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Detection of collaborative SSDF attacks using abnormality detection algorithm in cognitive radio networks

机译:使用认知无线电网络中的异常检测算法检测协同SSDF攻击

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摘要

Cognitive radio is a revolutionary paradigm to improve the utilization of scarce radio spectrum resources. In cognitive radio networks, collaborative spectrum sensing is considered as an effective method to improve the performance of primary user detection. However, collaborative spectrum sensing is vulnerable to spectrum sensing data falsification (SSDF) attacks, where malicious secondary users (attackers) send manipulated local sensing results to the fusion center. We find that malicious users can imitate honest users' statistical characteristics by collaborating while launching attacks. We call this kind of attack as balanced collaborative (BC) attack. BC attackers can pass trusted nodes assistance methods which are very often used in existing secure schemes. Based on the theoretical analysis that the reports between BC attackers have the highest similarities, we propose an abnormality detection algorithm to detect BC attackers. The only information we need to know is the bit error probability on secondary users' reporting channel. Numerical simulation results show that the proposed scheme can identify and weed out BC attackers accurately.
机译:认知无线电是提高稀缺无线电频谱资源利用率的革命性范例。在认知无线电网络中,协作频谱感知被认为是提高主要用户检测性能的有效方法。但是,协作频谱感测容易受到频谱感测数据伪造(SSDF)攻击的攻击,在这种攻击中,恶意二级用户(攻击者)会将经操纵的本地感测结果发送到融合中心。我们发现恶意用户可以通过在发动攻击时进行协作来模仿诚实用户的统计特征。我们称这种攻击为平衡协作(BC)攻击。 BC攻击者可以通过受信任的节点辅助方法,这些方法在现有安全方案中经常使用。基于对BC攻击者之间报告相似度最高的理论分析,提出了一种异常检测算法来检测BC攻击者。我们需要知道的唯一信息是次要用户报告通道上的误码率。数值仿真结果表明,该方案能够准确识别和清除BC攻击者。

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