5G Massive MIMO Architectures: Self-Backhauled Small Cells versus Direct Access
Andrea Bonfante, Lorenzo Galati Giordano, David L\'opez-P\'erez,, Adrian Garcia-Rodriguez, Giovanni Geraci, Paolo Baracca, M. Majid Butt and, Nicola Marchetti

TL;DR
This paper compares 5G massive MIMO architectures, specifically self-backhauled small cells and direct access, analyzing their performance through simulations and proposing deployment strategies to enhance user rates.
Contribution
It introduces a comprehensive comparison of self-backhauled small cells and direct access architectures, including new deployment strategies and resource partitioning analysis.
Findings
Ad-hoc deployment with directive antennas improves cell-edge rates by up to 30%.
Optimal resource partitioning enhances performance of self-backhauled small cells.
Direct access architecture outperforms self-backhauling when pilot contamination is low.
Abstract
In this paper, we focus on one of the key technologies for the fifth-generation wireless communication networks, massive multiple-input-multiple-output (mMIMO), by investigating two of its most relevant architectures: 1) to provide in-band backhaul for the ultra-dense network (UDN) of self-backhauled small cells (SCs), and 2) to provide direct access (DA) to user equipments (UEs). Through comprehensive 3GPP-based system-level simulations and analytical formulations, we show the end-to-end UE rates achievable with these two architectures. Differently from the existing works, we provide results for two strategies of self-backhauled SC deployments, namely random and ad-hoc, where in the latter SCs are purposely positioned close to UEs to achieve line-of-sight (LoS) access links. We also evaluate the optimal backhaul and access time resource partition due to the in-band self-backhauling…
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