MSE-based Precoding for MIMO Downlinks in Heterogeneous Networks
Yongyu Dai, Xiaodai Dong, and Wu-Sheng Lu

TL;DR
This paper introduces three new MSE-based precoding algorithms for MIMO downlinks in heterogeneous networks, improving performance and offering flexible solutions for different system configurations.
Contribution
It proposes novel sum-MSE minimization algorithms using alternating optimization and normalization techniques for HetNet precoding design.
Findings
RAO algorithm achieves the best MSE performance.
Separate MSE-based precoding approaches the performance of RAO with large antennas.
The suite of techniques balances performance and complexity for diverse HetNet scenarios.
Abstract
Considering a heterogeneous network (HetNet) system consisting of a macro tier overlaid with a second tier of small cells (SCs), this paper studies the mean square error (MSE) based precoding design to be employed by the macro base station and the SC nodes for multiple-input multiple-output (MIMO) downlinks. First, a new sum-MSE of all users based minimization problem is proposed aiming to design a set of macro cell (MC) and SC transmit precoding matrices or vectors. To solve it, two different algorithms are presented. One is via a relaxed-constraints based alternating optimization (RAO) realized by efficient alternating optimization and relaxing non-convex constraints to convex ones. The other is via an unconstrained alternating optimization with normalization (UAON) implemented by introducing the constraints into the iterations with the normalization operation. Second, a separate MSE…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Cooperative Communication and Network Coding · Advanced Wireless Communication Technologies
