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首页> 外文期刊>IEEE Transactions on Vehicular Technology >Cluster-CMSS: A Cluster-Based Coordinated Spectrum Sensing in Geographically Dispersed Mobile Cognitive Radio Networks
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Cluster-CMSS: A Cluster-Based Coordinated Spectrum Sensing in Geographically Dispersed Mobile Cognitive Radio Networks

机译:Cluster-CMSS:地理分散的移动认知无线电网络中基于群集的协调频谱感知

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摘要

A coordinated multiband spectrum sensing (CMSS) policy for mobile and geographically dispersed cognitive radio networks (CRNs), referred to as cluster-CMSS, is proposed. The goal is to detect the spectrum holes and to assign each secondary user (SU) a sensing channel with the maximum probability of being empty. In geographically dispersed CRNs, channel availability varies over the space, and this makes the sensing outcomes and sensing assignments location dependent. However, if the SUs are not equipped with location-finding technologies, fusing the sensing outcomes to find the optimal spectrum sensing assignments for the next sensing time becomes challenging for the base station (BS). To tackle this problem, we introduce a metric solely based on the sensing outcomes of SUs. Using this metric, along with a low-complexity clustering algorithm, enables the BS to efficiently divide the network into clusters. Further, we present an adaptive learning algorithm, to learn the dynamic behavior of channel occupancy in the primary network. The proposed learning algorithm considers SUs mobility model to determine the optimal learning window. To determine the sensing assignments, the BS performs a graph-theory-based coordinated multiband spectrum sensing within each cluster. Specifically, a weighted bipartite matching is employed. We have shown that cluster-CMSS significantly increases the spectrum opportunity discovery ratio for SUs at the cost of a slight increase in the energy consumption associated with spectrum sensing.
机译:提出了一种针对移动和地理上分散的认知无线电网络(CRN)的协作多频带频谱感知(CMSS)策略,称为集群-CMSS。目的是检测频谱空缺并为每个二级用户(SU)分配一个具有最大空闲可能性的感测通道。在地理位置分散的CRN中,信道可用性随空间而变化,这使传感结果和传感分配取决于位置。但是,如果SU未配备定位技术,则将传感结果融合以找到下一个传感时间的最佳频谱传感分配对于基站(BS)来说将变得充满挑战。为了解决这个问题,我们引入了仅基于SU的感知结果的度量。使用此度量标准以及低复杂度的群集算法,可使BS高效地将网络划分为群集。此外,我们提出了一种自适应学习算法,以学习主网络中信道占用的动态行为。所提出的学习算法考虑了SUs的移动性模型来确定最佳学习窗口。为了确定感测分配,BS在每个集群内执行基于图论的协作多频带频谱感测。具体地,采用加权二分匹配。我们已经表明,集群CMSS显着增加了SU的频谱机会发现率,但代价是与频谱传感相关的能耗略有增加。

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