Supervised-Learning for Multi-Hop MU-MIMO Communications with One-Bit Transceivers
Daeun Kim, Song-Nam Hong, and Namyoon Lee

TL;DR
This paper introduces supervised-learning based detection methods for multi-hop MU-MIMO relay channels with one-bit transceivers, achieving near-ML performance with reduced complexity and adaptive capabilities.
Contribution
It proposes a novel supervised-learning framework that simplifies the channel model, enabling practical near-optimal detection and adaptive online learning in multi-hop MU-MIMO systems.
Findings
Near-ML detection performance with limited pilot overheads.
Effective online adaptation to channel variations.
Deep neural network detector improves accuracy over model-based methods.
Abstract
This paper considers a nonlinear multi-hop multi-user multiple-input multiple-output (MU-MIMO) relay channel, in which multiple users send information symbols to a multi-antenna base station (BS) with one-bit analog-to-digital converters via intermediate relays, each with one-bit transceiver. To understand the fundamental limit of the detection performance, the optimal maximum-likelihood (ML) detector is proposed with the assumption of perfect and global channel state information (CSI) at the BS. This multi-user detector, however, is not practical due to the unrealistic CSI assumption and the overwhelming detection complexity. These limitations are addressed by presenting a novel detection framework inspired by supervised-learning. The key idea is to model the complicated multihop MU-MIMO channel as a simplified channel with much fewer and learnable parameters. One major finding is…
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Taxonomy
TopicsWireless Signal Modulation Classification · Wireless Communication Security Techniques · Cooperative Communication and Network Coding
