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Detection of Malicious Node in Centralized Cognitive Radio Networks Based on MLP Neural Network

机译:基于MLP神经网络的集中认知无线网络中恶意节点的检测

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The cognitive radio network (CRNs) has been developed in recent years for the optimal use of Available vacuum in the frequency spectrum. In this network, Cooperate Spectrum Sensing (CSS) is used to combine the observations of all users. In CRNs, security is one of the most important problems spectrum sensing data falsification (SSDF) attack is one of major challenges for CSS in CRNs, in which Malicious user are among honest users trying to change the information sent to the fusion center and thus make the fusion center's wrong decision. In this paper, a method for defense against SSDF attack is proposed using MLP-based neural network. In this scheme, the weights of secondary users were constantly updated and finally the sensing results were combined in the fusion center based on their trusted weights. Simulation results show that the proposed scheme can significantly reduce the effects of Spectrum Sensing Data Falsification (SSDF) attack even percentage of malicious users are more than trusted users.
机译:近年来已经开发了认知无线电网络(CRN),以便在频谱中最佳使用可用真空。在该网络中,配合频谱感测(CSS)用于组合所有用户的观察。在CRN中,安全是频谱感测数据伪造(SSDF)攻击是CRNS中CSS中的主要挑战之一,其中恶意用户是试图将发送到融合中心发送的信息的诚实用户之一融合中心的错误决定。本文采用了基于MLP的神经网络提出了一种防御SSDF攻击的方法。在该方案中,次要用户的权重不断更新,最后基于其可信权重在融合中心中组合感测结果。仿真结果表明,该方案可以显着降低频谱传感数据伪造的影响(SSDF)攻击甚至是恶意用户的百分比不仅仅是值得信赖的用户。

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