基于q -学习的无线通信网络协同抗干扰算法

Guoliang Zhang, Yonggui Li, Luliang Jia, Yingtao Niu, Quan Zhou, Ziming Pu
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引用次数: 1

摘要

针对多用户无线网络中恶意干扰攻击的防御,考虑到用户间的干扰,提出了一种基于q -学习的无线通信网络协同抗干扰算法。具体来说,由于用户之间存在竞争和协作,首先通过添加距离阈值来判断用户之间是否存在干扰,这可以显著降低多智能体强化学习(RL)的训练时间和复杂度。然后,通过信息交互层的用户间协作,提出了一种基于q -学习的协同抗干扰算法,对所有用户的频谱分配进行优化。数值结果验证了所提CAAQ的优越性和实效性,该方法能够同时避免用户间的干扰和克服恶意干扰攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative Anti-jamming Algorithm Based on Q-learning in Wireless Communication Network
Aiming at defending against the malicious jamming attacks and considering the interference among users in the multi-user wireless networks, a collaborative anti-jamming algorithm based on Q-learning in wireless communication network (CAAQ) is proposed in this paper. Specifically, since there exists the competition and collaboration among the users, the metric is first applied to determine whether there has interference among users by adding the distance threshold, which can significantly decrease both the training time and the complexity of multi-agent Reinforcement Learning (RL). Then, through the user-to-user collaboration at the information interaction level, a collaborative anti-jamming algorithm based on Q-learning is proposed to optimize the spectrum allocation for all users. Numerical results verify the superiority and substantive of the proposed CAAQ, which can simultaneously avoid the interference among the users and overcome the malicious jamming attack.
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