SPAIApr 11, 2022

A Novel Channel Identification Architecture for mmWave Systems Based on Eigen Features

arXiv:2204.05052v14 citationsh-index: 55
Originality Incremental advance
AI Analysis

This addresses the problem of fast fading and blocking in mmWave communications for improving efficiency in IoE networks, but it is incremental as it builds on existing channel identification techniques.

The paper tackles channel identification in mmWave systems for LOS and NLOS environments by proposing an eigen features-based architecture, achieving 99.88% accuracy with perfect CSI and reducing overhead by about 90%.

Millimeter wave (mmWave) communication technique has been developed rapidly because of many advantages of high speed, large bandwidth, and ultra-low delay. However, mmWave communications systems suffer from fast fading and frequent blocking. Hence, the ideal communication environment for mmWave is line of sight (LOS) channel. To improve the efficiency and capacity of mmWave system, and to better build the Internet of Everything (IoE) service network, this paper focuses on the channel identification technique in line-of- sight (LOS) and non-LOS (NLOS) environments. Considering the limited computing ability of user equipments (UEs), this paper proposes a novel channel identification architecture based on eigen features, i.e. eigenmatrix and eigenvector (EMEV) of channel state information (CSI). Furthermore, this paper explores clustered delay line (CDL) channel identification with mmWave, which is defined by the 3rd generation partnership project (3GPP). Ther experimental results show that the EMEV based scheme can achieve identification accuracy of 99.88% assuming perfect CSI. In the robustness test, the maximum noise can be tolerated is SNR= 16 dB, with the threshold acc \geq 95%. What is more, the novel architecture based on EMEV feature will reduce the comprehensive overhead by about 90%.

Foundations

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