Tensor-Structured Bayesian Channel Prediction for Upper Mid-Band XL-MIMO Systems
Hongwei Hou, Yafei Wang, Xinping Yi, Wenjin Wang, Dirk T. M. Slock, Shi Jin

TL;DR
This paper introduces a tensor-structured Bayesian channel prediction method for XL-MIMO systems in the upper mid-band, addressing challenges from mobility, near-field effects, and spatial non-stationarity to improve spectral efficiency.
Contribution
It develops novel tensor models and a bi-layer inference algorithm that effectively predict channels in complex XL-MIMO scenarios with reduced computational complexity.
Findings
Superior prediction accuracy demonstrated in simulations
Effective handling of near-field and non-stationarity effects
Reduced computational complexity compared to existing methods
Abstract
The upper mid-band balances coverage and capacity for the future cellular systems and also embraces XL-MIMO systems, offering enhanced spectral and energy efficiency. However, these benefits are significantly degraded under mobility due to channel aging, and further exacerbated by the unique near-field (NF) and spatial non-stationarity (SnS) propagation in such systems. To address this challenge, we propose a novel channel prediction approach that incorporates dedicated channel modeling, probabilistic representations, and Bayesian inference algorithms for this emerging scenario. Specifically, we develop tensor-structured channel models in both the spatial-frequency-temporal (SFT) and beam-delay-Doppler (BDD) domains, which leverage temporal correlations among multiple pilot symbols for channel prediction. The factor matrices of multi-linear transformations are parameterized by BDD…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Tensor decomposition and applications · Millimeter-Wave Propagation and Modeling
