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An Anti-Jamming Stochastic Game for Cognitive Radio Networks

机译:认知无线电网络的抗干扰随机游戏

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摘要

Various spectrum management schemes have been proposed in recent years to improve the spectrum utilization in cognitive radio networks. However, few of them have considered the existence of cognitive attackers who can adapt their attacking strategy to the time-varying spectrum environment and the secondary users' strategy. In this paper, we investigate the security mechanism when secondary users are facing the jamming attack, and propose a stochastic game framework for anti-jamming defense. At each stage of the game, secondary users observe the spectrum availability, the channel quality, and the attackers' strategy from the status of jammed channels. According to this observation, they will decide how many channels they should reserve for transmitting control and data messages and how to switch between the different channels. Using the minimax-Q learning, secondary users can gradually learn the optimal policy, which maximizes the expected sum of discounted payoffs defined as the spectrum-efficient throughput. The proposed stationary policy in the anti-jamming game is shown to achieve much better performance than the policy obtained from myopic learning, which only maximizes each stage's payoff, and a random defense strategy, since it successfully accommodates the environment dynamics and the strategic behavior of the cognitive attackers.
机译:近年来,已经提出了各种频谱管理方案以提高认知无线电网络中的频谱利用率。然而,他们中很少有人考虑过认知攻击者的存在,他们可以使他们的攻击策略适应时变频谱环境和二级用户的策略。在本文中,我们研究了二级用户面对干扰攻击时的安全机制,并提出了一种用于抗干扰防御的随机游戏框架。在游戏的每个阶段,次要用户都从阻塞的信道状态观察频谱可用性,信道质量和攻击者的策略。根据此观察,他们将决定为传输控制和数据消息保留多少通道,以及如何在不同通道之间切换。通过使用minimax-Q学习,辅助用户可以逐步学习最佳策略,从而将定义为频谱有效吞吐量的折现收益的预期总和最大化。事实证明,在抗干扰游戏中拟议的固定策略要比从近视学习中获得的策略取得更好的性能,后者只能最大程度地提高每个阶段的收益,并采用随机防御策略,因为它成功地适应了环境动态和战略行为。认知攻击者。

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