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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Empirical analysis of aircraft clusters in air traffic situation networks
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Empirical analysis of aircraft clusters in air traffic situation networks

机译:空中交通情况网络中飞机机群的实证分析

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The existing research on air traffic complexity ignores the effects of air traffic situation structure and, thus, cannot reflect the heterogeneous traffic density distribution in airspace. In this study, the structure of air traffic situation was characterized using the idea of community structure in complex networks. An aircraft cluster model was built, and an aircraft cluster discovery method based on depth-first traversal was proposed. The aircraft cluster division effect was comprehensively represented by cluster performance indices, including cohesion and stability. The routinely recorded radar data in two air traffic control sectors were collected to assess the cluster division results. Through statistics, the threshold intervals with 95% of best performance are 40-60km and 20-50km for the two sectors, respectively. The value 40km was selected to further statistically characterize the aircraft clusters. Compared with K-means clustering, the proposed method does not require the predefined number of clusters and has high stability, which confirms its feasibility into cluster division in dynamic air traffic situation. The structural characteristics of aircraft clusters, including the average intra-cluster horizontal distance, number of clusters, and size and life cycle of clusters, were statistically analyzed. Comparison of cluster structures with the commonly used dynamic density index shows that in air traffic situation with relatively large number big size of clusters, the aircraft trajectory changes more frequently. Structural characterization of aircraft clusters is able to portray the nonuniformity of traffic density distribution, and contributes to comprehensive description of air traffic situation, thus providing a new prospect for analysis of air traffic complexity. Moreover, aircraft cluster division contributes to auto-identification of hot-spots on radar screen, and efficiently eliminates the workload imposed on controllers during judgment of these congestion hot-spots, thereby improving the air traffic operation efficiency.
机译:现有的关于空中交通复杂性的研究忽略了空中交通状况结构的影响,因此不能反映空域中交通密度的异质分布。在这项研究中,使用复杂网络中的社区结构思想来表征空中交通状况的结构。建立了飞机群模型,提出了一种基于深度优先遍历的飞机群发现方法。飞机的机群划分效果由机群性能指标(包括内聚性和稳定性)全面表示。收集了两个空中交通管制部门常规记录的雷达数据,以评估机群划分结果。通过统计,两个部门的最佳性能的阈值间隔分别为40-60 km和20-50 km。选择40km值是为了进一步统计飞机群的特征。与K-means聚类相比,该方法不需要预先定义的聚类数,并且具有较高的稳定性,这证明了该方法在动态空中交通情况下进行聚类划分的可行性。统计分析了飞机机群的结构特征,包括平均机群内水平距离,机群数以及机群的大小和寿命周期。将机群结构与常用的动态密度指数进行比较表明,在机群数量较大,数量较大的空中交通情况下,飞机的轨迹变化更为频繁。飞机机群的结构表征能够刻画交通密度分布的不均匀性,有助于全面描述空中交通状况,从而为分析空中交通复杂性提供新的前景。此外,航空器机群的划分有助于自动识别雷达屏幕上的热点,并有效地消除了在判断这些拥挤热点期间施加在控制器上的工作量,从而提高了空中交通运营效率。

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