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Secure Collaborative Sensing for Crowd Sourcing Spectrum Data in White Space Networks

机译:在空白空间网络中对人群采购频谱数据进行安全的协作感知

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Collaborative Sensing is an important enabling technique for realizing opportunistic spectrum access in white space (cognitive radio) networks. We consider the security ramifications of crowdsourcing of spectrum sensing in presence of malicious users that report false measurements. We propose viewing the area of interest as a grid of square cells and using it to identify and disregard false measurements. The proposed mechanism is based on identifying outlier measurements inside each cell, as well as corroboration among neighboring cells in a hierarchical structure to identify cells with significant number of malicious nodes. We provide a framework for taking into consideration inherent uncertainties, such as loss due to distance and shadowing, to reduce the likelihood of inaccurate classification of legitimate measurements as outliers. We use simulations to evaluate the effectiveness of the proposed approach against attackers with varying degrees of sophistication. The results show that depending on the attacker-type and location parameters, in the worst case we can nullify the effect of up to 41% of attacker nodes in a particular region. This figure is as high as 100% for a large subset of scenarios.
机译:协作感测是在空白空间(认知无线电)网络中实现机会频谱访问的重要启用技术。我们认为,在存在报告错误测量结果的恶意用户的情况下,频谱感知的众包服务的安全性后果会很严重。我们建议将关注区域视为方形单元格的网格,并使用它来识别和忽略错误的测量结果。所提出的机制基于识别每个单元内的异常值以及在分层结构中的相邻单元之间的确证,以识别具有大量恶意节点的单元。我们提供了一个框架来考虑固有的不确定性,例如由于距离和阴影造成的损失,以减少将合法测量值错误地分类为异常值的可能性。我们使用模拟来评估所提出的方法针对不同复杂程度的攻击者的有效性。结果表明,根据攻击者的类型和位置参数,在最坏的情况下,我们可以消除特定区域中多达41%的攻击者节点的影响。对于大部分场景,此数字高达100%。

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