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 compression probability (SDCP) is defined to analyse the latency performance of the F-RAN. Moreover, to analyse the effect of compression offloading ratio (COR), a novel hybrid compression mode is proposed based on the queueing theory. Based on this, the closed-form result of SDCP in the large-scale DC-enabled F-RAN is derived by combining the Matern cluster process and M/G/1 queueing model, and validated by Monte Carlo simulations. Based on the derived SDCP results, the effects of COR on the SDCP is analysed numerically. The results show that the SDCP with the optimal COR can be enhanced with a maximum value of 0.3 and 0.55 as compared with the cases of compressing all computing tasks at the edge and at the UE, respectively. Moreover, for the system requiring the minimal latency, the proposed hybrid compression mode can alleviate the requirement on the backhaul capacity.
翻译:提出了雾光存取网络(F-RAN),以满足严格的延时要求,将用户设备生成的计算任务卸至边缘边缘,以减少处理延迟。然而,它纳入了任务传输延时,这可能成为延时要求的瓶颈。数据压缩(DC)被认为是减少传输延时的有希望的技术之一。通过压缩传输前的计算任务,传输延迟因传送数据规模缩小而减少,而原始计算任务可以通过在边缘节点或中心云中使用数据降压(DDD)来回收。然而,DC和DDD包含超处理延迟,而升时性能业绩可能成为延时要求的瓶颈。因此,数据压缩(DC)被认为是减少传输延时的可行技术之一。通过压缩计算计算计算数据任务,可以分析F-RAN的升时态性能性能。此外,通过在优化的节点节点节点节点节点节点或中心云云点上使用数据降压数据递减(DRDR5),而新的混合压缩模式则在更低时使用S-G的递升时, 将S-M-Fxximal 的S-modal 和S-modal-lad-modal-ladal-lax-lax S-mode-lax-lax-lax-lax-lax-ladal-modal-mod-modal-modal-modal-mod-mod-mod-modal-modal-modal-mod-modal-modal-modal-modal-modal-modal-modal-mod-modal-modal-modal-modal-modal-modal-modal-moal-modal-mod-modal-mod-modal-modal-modal-modal-modal-modal-modal-modal-mod-mod-mod-mod-mod-moal-mod-modal-modal-moal-modal-modal-moal-moal-moal-moal-moal-moal-