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Learning Traffic Patterns at Small Airports From Flight Tracks

机译:从航迹中学习小型机场的交通模式

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The majority of reported near-midair collisions that involve a general aviation aircraft occur in the vicinity of nontowered airports. A prior work has investigated the feasibility of creating an automated air traffic control system for these nontowered airports using solutions to a partially observable Markov decision process. Validating such system will require an accurate model of aircraft behavior in the traffic pattern. This paper evaluates the different approaches for deriving traffic pattern models from recorded radar data. The first approach is based on prior trajectory clustering work, where turning points in trajectories are identified and clustered. This method performs well on simulated data, but due to its reliance on noisy heading rates, it has difficulty with real-world data. The second approach uses Bayesian inference techniques to learn the parameters of the traffic pattern model, where a hidden semi-Markov model with a hierarchical Dirichlet process as a prior is investigated. Inference in this model is made computationally tractable using Markov chain Monte Carlo methods. The turning point and Bayesian models are compared with each other using different f-divergence measures, and the latter is found to better represent the observed data.
机译:据报道,涉及通用航空飞机的近空中碰撞多数发生在非塔楼机场附近。先前的工作已经研究了使用部分可观察到的马尔可夫决策过程的解决方案为这些非塔式机场创建自动空中交通管制系统的可行性。验证这种系统将需要在交通模式下的飞机行为的准确模型。本文评估了从记录的雷达数据中得出交通模式模型的不同方法。第一种方法是基于先前的轨迹聚类工作,其中轨迹的转折点被识别和聚类。该方法在模拟数据上表现良好,但是由于依赖于嘈杂的航向率,因此难以处理实际数据。第二种方法使用贝叶斯推理技术来学习交通模式模型的参数,其中研究了具有分层Dirichlet过程作为先验的隐藏半马尔可夫模型。使用马尔可夫链蒙特卡洛方法可以使该模型的推论易于计算。使用不同的f散度度量将转折点模型和贝叶斯模型进行相互比较,发现后者可以更好地表示观察到的数据。

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