大型自动相关监视广播数据集的飞行提取与相位识别

Junzi Sun, J. Ellerbroek, J. Hoekstra
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引用次数: 28

摘要

自动相关监视广播(ADS-B)[1,2]在现代商用飞机上广泛实施,并将在2020年成为强制性设备。全球数以万计的飞机通过机载ADS-B应答器不断广播飞行状态信息,如位置、速度和垂直速度。这些数据由24位国际民用航空组织(ICAO)地址识别,未加密,可以通过简单的地面站设置接收和解码。大量的开放数据为ATM的研究带来了巨大的潜力。大多数依赖飞机飞行数据(历史或实时)的研究都需要了解每架飞机在给定时间的飞行阶段[3-7]。然而,当处理来自ADS-B这样的大型数据集时,由于爬升率、高度、速度或这些因素的组合存在较大差异,因此不可避免地会出现飞行阶段确定性定义的例外情况。在这种情况下,需要的不是基于飞行约定使用确定性逻辑来处理和提取飞行数据,而是需要鲁棒和通用的识别算法。本文提出并测试了一种双重方法:1)机器学习聚类步骤,可以处理大量分散的ADS-B数据提取连续飞行;2)飞行阶段识别步骤,可以根据不同的飞行阶段分割任何类型的飞机和轨迹的飞行数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flight Extraction and Phase Identification for Large Automatic Dependent Surveillance-Broadcast Datasets
AUTOMATIC dependent surveillance–broadcast (ADS-B) [1,2] is widely implemented in modern commercial aircraft and will become mandatory equipment in 2020. Flight state information such as position, velocity, and vertical rate are broadcast by tens of thousands of aircraft around the world constantly using onboard ADS-B transponders. These data are identified by a 24-bit International Civil Aviation Organization (ICAO) address, are unencrypted, and can be received and decoded with simple ground station set-ups. This large amount of open data brings a huge potential for ATM research. Most studies that rely on aircraft flight data (historical or real-time) require knowledge on the flight phase of each aircraft at a given time [3–7]. However, when dealing with large datasets such as from ADS-B, which can contain many tens of thousands of flights, exceptions to deterministic definitions of flight phases are inevitable, due to large variances in climb rate, altitude, velocity, or a combination of these. In this case, instead of using deterministic logic to process and extract flight data based on flight conventions, robust and versatile identification algorithms are required. In this paper, a twofold method is proposed and tested: 1) a machine learning clustering step that can handle large amounts of scattered ADS-B data to extract continuous flights, and 2) a flight phase identification step that can segment flight data of any type of aircraft and trajectory by different flight phases.
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