Deep Learning-Based Channel Extrapolation for Dual-Band Massive MIMO Systems
Qikai Xiao, Kehui Li, Binggui Zhou, Shaodan Ma

TL;DR
This paper introduces MDFCE, a deep learning model that extrapolates mmWave CSI from sub-6 GHz CSI in dual-band massive MIMO systems, reducing pilot overhead and improving efficiency.
Contribution
It proposes a novel multi-domain fusion channel extrapolator using mixture-of-experts and self-attention mechanisms, outperforming traditional methods.
Findings
MDFCE achieves higher accuracy with fewer training pilots.
It demonstrates superior performance across various antenna scales and SNR levels.
The method offers increased computational efficiency.
Abstract
Future wireless communication systems will increasingly rely on the integration of millimeter wave (mmWave) and sub-6 GHz bands to meet heterogeneous demands on high-speed data transmission and extensive coverage. To fully exploit the benefits of mmWave bands in massive multiple-input multiple-output (MIMO) systems, highly accurate channel state information (CSI) is required. However, directly estimating the mmWave channel demands substantial pilot overhead due to the large CSI dimension and low signal-to-noise ratio (SNR) led by severe path loss and blockage attenuation. In this paper, we propose an efficient \textbf{M}ulti-\textbf{D}omain \textbf{F}usion \textbf{C}hannel \textbf{E}xtrapolator (MDFCE) to extrapolate sub-6 GHz band CSI to mmWave band CSI, so as to reduce the pilot overhead for mmWave CSI acquisition in dual band massive MIMO systems. Unlike traditional channel…
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Taxonomy
TopicsMillimeter-Wave Propagation and Modeling · Advanced MIMO Systems Optimization · Wireless Signal Modulation Classification
