首页> 外文会议>2010 IEEE Symposium on New Frontiers in Dynamic Spectrum >Catching Attacker(s) for Collaborative Spectrum Sensing in Cognitive Radio Systems: An Abnormality Detection Approach
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Catching Attacker(s) for Collaborative Spectrum Sensing in Cognitive Radio Systems: An Abnormality Detection Approach

机译:认知无线电系统中协作频谱感知的捕获攻击者:一种异常检测方法

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Collaborative spectrum sensing, which collects local observations or decisions from multiple secondary users to make a decision by a fusion center, is an effective approach to alleviate the unreliability of single-user spectrum sensing. However, it is subject to the attack of malicious secondary user(s), which may send false reports. Therefore, it is necessary to detect potential attacker(s) and make attack-proof decisions for spectrum sensing. Most existing attacker detection schemes are based on the knowledge of the attacker's strategy and thus apply the Baeysian detection of attackers. However, in practical cognitive radio systems, the data fusion center typically does not know the attacker's strategy. To alleviate the problem of the unknown strategy of attacker(s), an abnormality detection approach, based on the abnormality detection in data mining, is proposed. The performance of the attacker detection in the single-attacker scenario is analyzed explicitly. For the case that the attacker does not know the reports of honest secondary users (called independent attack), it is numerically shown that attacker can always be detected as the number of spectrum sensing rounds tends to infinity. For the case that the attacker knows all the reports of other secondary users, based on which the attacker sends its report (called dependent attack), an approach for the attacker to perfectly avoid being detected is found, provided that the attacker has perfect information about the miss detection and false alarm probabilities. This motivates cognitive radio systems to protect the reports of secondary users. The performance of attacker detection in the general case of multiple attackers is demonstrated using numerical simulations.
机译:协作频谱感测可以从多个次要用户那里收集本地观察或决策,然后由融合中心做出决策,这是缓解单用户频谱感测不可靠的有效方法。但是,它受到恶意二级用户的攻击,这些二级用户可能发送虚假报告。因此,有必要检测潜在的攻击者并做出针对频谱感知的防攻击决策。现有的大多数攻击者检测方案都是基于对攻击者策略的了解,因此可以对攻击者进行贝叶斯检测。但是,在实际的认知无线电系统中,数据融合中心通常不了解攻击者的策略。为了缓解攻击者未知策略的问题,提出了一种基于数据挖掘中异常检测的异常检测方法。明确分析了单攻击场景中攻击者检测的性能。对于攻击者不知道诚实的二级用户的报告(称为独立攻击)的情况,从数字上可以看出,随着频谱感知回合的次数趋于无穷大,总是可以检测到攻击者。对于攻击者了解其他次要用户的所有报告的情况,攻击者基于该报告发送其报告(称为从属攻击),可以找到一种使攻击者完全避免被检测到的方法,只要攻击者具有关于未命中检测和误报概率。这激励了认知无线电系统来保护二级用户的报告。使用数值模拟演示了在多个攻击者的一般情况下攻击者检测的性能。

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