clusters with different membership degrees in FCM. The typhoon track density map is estimated by combining the KDE hotspot maps associated with the FCM weights. The information could be used in planning for disaster management.
机译:在北太平洋西部,我们对台风运动的了解仍是优先事项。在这项研究中,使用了1986年至2010年影响台湾的台风轨迹进行聚类,其中每条轨迹由两天的6小时经纬度位置组成。我们比较了四种统计聚类方法的性能,即k均值聚类,模糊c均值(FCM)聚类,分层聚类和归一化剪切技术。结果表明,FCM技术提供了足够的聚类效率,同时具有相对较高的拟合优度。 FCM根据最小变异系数(CV)识别六个聚类。每个聚类中的台风中心的热点由内核密度估计(KDE)确定。此外,台风路径属于FCM中具有不同隶属度的六个集群。通过结合与FCM权重相关的KDE热点图来估算台风径密度图。该信息可用于规划灾难管理。

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