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Distributed Dimension Reduction for Distributed Massive MIMO C-RAN with Finite Fronthaul Capacity

Fred Wiffen, Woon Hau Chin, Angela Doufexi

20212021 55th Asilomar Conference on Signals, Systems, and Computers15 citationsDOI

Abstract

The use of a large excess of service antennas brings a variety of performance benefits to distributed MIMO C-RAN, but the corresponding high fronthaul data loads can be problematic in practical systems with limited fronthaul capacity. In this work we propose the use of lossy dimension reduction, applied locally at each remote radio head (RRH), to reduce this fronthaul traffic. We first consider the uplink, and the case where each RRH applies a linear dimension reduction filter to its multiantenna received signal vector. It is shown that under a joint mutual information criteria, the optimal dimension reduction filters are given by a variant of the conditional Karhunen-Loeve transform, with a stationary point found using block co-ordinate ascent. These filters are then modified such that each RRH can calculate its own dimension reduction filter in a decentralised manner, using knowledge only of its own instantaneous channel and network slow fading coefficients. We then show that in TDD systems these dimension reduction filters can be re-used as part of a two-stage reduced dimension downlink precoding scheme. Analysis and numerical results demonstrate that the proposed approach can significantly reduce both uplink and downlink fronthaul traffic whilst incurring very little loss in MIMO performance.

Topics & Concepts

Telecommunications linkPrecodingMIMOComputer scienceReduction (mathematics)C-RANDimensionality reductionDimension (graph theory)Computer networkRadio access networkMathematicsChannel (broadcasting)Base stationArtificial intelligenceGeometryMobile stationPure mathematicsAdvanced MIMO Systems OptimizationMillimeter-Wave Propagation and ModelingFull-Duplex Wireless Communications