基于A- smgcs数据的地面运动轨迹表示匹配算法

Thanh-Nam Tran, Due-Thinh Pham, S. Alam
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引用次数: 4

摘要

越来越多的空中交通数据的可用性为更好地了解空中交通管理(ATM)系统提供了新的机会。在机场-机场方面,A-SMGCS(先进地面运动引导和控制系统)数据可以通过了解交通模式、滑行道使用情况、地面速度分布和任何异常行为,为提高机场运营的效率和安全性提供有用的见解。然而,A-SMGCS数据来自MLAT、ADS-B和SMR等多个传感器的融合。这导致高和可变的噪声,缺失的数据值,以及时间和空间的不对齐。在这项研究中,我们提出了一种新的、简化的地面运动轨迹表示方法,该方法使用了a - smgcs数据的地图匹配算法。建议的方法不仅克服了上述数据问题,而且考虑了机场具体的运营限制。该算法具有良好的匹配效果,平均百分比误差约为8.13%。结果图中节点的匹配轨迹和序列,支持对机场运行的各种分析。为了证明所提出方法的有效性,我们使用新加坡樟宜机场一个月的A-SMGCS数据进行了一些分析,如交通模式、出租车车道使用、速度分析和异常检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Map-Matching Algorithm for Ground Movement Trajectory Representation using A-SMGCS Data
Increasing availability of air traffic data has opened new opportunities for better understanding of Air Traffic Management (ATM) system. At Airport-Air side, A-SMGCS (Ad-vanced Surface Movement Guidance & Control System) data may provide useful insights to improve efficiency and safety of airport operations by understanding traffic patterns, taxiway usage, ground speed profiles and any anomaly behaviour. However, A-SMGCS data comes from the fusion of several sensors such as MLAT, ADS-B and SMR. This leads to high and variable noise, missing data values, and temporal and spatial misalignment. In this study, we proposed a new and simplified representation of ground movement trajectories using a map-matching algorithm applied on A-SMGCS data. The proposed approach not only overcomes above mentioned issues of data, but also takes into consideration airport specific operational constraints. The algorithm shows a good matching results with mean percentage error of approximate 8.13%. The matching trajectories and sequences of nodes in resulting graph, supports a variety of analysis about airport operations. To show the effectiveness of proposed approach, we performed some analysis such as traffic patterns, taxi-way usages, speed profiling and anomaly detection, using one month of A-SMGCS data at Singapore Changi Airport.
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