基于密度的聚类方法在空域流量自动识别中的应用探讨

Christian Verdonk Gallego, V. G. Gómez Comendador, F. S. Sáez Nieto, Miguel Garcia Martinez
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引用次数: 15

摘要

空中交通管理系统每天都会产生大量的轨迹数据。利用无监督机器学习技术可以对飞行轨迹进行聚类,提取主要的空中交通流。一种众所周知的无监督提取空中交通流量的方法分为两步。第一步降低轨道数据的维数,而第二步基于基于密度的算法DBSCAN对数据进行聚类。本文探讨了基于密度的集群的进展,如OPTICS或HDBSCAN*。这种评估是基于对这些算法提供的聚类解决方案的定量和定性评估。此外,本文还提出了一种分层聚类算法来处理该方法中的噪声。该算法基于DBSCAN* (RDBSCAN*)的递归应用程序。本文论证了这些算法对不同超参数的敏感性,并为所有方法通用的主要参数推荐了一个特定的设置。RDBSCAN*在基于密度的内部有效性度量方面优于其他算法。最后,聚类结果表明,该算法有效地提取了数据集的主要聚类,并将离群点与这些主要聚类联系起来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discussion On Density-Based Clustering Methods Applied for Automated Identification of Airspace Flows
Air Traffic Management systems generate a huge amount of track data daily. Flight trajectories can be clustered to extract main air traffic flows by means of unsupervised machine learning techniques. A well-known methodology for unsupervised extraction of air traffic flows conducts a two-step process. The first step reduces the dimensionality of the track data, whereas the second step clusters the data based on a density-based algorithm, DBSCAN. This paper explores advancements in density-based clustering such as OPTICS or HDBSCAN*. This assessment is based on quantitative and qualitative evaluations of the clustering solutions offered by these algorithms. In addition, the paper proposes a hierarchical clustering algorithm for handling noise in this methodology. This algorithm is based on a recursive application of DBSCAN* (RDBSCAN*). The paper demonstrates the sensitivity of these algorithms to different hyper-parameters, recommending a specific setting for the main one, which is common for all methods. RDBSCAN* outperforms the other algorithms in terms of the density-based internal validity metric. Finally, the outcome of the clustering shows that the algorithm extracts main clusters of the dataset effectively, connecting outliers to these main clusters.
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