Cluster & Disperse: a general air conflict resolution heuristic using unsupervised learning
Mirmojtaba Gharibi, John-Paul Clarke

TL;DR
This paper introduces Cluster & Disperse, a flexible heuristic for air conflict resolution that uses unsupervised learning to cluster and disperse conflict points, improving efficiency and adaptability over traditional methods.
Contribution
The paper presents a novel heuristic framework combining clustering, dispersion, and a new arc-based maneuver, enhancing conflict resolution in dense air traffic scenarios.
Findings
Handles high-density flights efficiently
Outperforms notable algorithms in the literature
Flexible framework easily integrates various constraints
Abstract
We provide a general and malleable heuristic for the air conflict resolution problem. This heuristic is based on a new neighborhood structure for searching the solution space of trajectories and flight-levels. Using unsupervised learning, the core idea of our heuristic is to cluster the conflict points and disperse them in various flight levels. Our first algorithm is called Cluster & Disperse and in each iteration it assigns the most problematic flights in each cluster to another flight-level. In effect, we shuffle them between the flight-levels until we achieve a well-balanced configuration. The Cluster & Disperse algorithm then uses any horizontal plane conflict resolution algorithm as a subroutine to solve these well-balanced instances. Nevertheless, we develop a novel algorithm for the horizontal plane based on a similar idea. That is we cluster and disperse the conflict points…
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Taxonomy
TopicsAir Traffic Management and Optimization
MethodsEmirates Airlines Office in Dubai
