Downlink Precoding for DP-UPA FDD Massive MIMO via Multi-Dimensional Active Channel Sparsification
Han Yu, Xinping Yi, and Giuseppe Caire

TL;DR
This paper extends active channel sparsification (ACS) to dual-polarized UPA massive MIMO systems, introducing multi-dimensional ACS and a greedy algorithm to improve downlink precoding efficiency in FDD systems.
Contribution
It develops a multi-dimensional ACS method for DP-UPA massive MIMO, including user selection and a simplified implementation, enhancing spectral efficiency and reducing feedback overhead.
Findings
MD-ACS outperforms state-of-the-art methods in simulations.
The greedy algorithm efficiently solves the GMAP formulation.
Simulation results validate the performance improvements.
Abstract
In this paper, we consider user selection and downlink precoding for an over-loaded single-cell massive multiple-input multiple-output (MIMO) system in frequency division duplexing (FDD) mode, where the base station is equipped with a dual-polarized uniform planar array (DP-UPA) and serves a large number of single-antenna users. Due to the absence of uplink-downlink channel reciprocity and the high-dimensionality of channel matrices, it is extremely challenging to design downlink precoders using closed-loop channel probing and feedback with limited spectrum resource. To address these issues, a novel methodology -- active channel sparsification (ACS) -- has been proposed recently in the literature for uniform linear array (ULA) to design sparsifying precoders, which boosts spectral efficiency for multi-user downlink transmission with substantially reduced channel feedback overhead.…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Full-Duplex Wireless Communications · Cooperative Communication and Network Coding
