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Flight trajectory data analytics for characterization of air traffic flows: A comparative analysis of terminal area operations between New York, Hong Kong and Sao Paulo

机译:飞行轨迹数据分析,用于刻划空中交通流量:纽约,香港和圣保罗之间的终端区运营比较分析

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Future Air Traffic Management systems can benefit from innovative approaches that leverage the increasing availability of operational data to facilitate the development of new performance assessment and decision-support capabilities. This paper presents a data analytics framework for high-fidelity characterization of air traffic flows from large-scale flight tracking data. Machine learning methods are used to exploit spatiotemporal patterns in aircraft movement towards the identification of trajectory patterns and traffic flow patterns. The outcomes and potential impacts of this framework are demonstrated with a comparative analysis of terminal area operations in three representative multi-airport (metroplex) systems of the global air transportation system: New York, Hong Kong and Sao Paulo. As a descriptive tool for systematic analysis of the flow behavior, the framework allows for cross-metroplex comparisons of terminal airspace design, utilization and traffic performance. Novel quantitative metrics are created to summarize metroplex efficiency, capacity and predictability. The results reveal several structural, operational and performance differences between the multi-airport systems analyzed. Our findings show that New York presents the most complex airspace design, with considerably higher number of routes and interactions between them, as well as more dynamic changes in the terminal area flow structure during the day, in part driven by the presence of flow dependencies. Interestingly, it exhibits the best levels of traffic flow efficiency on average, both spatially and temporally, yet the highest variability in metroplex configuration performance, with more pronounced performance degradation during inclement weather.
机译:未来的空中交通管理系统可以受益于创新的方法,这些方法可以利用不断增加的运行数据的可用性来促进新的绩效评估和决策支持功能的开发。本文提出了一种数据分析框架,用于从大规模飞行跟踪数据中高保真地表征空中交通流量。机器学习方法用于开发飞机运动中的时空模式,以识别轨迹模式和交通流模式。通过对全球航空运输系统的三个代表性多机场(大都市)系统(纽约,香港和圣保罗)的终端区运营进行比较分析,证明了该框架的结果和潜在影响。作为对流动行为进行系统分析的描述性工具,该框架允许对终端空域设计,利用率和交通性能进行跨平台的比较。创建了新颖的定量指标来总结大都市区的效率,容量和可预测性。结果揭示了所分析的多机场系统之间在结构,操作和性能上的差异。我们的发现表明,纽约呈现出最复杂的空域设计,它们之间的航线和相互作用的数量要多得多,并且白天终端区流结构的动态变化更大,部分是由于存在流依赖性。有趣的是,它在空间和时间上平均表现出最高水平的交通流效率,但在大都会配置性能方面却表现出最大的可变性,在恶劣天气下性能下降更为明显。

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