Nature Communications (Nov 2024)

Integrating spoken instructions into flight trajectory prediction to optimize automation in air traffic control

  • Dongyue Guo,
  • Zheng Zhang,
  • Bo Yang,
  • Jianwei Zhang,
  • Hongyu Yang,
  • Yi Lin

DOI
https://doi.org/10.1038/s41467-024-54069-5
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 15

Abstract

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Abstract The booming air transportation industry inevitably burdens air traffic controllers’ workload, causing unexpected human factor-related incidents. Current air traffic control systems fail to consider spoken instructions for traffic prediction, bringing significant challenges in detecting human errors during real-time traffic operations. Here, we present an automation paradigm integrating controlling intent into the information processing loop through the spoken instruction-aware flight trajectory prediction framework. A 3-stage progressive multi-modal learning paradigm is proposed to address the modality gap between the trajectory and spoken instructions, as well as minimize the data requirements. Experiments on a real-world dataset show the proposed framework achieves flight trajectory prediction with high predictability and timeliness, obtaining over 20% relative reduction in mean deviation error. Moreover, the generalizability of the proposed framework is also confirmed by various model architectures. The proposed framework can formulate full-automated information processing in real-world air traffic applications, supporting human error detection and enhancing aviation safety.