罗杰:利用ADS-B数据的在线飞行效率监测系统

Shen Wang, Aditya Grover, Brian Mac Namee, Philip Plantholt, J. Lopez-Leones, P. Sanchez-Escalonilla
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引用次数: 0

摘要

业绩审查股(PRU)每月在欧洲地区报告飞行效率指标,帮助空中交通管理(ATM)界确定飞行距离是否过长(与理想的飞行路线长度相比)。然而,最近的研究提供了更多的指标,全面捕捉飞行效率的其他因素,包括燃料消耗、时间依从性和航线收费。然而,所有这些指标的效力都减弱了,因为目前只有在飞行发生近一个月后才能获得这些指标。使用这些指标来缓解不可预测的热点(即空中交通拥挤的航段)是不够及时的,因为这些热点经常导致意想不到的地面延误。本文提出了一种利用最近点搜索法近实时在线计算一般飞行效率指标的方法。使用Apache Kafka和Spark实现了一个名为ROGER(综合在线飞行效率监测)的原型系统。ROGER可以消化大规模异构数据集(即主要是ADS-B数据,下一代飞机监视技术),每5秒计算一次指标。我们在实际数据集上的实验表明,与现有的离线方法相比,所提出的在线指标计算方法可以达到较高的精度,并且ROGER在吞吐量和延迟方面可以达到理想的系统性能。本文还描述了一个用例,展示了ROGER如何更有效地帮助缓解热点。
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ROGER: An On-Line Flight Efficiency Monitoring System Using ADS-B Data
Flight efficiency indicators reported monthly in the European area by the Performance Review Unit (PRU) help the air traffic management (ATM) community determine if excessive distances are being flown (compared with the ideal lengths of flight routes). Recent research, however, provides more indicators that comprehensively capture flight efficiencies in terms of other factors including fuel consumption, time adherence, and route charges. The efficacy of all of these indicators, however, is diminished as they are currently only available almost a month after flights take place. This is not sufficiently timely to use these indicators for the alleviation of unpredictable hotspots (i.e. sectors with congested air traffic), which often leads to unexpected ground delays. This paper proposes a methodology to calculate general flight efficiency indicators on-line in near real-time using nearest point search. A prototype system called ROGER (compRehensive On-line fliGht Efficiency monitoRing) is implemented using Apache Kafka and Spark. ROGER can digest large-scale heterogeneous datasets (i.e. mainly ADS-B data, the next generation aircraft surveillance technology) to compute indicators every 5 seconds. Our experiments on realistic datasets demonstrate that the proposed on-line indicator calculation method can achieve high accuracy compared with existing off-line approaches, and that ROGER can achieve desirable system performance in throughput and latency. A use case is also described showing how ROGER can assist in alleviating hotspots more effectively.
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