Multivariate Fronthaul Quantization for Downlink C-RAN
Wonju Lee, Osvaldo Simeone, Joonhyuk Kang, Shlomo Shamai

TL;DR
This paper introduces a practical multivariate fronthaul quantization algorithm for downlink C-RAN that improves signal compression efficiency by enabling joint processing at the central unit without requiring modifications at radio units.
Contribution
The paper develops a symbol-by-symbol multivariate quantization method for C-RAN downlink, extending it with joint precoding optimization, reduced-complexity schemes, and variable-length compression.
Findings
Multivariate quantization outperforms traditional scalar methods.
Joint optimization with precoding enhances overall system performance.
Proposed algorithms are practical and compatible with existing infrastructure.
Abstract
The Cloud-Radio Access Network (C-RAN) cellular architecture relies on the transfer of complex baseband signals to and from a central unit (CU) over digital fronthaul links to enable the virtualization of the baseband processing functionalities of distributed radio units (RUs). The standard design of digital fronthauling is based on either scalar quantization or on more sophisticated point to-point compression techniques operating on baseband signals. Motivated by network-information theoretic results, techniques for fronthaul quantization and compression that improve over point-to-point solutions by allowing for joint processing across multiple fronthaul links at the CU have been recently proposed for both the uplink and the downlink. For the downlink, a form of joint compression, known in network information theory as multivariate compression, was shown to be advantageous under a…
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