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Maximum Mean Discrepancy Based Secure Fusion Strategy for Robust Cooperative Spectrum Sensing

机译:基于最大均值差异的鲁棒合作频谱感知安全融合策略

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Collaborative spectrum sensing (CSS) in Cognitive Radio based Networks (CRNs) is vulnerable to Spectrum Sensing Data Falsification (SSDF) attack. Many existing defense mechanisms assume the number of malicious users are in minority or the attackers' flip rates are identical and fixed. However, such assumption doesn't hold when some intelligent attacks such as Sybil attack are launched successfully, wherein one dedicated attacker can pretend to be multiple attackers. Besides, most existing approaches adopting "hard decision" approach by identifying the attackers first and ignore their sensing reports in the fusion operation. Thus the overall system performance is degraded since some intelligent attackers' sensing reports are still possible to be genuine. On the other hand, representative existing work using "soft decision" method still cannot distinguish the malicious users and honest users correctly under certain condition. The defense mechanism doesn't perform properly for the case when the distributions of two sensing reports are different but have equal mean and variance. In this paper, we propose a secure fusion strategy which adopts "soft decision" method and can distinguish malicious users and honest users under any distribution of sensing reports using maximum mean discrepancy (MMD). Our proposed CSS scheme is suitable for any general CRN application scenarios. The simulation results show our proposed defense mechanism outperforms the existing works.
机译:基于认知无线电的网络(CRN)中的协作频谱感知(CSS)容易受到频谱感知数据篡改(SSDF)攻击。现有的许多防御机制都假定恶意用户数量很少,或者攻击者的翻转速率相同且固定。但是,当成功发起某些智能攻击(例如Sybil攻击)时,这种假设就不会成立,在这种攻击中,一个专门的攻击者可能伪装成多个攻击者。此外,大多数现有的方法都采用“硬决策”方法,即先识别攻击者,然后在融合操作中忽略他们的感知报告。由于某些智能攻击者的感知报告仍可能是真实的,因此整体系统性能下降。另一方面,在一定条件下,使用“软决策”方法进行的有代表性的现有工作仍无法正确地区分恶意用户和诚实用户。当两个感知报告的分布不同但均值和方差相等时,防御机制将无法正常运行。在本文中,我们提出了一种安全融合策略,该策略采用“软决策”方法,可以使用最大平均差异(MMD)来区分任何感知报告分布下的恶意用户和诚实用户。我们提出的CSS方案适用于任何常规CRN应用方案。仿真结果表明,我们提出的防御机制优于现有的防御机制。

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