Aerospace (Apr 2022)

Trajectory Clustering for Air Traffic Categorisation

  • Tatjana Bolić,
  • Lorenzo Castelli,
  • Andrea De Lorenzo,
  • Fulvio Vascotto

DOI
https://doi.org/10.3390/aerospace9050227
Journal volume & issue
Vol. 9, no. 5
p. 227

Abstract

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Availability of different types of data and advances in data-driven techniques open the path to more detailed analyses of various phenomena. Here, we examine the insights that can be gained through the analysis of historical flight trajectories, using data mining techniques. The goal is to learn about usual (or nominal) choices airlines make in terms of routing, and their relation with aircraft types and operational flight costs. The clustering is applied to intra-European trajectories during one entire summer season, and a statistical test of independence is used to evaluate the relations between the variables of interest. Even though about half of all flights are less than 1000 km long, and mostly operated by one airline, along one trajectory, the analysis shows that, for longer flights, there exists a clear relation between the trajectory clusters and the operating airlines (in about 49% of city pairs) and/or the aircraft types (30%), and/or the flight costs (45%).

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