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Asymptotic performance analysis for common data delivery in cognitive radio networks

机译:认知无线电网络中常用数据传递的渐近性能分析

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This paper investigates the asymptotic throughput performance of common data delivery in cognitive radio networks (CRNs). Three schemes, named unicast, conventional multicast (CM) and Multiple Description Coding Multicast (MDCM), are compared by utilizing extreme value theory. The distributions of effective signal-to-noise-ratio (SNR) for unicast and CM belong to Domain of Attraction of Gumbel distribution for maxima and Domain of Attraction of Weibull distribution for minima, respectively. Based on asymptotic distribution of a central order statistic, the asymptotic performance of MDCM is then investigated. We first formulate it as an optimization problem, and then transform it into an equivalent one and solve it efficiently. By both theoretic derivation and simulation analysis, it is found that when the multicast group size grows, the per-user throughput of both unicast and CM decays to zero rapidly, while that of MDCM approaches to a positive constant, which implies that MDCM is a more promising scheme for common information delivery in CRNs considering that the number of users is typically large in CRNs.
机译:本文研究认知无线电网络(CRN)中常见数据传递的渐近吞吐性能。利用极值理论对三种方案进行了比较,分别称为单播,常规多播(CM)和多描述编码多播(MDCM)。单播和CM的有效信噪比(SNR)的分布分别属于最大值的Gumbel分布的吸引域和最小值的Weibull分布的吸引域。基于中心阶统计量的渐近分布,然后研究MDCM的渐近性能。我们首先将其表述为优化问题,然后将其转化为等效问题并有效解决。通过理论推导和仿真分析,发现当组播组规模增大时,单播和CM的每用户吞吐量都迅速衰减为零,而MDCM的正向常量接近,这意味着MDCM是一个考虑到CRN中的用户数量通常很大,因此在CRN中提供更有前途的公共信息传递方案。

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