Litcius/Paper detail

Detecting Events in Aircraft Trajectories: Rule-Based and Data-Driven Approaches

Xavier Olivé, Junzi Sun, Adrien Lafage, Luis Basora

202019 citationsDOIOpen Access PDF

Abstract

The large amount of aircraft trajectory data publicly available through open data sources like the OpenSky Network presents a wide range of possibilities for monitoring and post-operational analysis of air traffic performance. This contribution addresses the automatic identification of operational events associated with trajectories. This is a challenging task that can be tackled with both empirical, rule-based methods and statistical, data-driven approaches. In this paper, we first propose a taxonomy of significant events, including usual operations such as take-off, Instrument Landing System (ILS) landing and holding, as well as less usual operations like firefighting, in-flight refuelling and navigational calibration. Then, we introduce different rule-based and statistical methods for detecting a selection of these events. The goal is to compare candidate methods and to determine which of the approaches performs better in each situation.

Topics & Concepts

Computer scienceTrajectoryIdentification (biology)Task (project management)Data miningRange (aeronautics)Air traffic controlAutomatic Identification SystemSystems engineeringEngineeringBotanyBiologyAstronomyAerospace engineeringPhysicsAir Traffic Management and OptimizationData Management and AlgorithmsAutomated Road and Building Extraction