Exploiting Dynamic Sparsity for Near-Field Spatial Non-Stationary XL-MIMO Channel Tracking
Wenkang Xu, An Liu, Min-jian Zhao, Giuseppe Caire and, Yik-Chung Wu

TL;DR
This paper introduces a novel framework for tracking spatially non-stationary XL-MIMO channels by exploiting dynamic sparsity and visibility regions, significantly improving accuracy and efficiency in broadband systems.
Contribution
It proposes a hierarchical Bayesian model and a dynamic MAP framework that effectively exploit temporal and spatial sparsity for XL-MIMO channel tracking.
Findings
Achieves high channel tracking accuracy
Reduces computational complexity
Effectively exploits dynamic sparsity and VRs
Abstract
This work considers a spatial non-stationary channel tracking problem in broadband extremely large-scale multiple-input-multiple-output (XL-MIMO) systems. In the case of spatial non-stationary, each scatterer has a certain visibility region (VR) over antennas and power change may occur among visible antennas. Concentrating on the temporal correlation of XL-MIMO channels, we design a three-layer Markov prior model and hierarchical two-dimensional (2D) Markov model to exploit the dynamic sparsity of sparse channel vectors and VRs, respectively. Then, we formulate the channel tracking problem as a bilinear measurement process, and a novel dynamic alternating maximum a posteriori (DA-MAP) framework is developed to solve the problem. The DA-MAP contains four basic modules: channel estimation module, VR detection module, grid update module, and temporal correlated module. Specifically, the…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Full-Duplex Wireless Communications · Energy Harvesting in Wireless Networks
