Integrated Scheduling Model for Arrivals and Departures in Metroplex Terminal Area
February 15, 2025 ยท Declared Dead ยท ๐ Journal of Aerospace Information Systems
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Authors
Tonghe li, Jixin Liu, Hao Jiang, Weili Zeng, Lei Yang
arXiv ID
2502.12196
Category
cs.NE: Neural & Evolutionary
Cross-listed
math.OC
Citations
0
Venue
Journal of Aerospace Information Systems
Last Checked
4 months ago
Abstract
In light of the rapid expansion of civil aviation, addressing the delays and congestion phenomena in the vicinity of metroplex caused by the imbalance between air traffic flow and capacity is crucial. This paper first proposes a bi-level optimization model for the collaborative flight sequencing of arrival and departure flights in the metroplex with multiple airports, considering both the runway systems and TMA (Terminal Control Area) entry/exit fixes. Besides, the model is adaptive to various traffic scenarios. The genetic algorithm is employed to solve the proposed model. The Shanghai TMA, located in China, is used as a case study, and it includes two airports, Shanghai Hongqiao International Airport and Shanghai Pudong International Airport. The results demonstrate that the model can reduce arrival delay by 51.52%, departure delay by 18.05%, and the runway occupation time of departure flights by 23.83%. Furthermore, the model utilized in this study significantly enhances flight scheduling efficiency, providing a more efficient solution than the traditional FCFS (First Come, First Served) approach. Additionally, the algorithm employed offers further improvements over the NSGA II algorithm.
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