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首页> 外文期刊>International journal of communication systems >Beamforming-based feature extraction and RVM-based method for attacker node classification in CRN
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Beamforming-based feature extraction and RVM-based method for attacker node classification in CRN

机译:基于波束成形的特征提取和基于RVM的CRN攻击者节点分类方法

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摘要

Cognitive radio is a promising technology for the future wireless spectrum allocation to improve the utilization rate of the licensed bands. However, the cognitive radio network is susceptible to various attacks. Hence, there arises a need to develop a highly efficient security measure against the attacks. This paper presents a beamforming-based feature extraction and relevance vector machine (RVM)-based method for the classification of the attacker nodes in the cognitive radio network. Initially, the allocation of the Rayleigh channel is performed for the communication. The quaternary phase shift keying method is used for modulating the signals. After obtaining the modulated signal, the extraction of the beamforming-based features is performed. The RVM classifier is used for predicting the normal nodes and attacker nodes. If the node is detected as an attacker node, then communication with that node is neglected. Particle swarm optimization is applied for predicting the optimal channel, based on the beamforming feature values. Then, signal communication with the normal nodes is started. Finally, the signal is demodulated. The signal-to-noise ratio and bit-error rate values are computed to evaluate the performance of the proposed approach. The accuracy, sensitivity, and specificity of the RVM classifier method are higher than the support vector machine classifier. The proposed method achieves better performance in terms of throughput, channel sensing/probing rate, and channel access delay. Copyright © 2016 John Wiley & Sons, Ltd.
机译:认知无线电是用于未来无线频谱分配以提高许可频段的利用率的一种有前途的技术。但是,认知无线电网络容易受到各种攻击。因此,需要开发一种针对攻击的高效安全措施。本文提出了一种基于波束成形的特征提取和相关矢量机(RVM)的方法,用于对认知无线电网络中的攻击者节点进行分类。最初,为通信执行瑞利信道的分配。四相相移键控方法用于调制信号。在获得调制信号之后,将执行基于波束成形的特征的提取。 RVM分类器用于预测正常节点和攻击者节点。如果将该节点检测为攻击者节点,则忽略与该节点的通信。基于波束成形特征值,将粒子群优化技术应用于预测最佳信道。然后,开始与普通节点的信号通信。最后,信号被解调。计算信噪比和误码率值以评估所提出方法的性能。 RVM分类器方法的准确性,灵敏度和特异性都高于支持向量机分类器。所提出的方法在吞吐量,信道感测/探测速率和信道访问延迟方面实现了更好的性能。版权所有©2016 John Wiley&Sons,Ltd.

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