Interference Coordination: Random Clustering and Adaptive Limited Feedback
Salam Akoum, Robert W. Heath Jr

TL;DR
This paper models interference coordination in cellular networks using stochastic geometry, proposing adaptive limited feedback strategies and optimizing cluster sizes to enhance data rates and network performance.
Contribution
It introduces a stochastic geometry-based analysis of interference coordination with random clustering and adaptive feedback, providing new insights into optimizing network parameters.
Findings
Optimal cluster size depends on the number of antennas.
Adaptive feedback allocation improves rate performance.
Coverage probability and average rate are analytically derived.
Abstract
Interference coordination improves data rates and reduces outages in cellular networks. Accurately evaluating the gains of coordination, however, is contingent upon using a network topology that models realistic cellular deployments. In this paper, we model the base stations locations as a Poisson point process to provide a better analytical assessment of the performance of coordination. Since interference coordination is only feasible within clusters of limited size, we consider a random clustering process where cluster stations are located according to a random point process and groups of base stations associated with the same cluster coordinate. We assume channel knowledge is exchanged among coordinating base stations, and we analyze the performance of interference coordination when channel knowledge at the transmitters is either perfect or acquired through limited feedback. We apply…
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