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Towards Autonomous Air Traffic Control for Sequencing and Separation - A Deep Reinforcement Learning Approach

机译:走向自主空中交通管制以进行排序和分离-一种深度强化学习方法

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In this research, we study the feasibility and solution performance of using an artificial intelligent agent to perform the sequencing and separation task in air traffic control. Our goal is to safely separate the air traffic and minimizing the delay. To do this, we have the options to select the most efficient route and provide speed change commands for each aircraft. We use the NASA Sector 33 as our simulator to demonstrate our proposed method. Our results show that our artificial intelligent agent beats most of the human players in this simulation environment and is able to maintain safe separation and sequencing between the aircraft.
机译:在这项研究中,我们研究了使用人工智能代理在空中交通管制中执行排序和分离任务的可行性和解决方案性能。我们的目标是安全隔离空中交通,并最大程度地减少延误。为此,我们可以选择最有效的路线并为每架飞机提供变速命令。我们使用NASA Sector 33作为模拟器来演示我们提出的方法。我们的结果表明,我们的人工智能代理在此模拟环境中击败了大多数人类玩家,并且能够维持飞机之间的安全分离和排序。

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