Bayesian Optimal Data Detector for Hybrid mmWave MIMO-OFDM Systems with Low-Resolution ADCs
Hengtao He, Chao-Kai Wen, and Shi Jin

TL;DR
This paper introduces a Bayesian optimal data detection algorithm for hybrid mmWave MIMO-OFDM systems with low-resolution ADCs, achieving efficient performance analysis and demonstrating significant gains with mixed-ADC architectures.
Contribution
It proposes a low-complexity, Bayesian optimal data detector for hybrid mmWave MIMO-OFDM systems with low-resolution ADCs, extending to mixed-ADC architectures and providing a theoretical performance framework.
Findings
The detector achieves minimum mean-square error estimates.
Adding low-resolution RF chains improves system performance.
Simulation results match theoretical analysis accurately.
Abstract
Hybrid analog-digital precoding architectures and low-resolution analog-to-digital converter (ADC) receivers are two solutions to reduce hardware cost and power consumption for millimeter wave (mmWave) multiple-input multiple-output (MIMO) communication systems with large antenna arrays. In this study, we consider a mmWave MIMO-OFDM receiver with a generalized hybrid architecture in which a small number of radio-frequency (RF) chains and low-resolution ADCs are employed simultaneously. Owing to the strong nonlinearity introduced by low-resolution ADCs, the task of data detection is challenging, particularly achieving a Bayesian optimal data detector. This study aims to fill this gap. By using generalized expectation consistent signal recovery technique, we propose a computationally efficient data detection algorithm that provides a minimum mean-square error estimate on data symbols and…
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