基于集群的安全协同频谱感知抵御恶意攻击

S. Althunibat, Birabwa Joanitah Denise, F. Granelli
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引用次数: 8

摘要

认知无线网络(crn)中恶意攻击者的存在严重降低了其在检测精度、吞吐量和能效方面的整体性能。频谱感知数据伪造(SSDF)攻击是一种流行的攻击,主要是在协同频谱感知过程中入侵CRN。SSDF攻击表现为恶意用户向融合中心发送虚假的感知结果,试图误导全局对频谱占用的决策。检测这种类型的攻击成为一个挑战,特别是在基于集群的crn中。在本文中,我们提出了一种攻击者识别和移除算法,该算法能够检测基于集群的crn中的攻击者。提出的算法要求每个传输用户都应该发送一份关于其传输数据交付的报告。然后使用交付报告评估所有用户的本地决策,以便识别攻击者并将其删除。数学公式和计算机模拟表明,该方法的性能优于以往的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Secure cluster-based cooperative spectrum sensing against malicious attackers
The presence of malicious attackers in cognitive radio networks (CRNs) deeply degrades the overall performance in terms of detection accuracy, throughput and energy efficiency. A popular attack, called spectrum sensing data falsification (SSDF) attack, invades the CRN during cooperative spectrum sensing process. SSDF attack is represented by a malicious user that sends false sensing results to the fusion center, trying to mislead the global decision regarding the spectrum occupancy. Detecting such type of attack becomes a challenge especially in cluster-based CRNs. In this paper we propose an attacker-identification and removal algorithm that is able to detect attackers in cluster-based CRNs. The proposed algorithm requires that each transmitting user should send a report about the delivery of its transmitted data. The delivery report is then used to assess the local decisions of all users in order to recognize attackers and remove them. Mathematical formulation and computer simulations show a better performance than the previous works.
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