改进的基于软融合的协同频谱感知防御SSDF攻击

Ting Peng, Yuebin Chen, Jie Xiao, Yang Zheng, Jiangfeng Yang
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引用次数: 12

摘要

认知无线电(CR)在合作过程中存在一个安全问题——频谱感知数据伪造攻击(SSDF)。一些恶意用户不愿与其他用户友好合作,通过故意伪造发送到FC的本地感知信息,发起SSDF攻击,从而干扰检测,威胁到CR网络。为了防御SSDF攻击,本文提出了一种改进的基于软融合算法,该算法的核心思想是将合作视为一个服务评价过程,利用认知用户(cu)的平均信誉度来反映服务质量,然后根据信誉度合理分配融合中cu的权重。仿真结果表明,在存在SSDF攻击时,改进算法的感知性能优于传统的软融合CSS。
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Improved soft fusion-based cooperative spectrum sensing defense against SSDF attacks
In the cognitive radios (CR), there is a security issue-spectrum sensing data falsification attacks (SSDF) in the process of cooperation. Some malicious users (MUs) who unwilling to cooperate friendly with other users may launch SSDF attacks by falsifying their local sensing information sent to fusion center (FC) intentionally, result in interfering with the detection and threat the CR networks. In order to defense against the SSDF attacks, an improved soft fusion-based algorithm is given in this paper, the key idea of the algorithm is that the cooperation is viewed as a service-evaluation process and making use of cognitive users' (CUs) average reputation degrees to reflect the service quality, then allocate properly the CUs' weights in the fusion according to the reputation degrees. Simulation results show that the sensing performance of the improved algorithm is better than the traditional soft-fusion CSS in the presence of SSDF attacks.
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