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Reliable Machine Learning Based Spectrum Sensing in Cognitive Radio Networks

机译:认知无线电网络中基于可靠机器学习的频谱感知

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Spectrum sensing is of crucial importance in cognitive radio (CR) networks. In this paper, a reliable spectrum sensing scheme is proposed, which uses K-nearest neighbor, a machine learning algorithm. In the training phase, each CR user produces a sensing report under varying conditions and, based on a global decision, either transmits or stays silent. In the training phase the local decisions of CR users are combined through a majority voting at the fusion center and a global decision is returned to each CR user. A CR user transmits or stays silent according to the global decision and at each CR user the global decision is compared to the actual primary user activity, which is ascertained through an acknowledgment signal. In the training phase enough information about the surrounding environment, i.e., the activity of PU and the behavior of each CR to that activity, is gathered and sensing classes formed. In the classification phase, each CR user compares its current sensing report to existing sensing classes and distance vectors are calculated. Based on quantitative variables, the posterior probability of each sensing class is calculated and the sensing report is classified into either representing presence or absence of PU. The quantitative variables used for calculating the posterior probability are calculated through K-nearest neighbor algorithm. These local decisions are then combined at the fusion center using a novel decision combination scheme, which takes into account the reliability of each CR user. The CR users then transmit or stay silent according to the global decision. Simulation results show that our proposed scheme outperforms conventional spectrum sensing schemes, both in fading and in nonfading environments, where performance is evaluated using metrics such as the probability of detection, total probability of error, and the ability to exploit data transmission opportunities.
机译:频谱感测在认知无线电(CR)网络中至关重要。本文提出了一种可靠的频谱感知方案,该方案使用机器学习算法K近邻。在培训阶段,每个CR用户在变化的条件下都会生成感知报告,并基于全局决策发送或保持沉默。在培训阶段,CR用户的本地决策通过融合中心的多数投票进行合并,并且全局决策将返回给每个CR用户。 CR用户根据全局决策发送或保持沉默,并在每个CR用户处将全局决策与实际的主要用户活动进行比较,该活动通过确认信号确定。在训练阶段,收集有关周围环境的足够信息,即PU的活动以及每个CR对该活动的行为,并形成感知类。在分类阶段,每个CR用户将其当前感应报告与现有感应类别进行比较,并计算距离矢量。基于定量变量,计算每个传感类别的后验概率,并将传感报告分类为代表PU的存在或不存在。通过K近邻算法来计算用于计算后验概率的定量变量。然后在融合中心使用新颖的决策组合方案组合这些本地决策,该方案考虑了每个CR用户的可靠性。然后,CR用户根据全局决定进行传输或保持沉默。仿真结果表明,我们提出的方案在衰落和非衰落环境中均优于常规频谱感知方案,在衰落和非衰落环境中,使用诸如检测概率,总错误概率以及利用数据传输机会的能力等指标来评估性能。

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