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Conflict resolution strategy based on deep reinforcement learning for air traffic management

    Dong Sui   Affiliation
    ; Chenyu Ma Affiliation
    ; Jintao Dong   Affiliation

Abstract

With the continuous increase in flight flows, the flight conflict risk in the airspace has increased. Aiming at the problem of conflict resolution in actual operation, this paper proposes a tactical conflict resolution strategy based on Deep Reinforcement Learning. The process of the controllers resolving conflicts is modelled as the Markov Decision Process. The Deep Q Network algorithm trains the agent and obtains the resolution strategy. The agent uses the command of altitude adjustment, speed adjustment, or heading adjustment to resolve a conflict, and the design of the reward function fully considers the air traffic control regulations. Finally, simulation experiments were performed to verify the feasibility of the strategy given by the conflict resolution model, and the experimental results were statistically analyzed. The results show that the conflict resolution strategy based on Deep Reinforcement Learning closely reflected actual operations regarding flight safety and conflict resolution rules.

Keyword : conflict resolution, deep reinforcement learning, air traffic control, air traffic management, decision support technology, aviation

How to Cite
Sui, D., Ma, C., & Dong, J. (2023). Conflict resolution strategy based on deep reinforcement learning for air traffic management. Aviation, 27(3), 177–186. https://doi.org/10.3846/aviation.2023.19720
Published in Issue
Oct 19, 2023
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This work is licensed under a Creative Commons Attribution 4.0 International License.

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