On Optimal Fronthaul Compression and Decoding Strategies for Uplink Cloud Radio Access Networks
Abstract
This paper investigates the compress-and-forward scheme for an uplink cloud
radio access network (C-RAN) model, where multi-antenna base-stations (BSs) are
connected to a cloud-computing based central processor (CP) via
capacity-limited fronthaul links. The BSs compress the received signals with
Wyner-Ziv coding and send the representation bits to the CP; the CP performs
the decoding of all the users' messages. Under this setup, this paper makes
progress toward the optimal structure of the fronthaul compression and CP
decoding strategies for the compress-and-forward scheme in C-RAN. On the CP
decoding strategy design, this paper shows that under a sum fronthaul capacity
constraint, a generalized successive decoding strategy of the quantization and
user message codewords that allows arbitrary interleaved order at the CP
achieves the same rate region as the optimal joint decoding. Further, it is
shown that a practical strategy of successively decoding the quantization
codewords first, then the user messages, achieves the same maximum sum rate as
joint decoding under individual fronthaul constraints. On the joint
optimization of user transmission and BS quantization strategies, this paper
shows that if the input distributions are assumed to be Gaussian, then under
joint decoding, the optimal quantization scheme for maximizing the achievable
rate region is Gaussian. Moreover, Gaussian input and Gaussian quantization
with joint decoding achieve to within a constant gap of the capacity region of
the Gaussian multiple-input multiple-output (MIMO) uplink C-RAN model. Finally,
this paper addresses the computational aspect of optimizing uplink MIMO C-RAN
by showing that under fixed Gaussian input, the sum rate maximization problem
over the Gaussian quantization noise covariance matrices can be formulated as
convex optimization problems, thereby facilitating its efficient solution.