认知无线电网络中的防攻击协同频谱感知

Wenkai Wang, Husheng Li, Y. Sun, Zhu Han
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引用次数: 170

摘要

认知无线网络中的协同感知可以显著提高检测主用户传输的概率。在当前的协同感知方案中,所有协同辅助用户都假定为诚实用户。因此,系统容易受到恶意二次用户报告错误检测结果的攻击。本文主要研究如何提高协同感知的安全性。特别是,我们开发了一种恶意用户检测算法,该算法根据二级用户过去的报告计算其可疑级别。然后,我们计算信任值和一致性值,用于消除恶意用户对主用户检测结果的影响。通过仿真,我们发现即使是单个恶意用户也会显著降低协同感知的性能。所提出的信任值指标可以有效区分诚实用户和恶意用户。主用户检测的接收机工作特征(ROC)曲线表明协同感知的安全性有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attack-proof collaborative spectrum sensing in cognitive radio networks
Collaborative sensing in cognitive radio networks can significantly improve the probability of detecting the transmission of primary users. In current collaborative sensing schemes, all collaborative secondary users are assumed to be honest. As a consequence, the system is vulnerable to attacks in which malicious secondary users report false detection results. In this paper, we investigate how to improve the security of collaborative sensing. Particularly, we develop a malicious user detection algorithm that calculates the suspicious level of secondary users based on their past reports. Then, we calculate trust values as well as consistency values that are used to eliminate the malicious users' influence on the primary user detection results. Through simulations, we show that even a single malicious user can significantly degrade the performance of collaborative sensing. The proposed trust value indicator can effectively differentiate honest and malicious secondary users. The receiver operating characteristic (ROC) curves for the primary user detection demonstrate the improvement in the security of collaborative sensing.
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