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Multi-UAV Cooperative Pursuit Planning via Communication-Aware Multi-Agent Reinforcement Learning

Haojie Ren, Chunlei Han, Hao Pan, Jianjun Sun, Shuanglin Li, Dou An, Kai Hu

2025Aerospace5 citationsDOIOpen Access PDF

Abstract

Cooperative pursuit using multi-UAV systems presents significant challenges in dynamic task allocation, real-time coordination, and trajectory optimization within complex environments. To address these issues, this paper proposes a reinforcement learning-based task planning framework that employs a distributed Actor–Critic architecture enhanced with bidirectional recurrent neural networks (BRNN). The pursuit–evasion scenario is modeled as a multi-agent Markov decision process, enabling each UAV to make informed decisions based on shared observations and coordinated strategies. A multi-stage reward function and a BRNN-driven communication mechanism are introduced to improve inter-agent collaboration and learning stability. Extensive simulations across various deployment scenarios, including 3-vs-1 and 5-vs-2 configurations, demonstrate that the proposed method achieves a success rate of at least 90% and reduces the average capture time by at least 19% compared to rule-based baselines, confirming its superior effectiveness, robustness, and scalability in cooperative pursuit missions.

Topics & Concepts

Reinforcement learningComputer scienceMarkov decision processScalabilityTask (project management)Software deploymentTrajectoryArtificial intelligenceFunction (biology)Markov processKey (lock)Artificial neural networkMotion planningMachine learningTemporal difference learningMechanism (biology)Task analysisPartially observable Markov decision processDistributed computingStability (learning theory)Plan (archaeology)Face (sociological concept)Markov chainUAV Applications and OptimizationGuidance and Control SystemsDistributed Control Multi-Agent Systems
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