On Optimal Fronthaul Compression and Decoding Strategies for Uplink Cloud Radio Access Networks
Yuhan Zhou, Yinfei Xu, Wei Yu, Jun Chen

TL;DR
This paper explores optimal fronthaul compression and decoding strategies for uplink C-RANs, demonstrating that practical successive decoding approaches can achieve near-capacity performance with convex optimization techniques.
Contribution
It introduces a generalized successive decoding strategy that matches joint decoding performance and characterizes the optimal Gaussian quantization scheme for uplink C-RANs.
Findings
Successive decoding achieves the same rate region as joint decoding.
Gaussian quantization is optimal under Gaussian input for maximizing rates.
Convex optimization efficiently solves sum rate maximization over quantization noise covariances.
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.…
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