Adaptable Graph Networks for Air Traffic Analysis Applications

Shelby S. Holdren, Max Z. Li, J. Hoffman
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引用次数: 1

Abstract

The U.S. National Airspace System (NAS), its interconnected operations, and resultant dynamics (e.g., flight delays, route configurations) can be understood at different scales. At the resolution of the entire NAS, a component (e.g., Denver Center) could be considered as one homogeneous node, with dependencies on other components (e.g., adjacent centers) and exogenous stakeholders (e.g., Air Traffic Control System Command Center, airline network operations centers). Understanding the connected behavior of the NAS in a data-driven and adaptive way is critical for rigorously determining whether interventions, strategic or tactical, were successful. However, within NAS components flight operations induce a multitude of relationships between parts of the airspace at many levels. To capture, analyze, and build upon such a connected and multi-scaled system, we require graph-based network models at varying resolutions, which can be adapted to fit a particular analysis use case. As an example, graphical representation at a higher resolution within a component may be required to capture nuanced behavior in analyses focused on local perturbations. In this work, we present a pipeline that constructs flexible graph-structured data from flight trajectories, and leverage this for different case studies within the NAS, all focused on evaluating different aspects of traffic flow management, and at different scales.
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空中交通分析应用的自适应图网络
美国国家空域系统(NAS),其相互关联的操作,以及由此产生的动态(例如,航班延误,航线配置)可以在不同的尺度上理解。在整个NAS的解决方案中,一个组件(如丹佛中心)可以被视为一个同质节点,依赖于其他组件(如相邻中心)和外源性利益相关者(如空中交通管制系统指挥中心、航空网络运营中心)。以数据驱动和自适应的方式了解NAS的连接行为对于严格确定干预措施(战略或战术)是否成功至关重要。然而,在NAS组件中,飞行操作在许多层面上诱发了空域各部分之间的大量关系。为了捕获、分析和构建这样一个连接的多尺度系统,我们需要不同分辨率的基于图的网络模型,这些模型可以适应特定的分析用例。例如,在集中于局部扰动的分析中,可能需要在组件中以更高分辨率的图形表示来捕捉细微的行为。在这项工作中,我们提出了一个从飞行轨迹构建灵活的图形结构化数据的管道,并将其用于NAS内的不同案例研究,所有这些研究都集中在评估交通流量管理的不同方面,并且在不同的尺度上。
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