Sparse Beamforming and User-Centric Clustering for Downlink Cloud Radio Access Network
Binbin Dai, Wei Yu

TL;DR
This paper proposes a novel approach for downlink cloud radio access networks that optimizes user scheduling, clustering, and beamforming while considering backhaul constraints, leading to significant performance improvements.
Contribution
It introduces a joint optimization framework for user-centric clustering and beamforming in C-RAN with backhaul constraints, including dynamic and static clustering models.
Findings
Dynamic clustering outperforms naive schemes.
Proposed algorithms achieve substantial performance gains.
Heuristic static schemes capture most of the benefits.
Abstract
This paper considers a downlink cloud radio access network (C-RAN) in which all the base-stations (BSs) are connected to a central computing cloud via digital backhaul links with finite capacities. Each user is associated with a user-centric cluster of BSs; the central processor shares the user's data with the BSs in the cluster, which then cooperatively serve the user through joint beamforming. Under this setup, this paper investigates the user scheduling, BS clustering and beamforming design problem from a network utility maximization perspective. Differing from previous works, this paper explicitly considers the per-BS backhaul capacity constraints. We formulate the network utility maximization problem for the downlink C-RAN under two different models depending on whether the BS clustering for each user is dynamic or static over different user scheduling time slots. In the former…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Cooperative Communication and Network Coding · Energy Harvesting in Wireless Networks
