分析航空干扰的图形信号处理技术

Max Z. Li, Karthik Gopalakrishnan, Kristyn Pantoja, H. Balakrishnan
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引用次数: 9

摘要

了解空中交通延误和中断的特征对于制定减轻其重大经济和环境影响的方法至关重要。传统的延误绩效指标仅反映机场发生的航班延误的程度;在这项工作中,我们表明,在机场网络中表征延误的空间分布也很重要。我们分析图形支持的信号,利用频谱理论和图形信号处理技术来计算分析和模拟驱动的边界,以识别空间分布中的异常值。然后,我们将这些方法应用于机场延误网络的案例,并通过分析2008年至2017年的美国机场延误来证明我们方法的适用性。我们还进行了特定航空公司的分析,以深入了解各个航空公司子网的延迟动态。通过我们的分析,我们强调了不同类型的中断之间延迟动态的关键差异,从飓风和飓风到机场中断。我们还研究了航空公司子网和全系统网络之间的延迟相互作用,并编制了一个异常天数的清单,可以指导未来的航空运营和研究。在此过程中,我们展示了我们的方法如何在航空运输环境中提供运营见解。我们的分析为传统的航空延误基准提供了一个补充度量,并帮助航空公司、交通流量管理人员和运输系统规划者量化非标称系统性能。
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Graph Signal Processing Techniques for Analyzing Aviation Disruptions
Understanding the characteristics of air-traffic delays and disruptions is critical for developing ways to mitigate their significant economic and environmental impacts. Conventional delay-performance metrics reflect only the magnitude of incurred flight delays at airports; in this work, we show that it is also important to characterize the spatial distribution of delays across a network of airports. We analyze graph-supported signals, leveraging techniques from spectral theory and graph-signal processing to compute analytical and simulation-driven bounds for identifying outliers in spatial distribution. We then apply these methods to the case of airport-delay networks and demonstrate the applicability of our methods by analyzing U.S. airport delays from 2008 through 2017. We also perform an airline-specific analysis, deriving insights into the delay dynamics of individual airline subnetworks. Through our analysis, we highlight key differences in delay dynamics between different types of disruptions, ranging from nor’easters and hurricanes to airport outages. We also examine delay interactions between airline subnetworks and the system-wide network and compile an inventory of outlier days that could guide future aviation operations and research. In doing so, we demonstrate how our approach can provide operational insights in an air-transportation setting. Our analysis provides a complementary metric to conventional aviation-delay benchmarks and aids airlines, traffic-flow managers, and transportation-system planners in quantifying off-nominal system performance.
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