Published May 16, 2022 | Version v1
Conference paper Open

Deep Learning for Wireless Dynamics

  • 1. Ericsson

Description

This paper aims to predict radio channel variations over time by deep learning from channel observations without knowledge of the underlying channel dynamics. In next generation wideband cellular systems, multicarrier transmission for higher data rate leads to high-resolution predicting problem. By leveraging recent advances of deep learning in high-resolution image processing, we propose a purely data-driven deep learning (DL) approach to predicting high-resolution temporal evolution of wideband radio channels. In order to investigate the effect of architectural design choices, we develop and study three deep learning prediction models, namely, baseline, image completion and next-frame prediction models using UNet. Numerical results show that the proposed DL approach achieves a 52% lower prediction error than the traditional approach based on Kalman filter (KF) in mean absolute errors. To quantify impact of channel aging and prediction on precoding performance, we also evaluate the performance degradation due to outdated and predicted channel state information (CSI) compared to perfect CSI. Our simulations show that the proposed DL approach can reduce the performance loss due to channel aging by 71% through adapting precoding vector to changes in radio channel while the traditional KF approach only shows a 27% reduction.

Notes

HexaX_WP4

Files

ICC2022_DL4WirelessDynamics.pdf

Files (516.3 kB)

Name Size Download all
md5:5aa38b1262da94a84b5f7e0d06a20750
516.3 kB Preview Download

Additional details

Funding

European Commission
Hexa-X – A flagship for B5G/6G vision and intelligent fabric of technology enablers connecting human, physical, and digital worlds 101015956