A Future Capabilities Agent for Tactical Air Traffic Control

arXiv:2601.04285v1AIAA SCITECH 2026 Forum
Originality Synthesis-oriented
AI Analysis

This addresses the problem of scalable and safe automation for air traffic controllers in systemised airspace, though it appears incremental as it builds on existing rules-based and digital twin approaches.

The paper tackles the trade-off between safety and interpretability in air traffic control automation by introducing Agent Mallard, a forward-planning, rules-based agent that embeds a stochastic digital twin for conflict resolution, with preliminary tests showing it aligns with expert reasoning and resolves conflicts in simplified scenarios.

Escalating air traffic demand is driving the adoption of automation to support air traffic controllers, but existing approaches face a trade-off between safety assurance and interpretability. Optimisation-based methods such as reinforcement learning offer strong performance but are difficult to verify and explain, while rules-based systems are transparent yet rarely check safety under uncertainty. This paper outlines Agent Mallard, a forward-planning, rules-based agent for tactical control in systemised airspace that embeds a stochastic digital twin directly into its conflict-resolution loop. Mallard operates on predefined GPS-guided routes, reducing continuous 4D vectoring to discrete choices over lanes and levels, and constructs hierarchical plans from an expert-informed library of deconfliction strategies. A depth-limited backtracking search uses causal attribution, topological plan splicing, and monotonic axis constraints to seek a complete safe plan for all aircraft, validating each candidate manoeuvre against uncertain execution scenarios (e.g., wind variation, pilot response, communication loss) before commitment. Preliminary walkthroughs with UK controllers and initial tests in the BluebirdDT airspace digital twin indicate that Mallard's behaviour aligns with expert reasoning and resolves conflicts in simplified scenarios. The architecture is intended to combine model-based safety assessment, interpretable decision logic, and tractable computational performance in future structured en-route environments.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes