Intelligent reflecting surface (IRS) is a promising technology for the 6th generation of wireless systems, realizing the smart radio environment concept. In this paper, we present a novel tensor-based receiver for IRS-assisted multiple-input multiple-output communications capable of jointly estimating the channels and the transmitted data streams in a semi-blind fashion. Assuming a fully passive IRS architecture and introducing a simple space-time coding scheme at the transmitter, the received signal model can be advantageously built using the PARATUCK tensor model, which can be seen as a hybrid of parallel factor analysis and Tucker models. Exploiting the algebraic structure of the PARATUCK tensor model, a semi-blind receiver is derived. The proposed receiver is based on a trilinear alternating least squares method that iteratively estimates the two involved - IRS- base station and user terminal-IRS-communication channels and the transmitted symbol matrix. We discuss identifiability conditions that ensure the joint semi-blind recovery of the involved channel and symbol matrices, and propose a joint design of the coding and IRS reflection matrices to optimize the receiver performance. For the proposed semi-blind receiver, the derivation of the expected Cram\'er-Rao lower bound is also provided. A numerical performance evaluation of the proposed receiver design corroborates its superior performance in terms of the normalized mean squared error of the estimated channels and the achieved symbol error rate.
翻译:智能反射表面(IRS)是第6代无线系统的一个很有希望的技术,实现了智能无线电环境概念。在本文中,我们为IRS协助的多输出多输出传输通信提供了一个新型高压接收器,能够以半盲方式共同估计频道和传输数据流。假设完全被动的IRS结构,并在发射机上引入一个简单的时空编码办法,接收信号模型可以使用PARATAKK 高频模型来构建有利条件,该模型可以被视为平行要素分析和塔克模型的混合体。利用PARATAATK 高频模型的高级接收器的代数结构,一个半盲式接收器。拟议接收器以三线交替的最不平方方法为基础,迭接地估计所涉及的两个系统-IRS基站和用户终端-IRS通信频道和传送的符号矩阵。我们讨论了确保联合恢复相关频道和符号矩阵的半盲光度条件,并提议联合设计PARAATK 高清晰度镜和IRS 映射仪模型的正标的正标比标结构,并优化A级机床标的高级分析仪的高级分析仪表,还提供最佳的平版的平版性评估。