Anti-Jamming Communications in UAV Swarms: A Reinforcement Learning Approach

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Abstract

Intelligent unmanned aerial vehicle (UAV) swarm may accomplish complex tasks through cooperation, relying on inter-UAV communications. This paper aims to improve the communication performance of intelligent UAV swarm system in the presence of jamming, by multi-parameter programming and reinforcement learning. This paper considers a communication system, where the communication between a UAV swarm and the base station is jammed by multiple interferers. Compared with the existing work, the UAVs in the system can exploit degree-of-freedom in frequency, motion and antenna spatial domain to optimize the communication quality in the receiving area. This paper proposes a modified Q-Learning algorithm based on multi-parameter programming, where a cost is introduced to strike a balance between the motion and communication performance of the UAVs. The simulation results show the effectiveness of the algorithm.

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Peng, J., Zhang, Z., Wu, Q., & Zhang, B. (2019). Anti-Jamming Communications in UAV Swarms: A Reinforcement Learning Approach. IEEE Access, 7, 180532–180543. https://doi.org/10.1109/ACCESS.2019.2958328

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