以用户为中心的云RAN中具有Nakagami衰落的聚类机制分析框架

Qiao Zhu, Xue Wang, Z. Qian
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引用次数: 1

摘要

以用户为中心的云无线接入网(C-RAN)与传统的蜂窝通信不同,它向云融合,并将所有基带信号处理单元与无线接入单元分离。远程比率头(RRHs)的超密集部署是最有前途的爆炸式数据增长技术之一,同时也迫切需要现实和准确的统计框架来量化网络性能。在本文中,我们考虑用Nakagami分布来建模信道衰落,该分布更准确地解决了低天线C-RAN中的信号传播特性。此外,我们还开发了一个以用户为中心的集群机制的分析框架,该机制使用户能够被围绕其的rrh协作集群所服务。具体而言,我们推导了覆盖概率的封闭下界,并利用随机几何工具推导了面积谱效率表达式。此外,我们观察到簇大小是网络性能的一个可调参数,它会在相反的方向上影响RRH和有效用户密度,因此必须存在一个使区域频谱效率最大化的最优簇大小。仿真结果验证了分析框架的准确性,得到了最优的聚类大小。我们的数学结果为考虑以用户为中心的C-RAN中具有Nakagami衰落的聚类机制铺平了道路。
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An Analytical Framework for Clustering Mechanism with Nakagami Fading in User-Centric Cloud RAN
User-centric cloud radio access network (C-RAN), unlike conventional cellular communication, is converging toward cloud and separate all baseband signal processing units from the radio access units. Ultra-dense deployment of remote ratio heads (RRHs) constitutes one of the most promising techniques of explosive data growth while imposes an urgent need of realistic and accurate statistical framework to quantify the network performance. In this paper, we consider modeling the channel fading by a Nakagami distribution, which addresses the signal propagation properties more accurately in the C-RAN with lower antennas. Moreover, we develop an analytical framework for a user-centric clustering mechanism which enables a user can be served by the cooperative cluster of RRHs around it. Specifically, we derive a closed form lower bound on the coverage probability and formulate the area spectral efficiency expression using tools from stochastic geometry. Furthermore, we observe that the cluster size is a tunable parameter to the network performance, which can affect RRH and effective user density in opposite directions, hence, there must be an optimal cluster size which maximizes the area spectral efficiency. Simulation results validate the accuracy of our analytical framework and obtain the optimal cluster size. Our mathematical results pave the way to consider the clustering mechanism with Nakagami fading in user-centric C-RAN.
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