A PSO-based weighting method to enhance machine learning techniques for cooperative spectrum sensing in CR networks

Elham Ghazizadeh, Bahareh Nikpour, D. A. Moghadam, H. Nezamabadi-pour
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引用次数: 13

Abstract

Cognitive radio (CR) is a recent technology to tackle the problem of radio spectrum scarcity. Successful spectrum sensing is fundamental in performance of CR networks; hence, a PSO-based weighting method is proposed in order to improve the functionality of machine learning techniques which are used with the aim of detecting the activity of secondary users in cooperative cognitive radio (CCR) networks. Regarding classification methods, three supervised classifiers which are supported vector machines (SVM), K-nearest neighbors (K-NN) and naïve Bayes are used for pattern classification. Since our goal is spectrum sensing in CCR networks, the vector of energy levels in radio channel which is considered as a feature vector is fed into the classifier to determine the availability of the channel. The classifier labels each feature vector as two classes: the "channel available class" or the "channel unavailable class". In our proposed method, first, the three mentioned classifiers go through a training phase. Next, for new feature vectors, a label is assigned to the feature vector by each classifier and the final decision about the availability of the channel is made by a weighted voting method based on the PSO algorithm in an online fashion. The performance of our technique is measured in terms of the classification error. Also, the comparative results show twofold merit over previous methods since it not only reduces the error rate but also decreases the error of the channel available class.
基于pso的加权方法增强CR网络中协同频谱感知的机器学习技术
认知无线电(CR)是一种解决无线电频谱稀缺问题的新技术。成功的频谱感知是CR网络性能的基础;因此,提出了一种基于pso的加权方法,以改进机器学习技术的功能,该技术用于检测协作认知无线电(CCR)网络中辅助用户的活动。在分类方法上,采用支持向量机(SVM)、k近邻(K-NN)和naïve贝叶斯三种监督分类器进行模式分类。由于我们的目标是在CCR网络中进行频谱感知,因此将无线电信道中的能级向量作为特征向量馈送到分类器中以确定信道的可用性。分类器将每个特征向量标记为两类:“通道可用类”或“通道不可用类”。在我们提出的方法中,首先,上述三个分类器要经过一个训练阶段。其次,对于新的特征向量,每个分类器为特征向量分配一个标签,并通过基于PSO算法的加权投票方法在线决定通道的可用性。我们的技术性能是根据分类误差来衡量的。对比结果表明,该方法不仅降低了误码率,而且还降低了信道可用类的误码率。
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