One-Bit Channel Estimation for IRS-aided Millimeter-Wave Massive MU-MISO System
Silei Wang, Qiang Li, Jingran Lin

TL;DR
This paper develops three novel channel estimators for IRS-assisted millimeter-wave massive MISO systems with one-bit ADCs, exploiting structured sparsity to improve estimation accuracy in challenging low-resolution scenarios.
Contribution
It introduces three structured sparsity-based estimators for IRS channel estimation with one-bit quantization, using variational EM and Bayesian learning techniques.
Findings
The proposed estimators outperform existing one-bit channel estimators.
Exploiting diverse structured sparsity improves estimation accuracy.
Simulation results validate the effectiveness of the proposed methods.
Abstract
Recently, intelligent reflecting surface (IRS)-assisted communication has gained considerable attention due to its advantage in extending the coverage and compensating the path loss with low-cost passive metasurface. This paper considers the uplink channel estimation for IRS-aided multiuser massive MISO communications with one-bit ADCs at the base station (BS). The use of one-bit ADC is impelled by the low-cost and power efficient implementation of massive antennas techniques. However, the passiveness of IRS and the lack of signal level information after one-bit quantization make the IRS channel estimation challenging. To tackle this problem, we exploit the structured sparsity of the user-IRS-BS cascaded channels and develop three channel estimators, each of which utilizes the structured sparsity at different levels. Specifically, the first estimator exploits the elementwise sparsity of…
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