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Unsupervised aircraft trajectories clustering: a minimum entropy approach

机译:无监督的飞机轨迹集群:最低熵方法

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Clustering is a common operation in statistics. When data considered are functional in nature, like curves, dedicated algorithms exist, mostly based on truncated expansions on Hilbert basis. When additional constraints are put on the curves, like in applications related to air traffic where operational considerations are to be taken into account, usual procedures are no longer applicable. A new approach based on entropy minimization and Lie group modeling is presented here, yielding an efficient unsupervised algorithm suitable for automated traffic analysis. It outputs cluster centroids with low curvature, making it a valuable tool in airspace design applications or route planning.
机译:群集是统计数据的常见操作。当考虑的数据本质上是功能的,如曲线,存在专用算法,主要基于希尔伯特的截断扩展。当曲线上放置附加约束时,如在与空中交通有关的应用程序中,其中需要考虑操作考虑,通常的程序不再适用。这里提出了一种基于熵最小化和LIE组建模的新方法,产生了适用于自动流量分析的有效无监督算法。它输出具有低曲率的集群质心,使其成为空域设计应用或路线规划中的有价值的工具。

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