Dynamic airspace configuration by genetic algorithm

被引:9
|
作者
Marina Sergeeva [1 ]
Daniel Delahaye [1 ]
Catherine Mancel [1 ]
Andrija Vidosavljevic [1 ]
机构
[1] Laboratory in Applied Mathematics, Computer Science and Automatics for Air Transport, Ecole Nationale de L’Aviation Civile
关键词
Dynamic airspace configuration; Genetic algorithm; Sectorization; Graph partitioning;
D O I
暂无
中图分类号
V355 [空中管制与飞行调度];
学科分类号
摘要
With the continuous air traffic growth and limits of resources, there is a need for reducing the congestion of the airspace systems. Nowadays, several projects are launched, aimed at modernizing the global air transportation system and air traffic management. In recent years, special interest has been paid to the solution of the dynamic airspace configuration problem. Airspace sector configurations need to be dynamically adjusted to provide maximum efficiency and flexibility in response to changing weather and traffic conditions.The main objective of this work is to automatically adapt the airspace configurations according to the evolution of traffic. In order to reach this objective, the airspace is considered to be divided into predefined 3D airspace blocks which have to be grouped or ungrouped depending on the traffic situation. The airspace structure is represented as a graph and each airspace configuration is created using a graph partitioning technique. We optimize airspace configurations using a genetic algorithm. The developed algorithm generates a sequence of sector configurations for one day of operation with the minimized controller workload. The overall methodology is implemented and successfully tested with air traffic data taken for one day and for several different airspace control areas of Europe.
引用
收藏
页码:300 / 314
页数:15
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