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首页> 外文期刊>Selected Topics in Signal Processing, IEEE Journal of >Channel Estimation for Intelligent Reflecting Surface Assisted MIMO Systems: A Tensor Modeling Approach
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Channel Estimation for Intelligent Reflecting Surface Assisted MIMO Systems: A Tensor Modeling Approach

机译:智能反射表面辅助MIMO系统的信道估计:张量建模方法

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摘要

Intelligent reflecting surface (IRS) is an emerging technology for future wireless communications including 5G and especially 6 G. It consists of a large 2D array of (semi-)passive scattering elements that control the electromagnetic properties of radio-frequency waves so that the reflected signals add coherently at the intended receiver or destructively to reduce co-channel interference. The promised gains of IRS-assisted communications depend on the accuracy of the channel state information. In this paper, we address the receiver design for an IRS-assisted multiple-input multiple-output (MIMO) communication system via a tensor modeling approach aiming at the channel estimation problem using supervised (pilot-assisted) methods. Considering a structured time-domain pattern of pilots and IRS phase shifts, we present two channel estimation methods that rely on a parallel factor (PARAFAC) tensor modeling of the received signals. The first one has a closed-form solution based on a Khatri-Rao factorization of the cascaded MIMO channel, by solving rank-1 matrix approximation problems, while the second on is an iterative alternating estimation scheme. The common feature of both methods is the decoupling of the estimates of the involved MIMO channel matrices (base station-IRS and IRS-user terminal), which provides performance enhancements in comparison to competing methods that are based on unstructured LS estimates of the cascaded channel. Design recommendations for both methods that guide the choice of the system parameters are discussed. Numerical results show the effectiveness of the proposed receivers, highlight the involved trade-offs, and corroborate their superior performance compared to competing LS-based solutions.
机译:智能反射表面(IRS)是一种用于未来无线通信的新兴技术,包括5G,尤其是6 G。它由一个大的2D阵列(半)被动散射元件组成,可控制射频波的电磁特性,以便反射信号在预期的接收器处连贯添加或破坏性地减少共信道干扰。承诺的IRS辅助通信的收益取决于渠道状态信息的准确性。在本文中,我们通过旨在使用监督(导频辅助)方法的信道估计问题的张量建模方法来解决IRS辅助多输入多输出(MIMO)通信系统的接收器设计。考虑到导频和IRS相移的结构化时域模式,我们呈现了两个信道估计方法,其依赖于接收信号的并行因子(PARAFAC)张量建模。第一个通过求解级别-1矩阵近似问题,基于级联MIMO通道的Khatri-Rao分解,第一液体具有闭合形式的解决方案,而第二个是迭代交替估计方案。两种方法的共同特征是涉及的MIMO信道矩阵(基站-RS和IRS用户终端)的估计的解耦,其与基于级联信道的非结构化LS估计的竞争方法相比提供性能增强。讨论了指导系统参数选择的两种方法的设计建议。数值结果表明,拟议的接收器的有效性,突出了涉及的权衡,并与基于LS的解决方案相比,证实了它们的卓越性能。

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