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Cooperative spectrum sensing in TV White Spaces: When Cognitive Radio meets Cloud

机译:电视空白空间中的协作频谱感知:当认知无线电遇到云时

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A Cognitive Radio Cloud Network (CRCN) in TV White Spaces (TVWS) is proposed in this paper. Under the infrastructure of CRCN, cooperative spectrum sensing (SS) and resource scheduling in TVWS can be efficiently implemented making use of the scalability and the vast storage and computing capacity of the Cloud. Based on the sensing reports collected on the Cognitive Radio Cloud (CRC) from distributed secondary users (SUs), we study and implement a sparse Bayesian learning (SBL) algorithm for cooperative SS in TVWS using Microsoft's Windows Azure Cloud platform. A database for the estimated locations and spectrum power profiles of the primary users are established on CRC with Microsoft's SQL Azure. Moreover to enhance the performance of the SBL-based SS on CRC, a hierarchical parallelization method is also implemented with Microsoft's dotNet 4.0 in a MapReduce-like programming model. Based on our simulation studies, a proper programming model and partitioning of the sensing data play crucial roles to the performance of the SBL-based SS on the Cloud.
机译:本文提出了电视空白空间(TVWS)中的认知无线电云网络(CRCN)。在CRCN的基础架构下,TVWS中的协作频谱感知(SS)和资源调度可以利用云的可伸缩性以及巨大的存储和计算能力来有效地实现。基于在认知无线电云(CRC)上从分布式二级用户(SU)收集到的感知报告,我们使用Microsoft的Windows Azure云平台研究并实现了TVWS中协作SS的稀疏贝叶斯学习(SBL)算法。使用Microsoft的SQL Azure在CRC上建立了主要用户的估计位置和频谱功率分布图的数据库。此外,为了增强基于SBL的SS在CRC上的性能,还使用Microsoft的dotNet 4.0在类似MapReduce的编程模型中实现了分层并行化方法。根据我们的仿真研究,正确的编程模型和传感数据的分区对于基于SBL的SS在云上的性能起着至关重要的作用。

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