RRH clustering and transmit precoding for interference-limited 5G CRAN downlink
Muhammad Mahboob Ur Rahman, Hadi Ghauch, Sahar Imtiaz, James Gross

TL;DR
This paper investigates RRH clustering and transmit precoding in interference-limited 5G CRAN downlink, demonstrating that coordinated beamforming with RRH cooperation improves sum-rate performance despite increased overhead.
Contribution
It introduces a greedy RRH clustering algorithm and compares two transmit precoding schemes, analyzing their impact on sum-rate and system overhead in 5G CRAN.
Findings
RRH clustering improves sum-rate in interference-limited regimes.
Coordinated beamforming outperforms zero forcing beamforming.
Clustering overhead impacts system performance and baseband processing.
Abstract
In this work, we consider cloud RAN architecture and focus on the downlink of an antenna domain (AD) exposed to external interference from neighboring ADs. With system sum-rate as performance metric, and assuming that perfect channel state information is available at the aggregation node (AN), we implement i) a greedy user association algorithm, and ii) a greedy remote radio-head (RRH) clustering algorithm at the AN. We then vary the size of individual RRH clusters, and evaluate and compare the sum-rate gains due to two distinct transmit precoding schemes namely i) zero forcing beamforming (ZFBF), ii) coordinated beamforming (CB), when exposed to external interference of same kind. From system-level simulation results, we learn that in an interference-limited regime: i) RRH clustering helps, i.e., {\it cost-adjusted} performance when RRHs cooperate is superior to the performance when…
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