TreeStep: Tree Search for Vector Perturbation Precoding under per-Antenna Power Constraint
Abstract
Vector Perturbation Precoding (VPP) can speed up downlink data transmissions in Large and Massive Multi-User MIMO systems but is known to be NP-hard. While there are several algorithms in the literature for VPP under total power constraint, they are not applicable for VPP under per-antenna power constraint. This paper proposes a novel, parallel tree search algorithm for VPP under per-antenna power constraint, called \emph{\textbf{TreeStep}}, to find good quality solutions to the VPP problem with practical computational complexity. We show that our method can provide huge performance gain over simple linear precoding like Regularised Zero Forcing. We evaluate TreeStep for several large MIMO~( and ) and massive MIMO~( and ) and demonstrate that TreeStep outperforms the popular polynomial-time VPP algorithm, the Fixed Complexity Sphere Encoder, by achieving the extremely low BER of at a much lower SNR.
Keywords
Cite
@article{arxiv.2204.07570,
title = {TreeStep: Tree Search for Vector Perturbation Precoding under per-Antenna Power Constraint},
author = {Abhishek Kumar Singh and Kyle Jamieson},
journal= {arXiv preprint arXiv:2204.07570},
year = {2022}
}
Comments
Article under review for IEEE Globecom 22