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Supervised Learning Applied to Air Traffic Trajectory Classification

机译:监督学习在空中交通轨迹分类中的应用

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Given the recent increase of interest in introducing new vehicle types and missions into the National Airspace System, a transition towards a more autonomous air traffic control system is required in order to enable and handle increased density and complexity. This paper presents an exploratory effort of the needed autonomous capabilities by exploring supervised learning techniques in the context of aircraft trajectories. In particular, it focuses on the application of machine learning algorithms and neural network models to a runway recognition trajectory-classification study. It investigates the applicability and effectiveness of various classifiers using datasets containing trajectory records for a month of air traffic. A feature importance and sensitivity analysis are conducted to challenge the chosen time-based datasets and the ten selected features. The study demonstrates that classification accuracy levels of 90% and above can be reached in less than 40 seconds of training for most machine learning classifiers when one track data point, described by the ten selected features at a particular time step, per trajectory is used as input. It also shows that neural network models can achieve similar accuracy levels but at higher training time costs.
机译:鉴于最近有兴趣将新的车辆类型和任务引入国家空域系统,因此需要向更加自主的空中交通管制系统过渡,以实现并处理增加的密度和复杂性。本文通过在飞机轨迹的背景下探索监督学习技术,提出了所需自主能力的探索性努力。特别是,它着重于将机器学习算法和神经网络模型应用于跑道识别轨迹分类研究。它使用包含一个月空中交通轨迹记录的数据集来调查各种分类器的适用性和有效性。进行功能重要性和敏感性分析以挑战所选的基于时间的数据集和十个所选特征。该研究表明,对于大多数机器学习分类器而言,当使用每条轨迹的一个轨迹数据点(由特定时间步长的十个选定特征来描述)作为一个轨迹数据点时,对于大多数机器学习分类器而言,在不到40秒的训练中即可达到90%以上的分类精度水平输入。它还表明神经网络模型可以达到相似的准确度水平,但训练时间成本较高。

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