Baye Alelign Ewinetu
Department of Electrical and Computer Engineering, Woldia University, Woldia, Ethiopia.
Sci Rep. 2023 Aug 21;13(1):13574. doi: 10.1038/s41598-023-40587-7.
The need for low latency and high data rates is increasing rapidly since the advent of wireless communication. The current fifth-generation (5G) networks are unable to fulfill the requirements of upcoming technologies. So, researchers are commencing their research beyond 5G. Terahertz (THz) frequency is one candidate to satisfy the large bandwidth requirement and intelligent reflecting surface (IRS) is incorporated to mitigate signal blockage which is the main problem for communication at high frequencies. Channel estimation is a process of identifying coefficients of the channel matrix. The compressive sensing technique is of great importance as it decreases the number of pilot symbols required for channel estimation. As mmWave and THz signals are naturally sparse applying a compressive sensing technique is reasonable. Unlike other papers, this paper considers the imperfect IRS elements, which is the real case, by varying the value of [Formula: see text] (amplitude perturbations). The channel estimation performance of the conventional least squares (LS), orthogonal matching pursuit (OMP) and Oracle is analyzed with respect to signal-to-noise ratio (SNR) and pilot length (T). Normalized mean square error (NMSE) and spectral efficiency (SE) are used as performance metrics and the OMP algorithm is found to perform better than LS even at a fewer number of pilot symbols.
自无线通信出现以来,对低延迟和高数据速率的需求迅速增长。当前的第五代(5G)网络无法满足未来技术的要求。因此,研究人员开始了对5G之后技术的研究。太赫兹(THz)频段是满足大带宽需求的一个候选频段,并且引入了智能反射面(IRS)来减轻信号阻塞,而信号阻塞是高频通信的主要问题。信道估计是识别信道矩阵系数的过程。压缩感知技术非常重要,因为它减少了信道估计所需的导频符号数量。由于毫米波和太赫兹信号本质上是稀疏的,应用压缩感知技术是合理的。与其他论文不同,本文通过改变[公式:见原文](幅度扰动)的值,考虑了不完美的IRS元件,这是实际情况。针对信噪比(SNR)和导频长度(T),分析了传统最小二乘法(LS)、正交匹配追踪(OMP)和理想估计器的信道估计性能。使用归一化均方误差(NMSE)和频谱效率(SE)作为性能指标,发现即使在较少数量的导频符号情况下,OMP算法的性能也优于LS。