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Automatic Clustering Collaborative Compressed Spectrum Sensing in Wide-Band Heterogeneous Cognitive Radio Networks

机译:宽带异构认知无线电网络中的自动聚类协作压缩频谱感知

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摘要

There are two major challenges in wide-band spectrum sensing in a heterogenous spectrum environment. One is the spectrum acquisition in the wide-band scenario due to limited sampling capability; the other is how to collaborate in a heterogenous spectrum environment. Compressed spectrum sensing is a promising technology for wide-band signal acquisition but it requires effective collaboration to combat noise. However, most collaboration methods assume that all the secondary users share the same occupancy of primary users, which is invalid in a heterogenous spectrum environment where secondary users at different locations may be affected by different primary users. In this paper, we propose an automatic clustering collaborative compressed spectrum sensing (ACCSS) algorithm. A hierarchy probabilistic model is proposed to represent the compressed reconstruction procedure, and Dirichlet process mixed model is introduced to cluster the compressed measurements. Cluster membership estimation and compressed spectrum reconstruction are jointly implemented in the fusion center. Based on the probabilistic model, the compressed measurements from the same cluster can be effectively fused and used to jointly reconstruct the corresponding primary user's spectrum signal. Consequently, the spectrum occupancy status of each primary user can be attained. Numerical simulation results demonstrate that the proposed ACCSS algorithm can effectively estimate the cluster membership of each secondary user and improve compressed spectrum sensing performance under low signal-to-noise ratio.
机译:在异构频谱环境中的宽带频谱检测中存在两个主要挑战。一种是由于采样能力有限而在宽带场景下进行的频谱采集;另一个是如何在异构频谱环境中进行协作。压缩频谱感测是一种用于宽带信号采集的有前途的技术,但它需要有效的协作来对抗噪声。但是,大多数协作方法都假定所有次要用户共享相同的主要用户占用,这在异构频谱环境中是无效的,在异构频谱环境中,不同位置的次要用户可能会受到不同主要用户的影响。在本文中,我们提出了一种自动聚类协作压缩频谱感知(ACCSS)算法。提出了一种层次概率模型来表示压缩重建过程,并引入了Dirichlet过程混合模型对压缩测量结果进行聚类。聚类成员身份估计和压缩频谱重建在融合中心共同实施。基于概率模型,可以有效地融合来自同一群集的压缩测量结果,并用于联合重建相应的主要用户的频谱信号。因此,可以获得每个主要用户的频谱占用状态。数值仿真结果表明,所提出的ACCSS算法可以有效地估计每个二级用户的簇成员,并在低信噪比的情况下提高压缩频谱的感知性能。

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