可重构智能表面辅助多蜂窝网络中信道估计的资源分配

Yining Xu;Sheng Zhou
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引用次数: 0

摘要

可重构智能表面(RIS)是应对毫米波频段阻塞敏感性和降低网络密集化带来的高能耗的一种有前途的解决方案。然而,由于大量的信道估计开销和不可忽略的反射干扰,部署大规模 RIS 可能无法带来预期的性能提升。本文推导了下行 RIS 辅助多蜂窝网络的覆盖概率、区域频谱效率(ASE)和能效(EE)的分析表达式。为了优化网络性能,我们研究了信道估计中每个天线到天线和天线到天线路径的最佳训练符号数(称为最佳单位训练开销)的条件。我们的研究表明1)RIS 的部署并非 "越多越好",只有当阻塞对象密集时才应部署更多的 RIS;2)当单元训练开销设计得尽可能大时,覆盖概率最大;3)然而,ASE 和EE 最佳单元训练开销是存在的。它是帧长的单调递增函数,也是平均信噪比的单调递减函数(在高信噪比区域)。此外,当通信节点部署的天线数量特别少或特别多时,最佳单元训练开销会更小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resource Allocation for Channel Estimation in Reconfigurable Intelligent Surface-Aided Multi-Cell Networks
Reconfigurable intelligent surface (RIS) is a promising solution to deal with the blockage-sensitivity of millimeter wave band and reduce the high energy consumption caused by network densification. However, deploying large scale RISs may not bring expected performance gain due to significant channel estimation overhead and non-negligible reflected interference. In this paper, we derive the analytical expressions of the coverage probability, area spectrum efficiency (ASE) and energy efficiency (EE) of a downlink RIS-aided multi-cell network. In order to optimize the network performance, we investigate the conditions for the optimal number of training symbols of each antenna-to-antenna and antenna-to-element path (referred to as the optimal unit training overhead) in channel estimation. Our study shows that: 1) RIS deployment is not “the more, the better”, only when blockage objects are dense should one deploy more RISs; 2) the coverage probability is maximized when the unit training overhead is designed as large as possible; 3) however, the ASE-and-EE-optimal unit training overhead exists. It is a monotonically increasing function of the frame length and a monotonically decreasing function of the average signal-to-noise-ratio (in the high signal-to-noise-ratio region). Additionally, the optimal unit training overhead is smaller when communication nodes deploy particularly few or many antennas.
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