Malicious Users Detection and Nullifying their Effects on Cooperative Spectrum Sensing

Prakash Prasain, Dong-You Choi
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Abstract

Abstract Submitted:October 27, 2015 1 st Revision:March 20, 2016 Accepted:March 24, 2016* This study was supported by research fund from Chosun University, 2015.** Dept. of Information and Communication Engineering, Chosun Univ.*** Dept. of Information and Communication Engineering, Chosun Univ, Corresponding AuthorSpectrum sensing in cognitive radio (CR) has a great role in or der to utilize idle spectrum opportunistically, since it is responsible for making available dynamic spectrum access efficiently. In this research area, collaboration among multiple cognitive radio users has been proposed for the better ment of detection reliability. Even though cooperation among them improves the spectrum sensing performance, some fals ely reporting malicious users may degrade the performance rigorously. In this article, we have studied the de tection and nullifying the harmful effects of such malicious users by applying some well known outlier detection methods bas ed on Grubb’s test, Boxplot method and Dixon’s test in cooperative spectrum sensing. Initially, the performance of each technique is compared and found that Boxplot method outperforms both Grubb’s and Dixon’s test for the case w here multiple malicious users are present. Secondly, a new algorithm based on reputation and weight is developed to identify malicious users and cancel out their negative impact in final decision making. Simulation results demonstrate that the proposed scheme effectively identifies the malicious users and suppress their harmful effects at the fusio n center to decide whether the spectrum is idle.
恶意用户检测及消除对协同频谱感知的影响
提交日期:2015年10月27日1修订日期:2016年3月20日接收日期:2016年3月24日*本研究由朝鲜大学2015年度科研基金资助。**朝鲜大学信息通信工程系***朝鲜大学信息通信工程系通讯作者认知无线电(CR)中的频谱感知负责有效地提供可用的动态频谱接入,在机会性地利用空闲频谱方面发挥着重要作用。在这一研究领域,提出了多个认知无线电用户之间的协作,以更好地提高检测可靠性。尽管它们之间的合作提高了频谱感知性能,但一些误报的恶意用户可能会严重降低性能。在本文中,我们利用协同频谱感知中常用的一些离群值检测方法,如Grubb测试、Boxplot方法和Dixon测试,对此类恶意用户的检测和消除有害影响进行了研究。首先,比较了每种技术的性能,发现在存在多个恶意用户的情况下,Boxplot方法的性能优于Grubb和Dixon的测试。其次,提出了一种基于声誉和权重的新算法来识别恶意用户,并在最终决策中抵消恶意用户的负面影响。仿真结果表明,该方案能够有效地识别恶意用户,并在融合中心抑制其有害影响,判断频谱是否空闲。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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