A Tensor-Structured Approach to Dynamic Channel Prediction for Massive MIMO Systems with Temporal Non-Stationarity
Hongwei Hou, Yafei Wang, Yiming Zhu, Xinping Yi, Wenjin Wang, Dirk T., M. Slock, Shi Jin

TL;DR
This paper introduces a tensor-structured dynamic channel prediction method for massive MIMO systems that effectively models temporal non-stationarity and exploits dual-timescale correlations, significantly improving prediction accuracy.
Contribution
The paper proposes a novel tensor-based model and inference framework for dynamic channel prediction in massive MIMO, addressing temporal non-stationarity with a dual-timescale approach.
Findings
Outperforms benchmark methods in channel prediction accuracy
Effectively models short- and long-timescale correlations
Reduces computational complexity through tensor operations
Abstract
In moderate- to high-mobility scenarios, CSI varies rapidly and becomes temporally non-stationary, leading to severe performance degradation in the massive MIMO transmissions. To address this issue, we propose a tensor-structured approach to dynamic channel prediction (TS-DCP) for massive MIMO systems with temporal non-stationarity, exploiting both dual-timescale and cross-domain correlations. Specifically, due to inherent spatial consistency, non-stationary channels over long-timescales can be approximated as stationary on short-timescales, decoupling complicated temporal correlations into more tractable dual-timescale ones. To exploit such property, we propose the sliding frame structure composed of multiple pilot OFDM symbols, which capture short-timescale correlations within frames by Doppler domain modeling and long-timescale correlations across frames by Markov/autoregressive…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Wireless Communication Networks Research · Tensor decomposition and applications
