5G无线网络中信道估计的学习辅助智能机制

Sakhshra Monga, A. Taneja, N. Saluja, R. Garg
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引用次数: 0

摘要

由于传播环境导致的信号衰减是无线通信的主要挑战,它导致频繁的通话中断,信号强度降低和传输速率降低。由于信道效应,包括衰落、阴影、路径损耗和其他开销,传播信道经常会降低接收机处的信号质量。在下一代无线系统中,传播信道及其有效估计对保证通信可靠性至关重要。本文提出了一种基于深度学习的无线信道估计智能机制,以提高系统的频谱效率。还考虑了硬件效应引起的信号失真的影响。并将该方法与传统的LMMSE信道估计方法进行了比较。此外,为了利用估计信道提取数据,采用RZF、MMSE和改进MMSE三种接收机对所提方案进行了性能评估。观察到,在没有失真的情况下,所提出的方案在归一化均方误差(NMSE)方面优于LMMSE方案14.43%和27.16%。最后,与已知完美信道状态信息(CSI)的系统进行了性能比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Aided Intelligent Mechanism for Channel Estimation in 5G Wireless Networks
The attenuation of signals due to propagation environment is the major challenge of wireless communication which results in frequent call drops, reduced signal strength and low transmission rates. The propagation channel often degrades the signal quality at the receiver due to channel effects including fading, shadowing, path loss and other overhead. The propagation channel and its successful estimation is very important for ensuring communication reliability in next generation wireless systems. This paper presents an intelligent mechanism based on deep learning to estimate the wireless channel such that the system spectral efficiency is enhanced. The impact of signal distortion due to hardware effects is also considered. Further, the proposed scheme is compared with the conventional LMMSE channel estimation scheme. Also, to extract the data using the estimated channel, the performance of proposed scheme is evaluated using three receivers namely, RZF, MMSE and modified MMSE. It is observed that the proposed scheme outperforms the LMMSE scheme in terms of normalised mean square error (NMSE) by 14.43% and by 27.16% in the absence of distortion. In the end, the performance comparison with the system with known perfect channel state information (CSI) is also performed.
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