Decentralized learning enables fixed-wing aircraft to conform to AAM corridor boundaries over 94% of the time and reach goals efficiently in simulated single, sequential, and splitting corridor scenarios with infrequent tactical interventions except at high density.
Hybrid transformer based multi - agent reinforcement learning for multiple unpiloted aerial vehicle coor dination in air corridors,
2 Pith papers cite this work. Polarity classification is still indexing.
years
2026 2verdicts
UNVERDICTED 2representative citing papers
A transformer-based soft actor-critic RL policy guides overlapping coalition updates in a potential game for heterogeneous AAV task allocation, yielding 39.76% lower generalized logistics cost than heuristic baselines in 32-AAV/80-task simulations.
citing papers explorer
-
Decentralized Coordination of Autonomous Traffic Through Advanced Air Mobility Corridors
Decentralized learning enables fixed-wing aircraft to conform to AAM corridor boundaries over 94% of the time and reach goals efficiently in simulated single, sequential, and splitting corridor scenarios with infrequent tactical interventions except at high density.
-
Heterogeneous AAV Logistics Task Allocation: A Reinforcement Learning Enhanced Overlapping Coalition Formation Game Approach
A transformer-based soft actor-critic RL policy guides overlapping coalition updates in a potential game for heterogeneous AAV task allocation, yielding 39.76% lower generalized logistics cost than heuristic baselines in 32-AAV/80-task simulations.