Air Traffic Controller Workload Level Prediction using Conformalized Dynamical Graph Learning
Yutian Pang, Jueming Hu, Christopher S. Lieber, Nancy J. Cooke,, Yongming Liu

TL;DR
This paper introduces a graph-based deep learning framework with conformal prediction to accurately forecast air traffic controller workload levels using dynamic airspace data, enhancing safety and operational efficiency.
Contribution
It presents a novel conformalized graph neural network approach for real-time ATC workload prediction, incorporating traffic conflict features and dynamic airspace graphs.
Findings
Traffic conflict features improve workload prediction accuracy.
Graph neural networks outperform hand-crafted features.
Conformal prediction provides reliable workload label ranges.
Abstract
Air traffic control (ATC) is a safety-critical service system that demands constant attention from ground air traffic controllers (ATCos) to maintain daily aviation operations. The workload of the ATCos can have negative effects on operational safety and airspace usage. To avoid overloading and ensure an acceptable workload level for the ATCos, it is important to predict the ATCos' workload accurately for mitigation actions. In this paper, we first perform a review of research on ATCo workload, mostly from the air traffic perspective. Then, we briefly introduce the setup of the human-in-the-loop (HITL) simulations with retired ATCos, where the air traffic data and workload labels are obtained. The simulations are conducted under three Phoenix approach scenarios while the human ATCos are requested to self-evaluate their workload ratings (i.e., low-1 to high-7). Preliminary data analysis…
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Taxonomy
TopicsAir Traffic Management and Optimization · Traffic and Road Safety · Traffic Prediction and Management Techniques
Methodstravel james · Graph Neural Network
