Optimally extracting the advantages available from reconfigurable intelligent surfaces (RISs) in wireless communications systems requires estimation of the channels to and from the RIS. The process of determining these channels is complicated by the fact that the RIS is typically composed of passive elements without any data processing capabilities, and thus the channels must be estimated indirectly by a non-colocated device, typically a controlling base station. In this article, we examine channel estimation for RIS-based systems from a fundamental viewpoint. We study various possible channel models and the identifiability of the models as a function of the available pilot data and behavior of the RIS during training. In particular, we consider situations with and without line-of-sight propagation, single- and multiple-antenna configurations for the users and base station, correlated and sparse channel models, single-carrier and wideband OFDM scenarios, availability of direct links between the users and base station, exploitation of prior information, as well as a number of other special cases. We further conduct numerical comparisons of achievable performance for various channel models using the relevant Cramer-Rao bounds.
翻译:在无线通信系统中,从可重新配置的智能表面(RIS)中充分提取现有优势,需要估计进入和进入RIS的渠道。确定这些渠道的过程由于以下事实而变得复杂:RIS通常由被动元素组成,没有任何数据处理能力,因此,频道必须间接地由一个非合用装置,通常是一个控制基地站来估计。在本篇文章中,我们从一个基本角度审查基于RIS的系统的频道估计;我们研究各种可能的频道模型,以及模型的可识别性,作为在培训期间可得到的试验性数据和RIS行为的一种功能。我们特别考虑使用相关Cramer-Rao界限的各种频道模型,对各种频道模型的可实现性能进行数字比较,使用相关Cramer-Rao界限。