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HMM-Based Malicious User Detection for Robust Collaborative Spectrum Sensing

机译:基于HMM的恶意用户检测,可实现可靠的协作频谱感知

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摘要

Collaborative spectrum sensing improves the spectrum state estimation accuracy but is vulnerable to the potential attacks from malicious secondary cognitive radio (CR) users, and thus raises security concerns. One promising malicious user detection method is to identify their abnormal statistical spectrum sensing behaviors. From this angle, two hidden Markov models (HMMs) corresponding to honest and malicious users respectively are adopted in this paper to characterize their different sensing behaviors, and malicious user detection is achieved via detecting the difference in the corresponding HMM parameters. To obtain the HMM estimates, an effective inference algorithm that can simultaneously estimate two HMMs without requiring separated training sequences is also developed. By using these estimates, high malicious user detection accuracy can be achieved at the fusion center, leading to more robust and reliable collaborative spectrum sensing performance (substantially enlarged operational regions) in the presence of malicious users, as compared to the baseline approaches. Different fusion methods are also discussed and compared.
机译:协作频谱感测可以提高频谱状态估计的准确性,但容易受到恶意辅助认知无线电(CR)用户的潜在攻击,因此引发了安全隐患。一种有前途的恶意用户检测方法是识别其异常的统计频谱感知行为。从这个角度出发,本文分别采用了两个分别对应诚实用户和恶意用户的隐马尔可夫模型(HMM)来表征其不同的感知行为,并通过检测相应HMM参数的差异来实现恶意用户检测。为了获得HMM估计,还开发了一种有效的推理算法,该算法可以同时估计两个HMM,而无需分离的训练序列。通过使用这些估计,与基准方法相比,在融合中心可以实现很高的恶意用户检测准确性,从而在存在恶意用户的情况下导致更强大和可靠的协作频谱感知性能(大幅扩大的操作区域)。还讨论并比较了不同的融合方法。

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