Flight Gate Assignment Problem with Reinforcement Learning

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Date

2023

Authors

Müge Muhafız Yıldız
Umut Avci
Mustafa Arslan Ornek
Cemalettin Öztürk

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Publisher

Springer Science and Business Media Deutschland GmbH

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Green Open Access

No

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Yes
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Abstract

The operation of an airport is a very complex task involving many actors. The primary mission of airport management is to provide sufficient capacity and the best working conditions to all airlines ground handling and service provider companies. Flight gate assignment is one of the essential planning problems airport management needs to address assigning incoming aircraft to the available gates or stands while satisfying operational constraints. Generally flight arrivals and departures are considered deterministic and various operational research methods have been applied to solve this combinatorial problem. However in real-life scenarios deterministic solutions are generally infeasible because arrival and departure times are uncertain. It is crucial to deal with these uncertainties to create a robust schedule. In this study we develop a Reinforcement Learning (RL) algorithm to solve the flight gate assignment problem since it is a sequential decision-making method and allows adaptive solutions to address urgent and frequent changes. © 2023 Elsevier B.V. All rights reserved.

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Keywords

Flight Gate Assignment, Reinforcement Learning, Robust Scheduling, Air Transportation, Airports, Combinatorial Optimization, Constraint Satisfaction Problems, Decision Making, Airport Management, Assignment Problems, Complex Task, Condition, Deterministics, Flight Gate Assignment, Ground Handling, Management Is, Reinforcement Learnings, Robust Scheduling, Reinforcement Learning, Air transportation, Airports, Combinatorial optimization, Constraint satisfaction problems, Decision making, Airport management, Assignment problems, Complex task, Condition, Deterministics, Flight gate assignment, Ground handling, Management IS, Reinforcement learnings, Robust scheduling, Reinforcement learning, Flight Gate Assignment, Robust Scheduling, Reinforcement Learning

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Source

Intelligent and Fuzzy Systems - Intelligence and Sustainable Future Proceedings of the INFUS 2023 Conference

Volume

759 LNNS

Issue

Start Page

189

End Page

196
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Scopus : 5

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5

checked on Apr 10, 2026

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