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Modeling Weather Impact on Airport Arrival Miles-in-Trail Restrictions

机译:对机场到达的天气影响建模在线轨迹限制

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restrictions are the most frequently issued traffic management initiatives (TMIs) that are used to mitigate these imbalances. Miles-in-trail operations require aircraft in a traffic stream to meet a specific inter-aircraft separation in exchange for maintaining a safe and orderly flow within the stream. This stream of aircraft can be departing an airport, over a common fix, through a sector, on a specific route or arriving at an airport. This study begins by providing a high-level overview of the distribution and causes of arrival MIT restrictions for the top ten airports in the United States. This is followed by an in-depth analysis of the frequency, duration and cause of MIT restrictions impacting the Hartsfield-Jackson Atlanta International Airport (ATL) from 2009 through 2011. Then, machine-learning methods for predicting (1) situations in which MIT restrictions for ATL arrivals are implemented under low demand scenarios, and (2) days in which a large number of MIT restrictions are required to properly manage and control ATL arrivals are presented. More specifically, these predictions were accomplished by using an ensemble of decision trees with Bootstrap aggregation (BDT) and supervised machine learning was used to train the BDT binary classification models. The models were subsequently validated using data cross validation methods. When predicting the occurrence of arrival MIT restrictions under low demand situations, the model was able to achieve over all accuracy rates ranging from 84% to 90%, with false alarm ratios ranging from 10% to 15%. In the second set of studies designed to predict days on which a high number of MIT restrictions were required, overall accuracy rates of 80% were achieved with false alarm ratios of 20%. Overall, the predictions proposed by the model give better MIT usage information than what has been currently provided under current day operations. Traffic flow managers can use these predictions to identify potential MIT restrictions to eliminate (e.g., those occurring during low arrival demand periods), and to determine the days in which a significant number of restrictions may be required.
机译:限制是最常见的交通管理计划(TMI),用于减轻这些不平衡。在线行程操作需要飞机在交通流量中,以满足特定的飞机间分离,以换取在流内保持安全且有序地流动。这股飞机可以通过扇区在特定路线或到达机场的公共修复上离开机场。本研究首先提供了对美国前十大机场的抵达的分配和原因的高级概述。随后是对2009年至2011年影响Hartsfield-Jackson Atlanta International Airport(ATL)的频率,持续时间和机理限制的频率,持续时间和原因的深入分析。然后,用于预测(1)麻省理工学院的情况的机器学习方法对atl到达的限制在低需求方案下实施,(2)日,其中需要大量麻省理工学院限制才能正确管理和控制ATL抵达。更具体地,通过使用具有引导聚合(BDT)的决策树的集合来实现这些预测,并使用监督机器学习来训练BDT二进制分类模型。随后使用数据交叉验证方法进行验证模型。当预测低需求情况下的到达MIT限制的发生时,该模型能够实现从84%到90%的所有准确率,虚假报警比率范围为10%至15%。在第二组研究中,设计用于预测需要大量麻省理工学院限制的日子,通过20%的误报例实现了80%的总体精度率。总体而言,该模型提出的预测提供了比目前当天运营所提供的更好的麻省理工学员麻省理工划线管理信息信息。交通流量管理器可以使用这些预测来识别消除(例如,在低到达需求期间发生的那些)的潜在麻省理工学院限制,并确定可能需要大量限制的日期。

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