Matrix Completion-Based Channel Estimation for MmWave Communication Systems With Array-Inherent Impairments
Rui Hu, Jun Tong, Jiangtao Xi, Qinghua Guo, Yanguang Yu

TL;DR
This paper introduces a robust matrix completion-based channel estimation method for mmWave MIMO systems that effectively handles array impairments, outperforming traditional compressive sensing approaches in accuracy and complexity.
Contribution
It proposes a novel MC-based channel estimator that is immune to array impairments and compatible with hybrid systems, extending to inductive matrix completion for improved efficiency.
Findings
Outperforms OMP-based CS estimators in accuracy and robustness.
Reduces computational complexity compared to existing methods.
Demonstrates effectiveness across various array shapes and impairments.
Abstract
Hybrid massive MIMO structures with reduced hardware complexity and power consumption have been widely studied as a potential candidate for millimeter wave (mmWave) communications. Channel estimators that require knowledge of the array response, such as those using compressive sensing (CS) methods, may suffer from performance degradation when array-inherent impairments bring unknown phase errors and gain errors to the antenna elements. In this paper, we design matrix completion (MC)-based channel estimation schemes which are robust against the array-inherent impairments. We first design an open-loop training scheme that can sample entries from the effective channel matrix randomly and is compatible with the phase shifter-based hybrid system. Leveraging the low-rank property of the effective channel matrix, we then design a channel estimator based on the generalized conditional gradient…
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