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Towards Optimal Adaptive UFH-Based Anti-Jamming Wireless Communication

机译:面向基于UFH的最佳自适应抗干扰无线通信

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摘要

Anti-jamming communication without pre-shared secrets has gained increasing research interest recently and is commonly tackled by utilizing the technique of uncoordinated frequency hopping (UFH). Existing researches, however, are almost all based on ad hoc designs of frequency hopping strategies, mainly due to lack of theoretical foundations for scheme performance evaluation. To fill this gap, in this paper we introduce the online optimization theory into our solution and, for the first time, make the thorough quantitative performance characterization possible for UFH-based anti-jamming communications. Specifically, we formulate the UFH-based anti-jamming communication as a non-stochastic multi-armed bandit (MAB) problem and propose an online learning-based UFH algorithm achieving asymptotic optimum. To reduce the time and space complexity, we further develop an enhanced algorithm exploiting the internal structure of strategy selection process. We analytically prove the optimality of the proposed algorithms under various message coding scenarios. An extensive simulation study is conducted to validate our theoretical analysis and show that the learning-based UFH algorithms are resilient against both oblivious and adaptive jamming attacks.
机译:没有预共享秘密的抗干扰通信近来引起了越来越多的研究兴趣,并且通常通过利用非协调跳频(UFH)技术来解决。然而,现有的研究几乎全部基于跳频策略的临时设计,这主要是由于缺乏用于方案性能评估的理论基础。为了填补这一空白,本文将在线优化理论引入我们的解决方案,并首次使基于UFH的抗干扰通信的全面定量性能表征成为可能。具体来说,我们将基于UFH的抗干扰通信公式化为非随机多武装匪徒(MAB)问题,并提出了一种基于在线学习的UFH算法,以实现渐近最优。为了减少时间和空间的复杂性,我们进一步开发了一种利用策略选择过程内部结构的增强算法。我们分析地证明了在各种消息编码情况下所提出算法的最优性。进行了广泛的仿真研究,以验证我们的理论分析,并表明基于学习的UFH算法可抵抗遗忘和自适应干扰攻击。

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