On the Performance of Data Compression in Clustered Fog Radio Access Networks
Haonan Hu, Yan Jiang, Jiliang Zhang, Yanan Zheng, Qianbin Chen, Jie, Zhang

TL;DR
This paper investigates the latency performance of data compression in large-scale fog-radio-access-networks, proposing a hybrid compression mode and deriving analytical results validated by simulations.
Contribution
It introduces the successful data compression probability metric and a hybrid compression mode, providing a closed-form analysis of latency performance in F-RANs.
Findings
Optimal compression offloading ratio improves SDCP significantly.
Hybrid compression mode reduces backhaul capacity requirements.
Analytical results match Monte Carlo simulations.
Abstract
The fog-radio-access-network (F-RAN) has been proposed to address the strict latency requirements, which offloads computation tasks generated in user equipments (UEs) to the edge to reduce the processing latency. However, it incorporates the task transmission latency, which may become the bottleneck of latency requirements. Data compression (DC) has been considered as one of the promising techniques to reduce the transmission latency. By compressing the computation tasks before transmitting, the transmission delay is reduced due to the shrink transmitted data size, and the original computing task can be retrieved by employing data decompressing (DD) at the edge nodes or the centre cloud. Nevertheless, the DC and DD incorporate extra processing latency, and the latency performance has not been investigated in the large-scale DC-enabled F-RAN. Therefore, in this work, the successful data…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Age of Information Optimization · Wireless Body Area Networks
