This paper proposes a novel approach to predict and determine whether the average taxi- out time at an airport will exceed a pre-defined threshold within the next hour of operations. Prior work in this domain has focused exclusively on predicting taxi-out times on a flight-by-flight basis, which requires significant efforts and data on modeling taxiing activities from gates to runways. Learning directly from surface radar information with minimal processing, a computer vision-based model is proposed that incorporates airport surface data in such a way that adaptation-specific information (e.g., runway configuration, the state of aircraft in the taxiing process) is inferred implicitly and automatically by Artificial Intelligence (AI).
翻译:本文提出了一种新的办法,用以预测和确定机场的平均出租车出港时间在下一小时内是否会超过预定的门槛值,该领域以前的工作完全集中在逐次飞行的基础上预测出租车出港时间,这需要大量努力和数据,以模拟从大门到跑道的计程车活动,从地面雷达信息直接学习,并尽量减少处理,提议采用基于计算机的视觉模型,纳入机场地面数据,以便人工智能(AI)以默示和自动的方式推断具体适应信息(例如跑道配置、飞机在计程车过程中的状况)。