2024
DOI: 10.3390/aerospace11050372
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Fault-Tolerant Control for Multi-UAV Exploration System via Reinforcement Learning Algorithm

Zhiling Jiang,
Tiantian Song,
Bowei Yang
et al.

Abstract: In the UAV swarm, the degradation in the health status of some UAVs often brings negative effects to the system. To compensate for the negative effect, we present a fault-tolerant Multi-Agent Reinforcement Learning Algorithm that can control an unstable Multiple Unmanned Aerial Vehicle (Multi-UAV) system to perform exploration tasks. Different from traditional multi-agent methods that require the agents to remain healthy during task execution, our approach breaks this limitation and allows the agents to change… Show more

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