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arxiv: 2606.25480 · v1 · pith:6XEIJOISnew · submitted 2026-06-24 · 💻 cs.MA · cs.AI

Rate-Aware Quantum-Inspired Trajectory Learning for Interference-Limited Multi-UAV Networks

classification 💻 cs.MA cs.AI
keywords rate-awarethroughputtrajectorychallengecoordinationgraphinterference-limitedlearning
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Unmanned aerial vehicle (UAV) can provide on-demand, high-capacity connectivity in disaster and normal situation. However, it faces a challenge of curse of dimensionality in trajectory optimization, where interference-limited environments and vast search spaces make real-time coordination computationally expensive. To overcome this challenge, we propose the Rate-Aware Quantum-Annealed Graph Condensation (RA-QAGC) scheme, which combines rate-aware graph abstraction with decentralized reinforcement learning to enable scalable, interference-aware UAV coordination. By identifying high throughput locations and guiding UAV trajectory adaptation toward throughput-optimal regions, RA-QAGC effectively balances network capacity by maintaining quality-of-service (QoS) requirements. Simulation results demonstrate the proposal outperformed over existing schemes by achieving 59.4 Mbps total throughput and 23.9 Mbps priority-user throughput, representing gains of approximately 15% and 34%, respectively, over the baseline schemes.

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