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Byzantine Attacker Identification in Collaborative Spectrum Sensing: A Robust Defense Framework

机译:协作频谱感知中的拜占庭式攻击者识别:稳健的防御框架

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摘要

The problem of Byzantine attack in collaborative spectrum sensing (CSS) is considered in this paper. To defend against Byzantine attack, a robust defense framework is proposed to efficiently identify the Byzantine attackers. Specifically, we first propose a robust defense framework, where a reference is built based on the extended sensing, and the transmit results and sensors are continuously evaluated via the reference and identified at intervals. In the framework, except of data falsification, multiple practical factors are considered, including the variation characteristic of sensors' attributes, reporting channel imperfection, and inference errors based on the transmit results. Further, we derive the closed-form expressions of the reference and the identification performance and make optimization of the identification threshold in two cases: with and without the prior knowledge of attack behaviors, where the probability of correctly detecting Byzantine attackers is maximized under the constraint of the probability of falsely identifying honest sensors as attackers. In particular, when the prior knowledge is unavailable, maximized likelihood estimation is made based on the reference to achieve the optimization. Furthermore, we present in-depth simulations to demonstrate the high robustness of the proposed defence framework to multiple practical factors under a homogeneous scenario and a heterogeneous scenario.
机译:本文研究了协作频谱感知(CSS)中的拜占庭式攻击问题。为了防御拜占庭式攻击,提出了一个强大的防御框架来有效地识别拜占庭式攻击者。具体来说,我们首先提出一个健壮的防御框架,其中基于扩展的感测建立参考,并通过参考对发射结果和传感器进行连续评估,并定期进行识别。在该框架中,除了数据篡改以外,还考虑了多个实际因素,包括传感器属性的变化特征,报告信道缺陷以及基于传输结果的推断错误。此外,在两种情况下,我们导出了参考值和识别性能的闭式表达式,并对识别阈值进行了优化:有和没有攻击行为的先验知识,在这种情况下,正确检测到拜占庭式攻击者的概率最大错误地将诚实的传感器识别为攻击者的可能性。特别地,当先验知识不可用时,基于参考进行最大似然估计以实现优化。此外,我们提供了深入的仿真,以证明拟议的防御框架在同构场景和异构场景下对多种实际因素的高度鲁棒性。

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