With the aim to enhance automation in conflict detection and resolution (CD&R) tasks in the Air Traffic Management domain, in this paper we propose deep learning techniques (DL) that can learn models of Air Traffic Controllers' (ATCO) reactions in resolving conflicts that can violate separation minimum constraints among aircraft trajectories: This implies learning when the ATCO will react towards resolving a conflict, and how he/she will react. Timely reactions, to which this paper aims, focus on when do reactions happen, aiming to predict the trajectory points, as the trajectory evolves, that the ATCO issues a conflict resolution action, while also predicting the type of resolution action (if any). Towards this goal, the paper formulates the ATCO reactions prediction problem for CD&R, and presents DL methods that can model ATCO timely reactions and evaluates these methods in real-world data sets, showing their efficacy in prediction with very high accuracy.
翻译:为加强空中交通管理领域冲突探测和解决(CD和R)任务的自动化,本文件建议采用深层次学习技术(DL),学习空中交通管制员(ATCO)在解决冲突时的反应模式,这些反应模式可能违反飞机轨迹之间最低限度的分离限制:这意味着学习ATCO在对解决冲突作出反应时将如何作出反应,以及他/她将如何作出反应。 及时反应(本文件针对的是这些反应),重点是何时发生反应,目的是随着轨迹的演变预测轨道点,即ATCO发布解决冲突行动,同时预测解决行动的类型(如果有的话)。为了实现这一目标,该文件为CD和R制定了ATCO反应预测问题,并介绍了DL方法,这些方法可以模拟ATCO的及时反应,并在现实世界数据集中评估这些方法,以非常精确的预测方式显示其效力。