Distributed Machine-Learning for Early HARQ Feedback Prediction in Cloud RANs
Bar{\i}\c{s} G\"oktepe, Cornelius Hellge, Thomas Schierl, Slawomir, Stanczak

TL;DR
This paper introduces a novel end-to-end trained HARQ prediction scheme for Cloud RANs using limited feedback, significantly improving throughput and reducing latency in realistic sub-THz band simulations.
Contribution
The paper proposes the DA2SGMM model for HARQ prediction in C-RANs, outperforming existing schemes with limited feedback and demonstrating substantial throughput and latency improvements.
Findings
DA2SGMM with 4-bit feedback achieves 200% higher throughput.
Reduces maximum transmission latency by over 72%.
Enhances blockage detection and HARQ prediction accuracy.
Abstract
In this work, we propose novel HARQ prediction schemes for Cloud RANs (C-RANs) that use feedback over a rate-limited feedback channel (2 - 6 bits) from the Remote Radio Heads (RRHs) to predict at the User Equipment (UE) the decoding outcome at the BaseBand Unit (BBU) ahead of actual decoding. In particular, we propose a Dual Autoencoding 2-Stage Gaussian Mixture Model (DA2SGMM) that is trained in an end-to-end fashion over the whole C-RAN setup. Using realistic link-level simulations in the sub-THz band at 100 GHz, we show that the novel DA2SGMM HARQ prediction scheme clearly outperforms all other adapted and state-of-the-art schemes. The DA2SGMM shows a superior performance in terms of blockage detection as well as HARQ prediction in the no-blockage and single-blockage cases. In particular, the DA2SGMM with 4~bit feedback achieves a more than 200 % higher throughput in average compared…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Millimeter-Wave Propagation and Modeling · Energy Harvesting in Wireless Networks
MethodsDenoising Autoencoder
