Machine Learning-based Channel Prediction in Wideband Massive MIMO Systems with Small Overhead for Online Training
Beomsoo Ko, Hwanjin Kim, Minje Kim, Junil Choi

TL;DR
This paper introduces an online re-training framework with an aggregated learning approach for ML-based channel prediction in wideband massive MIMO systems, reducing training time and adapting to changing environments.
Contribution
It proposes a novel online re-training framework and an aggregated learning method to enhance channel prediction accuracy with minimal training overhead in dynamic wireless environments.
Findings
Aggregated learning reduces data collection time.
The approach improves prediction accuracy across scenarios.
Small training overhead with effective adaptation.
Abstract
Channel prediction compensates for outdated channel state information in multiple-input multiple-output (MIMO) systems. Machine learning (ML) techniques have recently been implemented to design channel predictors by leveraging the temporal correlation of wireless channels. However, most ML-based channel prediction techniques have only considered offline training when generating channel predictors, which can result in poor performance when encountering channel environments different from the ones they were trained on. To ensure prediction performance in varying channel conditions, we propose an online re-training framework that trains the channel predictor from scratch to effectively capture and respond to changes in the wireless environment. The training time includes data collection time and neural network training time, and should be minimized for practical channel predictors. To…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Telecommunications and Broadcasting Technologies · Millimeter-Wave Propagation and Modeling
