Robust Beamforming in Cache-Enabled Cloud Radio Access Networks
Oussama Dhifallah, Hayssam Dahrouj, Tareq Y.Al-Naffouri and, Mohamed-Slim Alouini

TL;DR
This paper proposes a robust beamforming approach for cache-enabled cloud radio access networks, optimizing power and backhaul costs under imperfect channel information, and demonstrates significant backhaul cost reductions through simulations.
Contribution
It introduces a novel optimization framework using SDR and MM techniques for robust beamforming in cache-enabled CRANs with imperfect CSI.
Findings
Cache-enabled CRANs reduce backhaul costs significantly at high SINR.
The proposed method effectively handles imperfect CSI.
Simulation results validate the efficiency of the approach.
Abstract
Popular content caching is expected to play a major role in efficiently reducing backhaul congestion and achieving user satisfaction in next generation mobile radio systems. Consider the downlink of a cache-enabled cloud radio access network (CRAN), where each cache-enabled base station (BS) is equipped with limited-size local cache storage. The central computing unit (cloud) is connected to the BSs via a limited capacity backhaul link and serves a set of single-antenna mobile users (MUs). This paper assumes that only imperfect channel state information (CSI) is available at the cloud. It focuses on the problem of minimizing the total network power and backhaul cost so as to determine the beamforming vector of each user across the network, the quantization noise covariance matrix, and the BS clustering subject to imperfect channel state information and fixed cache placement assumptions.…
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