A centralized delay-sensitive hierarchical computation offloading in fog radio access networks

Samira Taheri, Neda Moghim, Naser Movahhedinia, Sachin Shetty
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Abstract

MEC (Multi-access Edge Computing) is vital in 5G and beyond (B5G) for reducing latency and enhancing network efficiency through local processing, crucial for real-time applications and improved security. This drives the adoption of advanced architectures like Fog Radio Access Network (F-RAN), which uses distributed resources from Radio Resource Heads (RRHs) or fog nodes to enable parallel computation. Each user equipment (UE) task can be processed by RRHs, fog access points, cloud servers, or the UE itself, depending on resource capacities. We propose MoNoR, a centralized approach for optimal task processing in F-RAN. MoNoR optimizes the selection of offloading modes, assignment of tasks to computation nodes, and allocation of radio resources using global network information. Given the computational complexity of this endeavor, we employ an evolutionary optimization technique rooted in Genetic Algorithms to address the problem efficiently. Simulations show MoNoR's superiority in minimizing latency over previous F-RAN offloading strategies.

Abstract Image

雾无线接入网络中的集中式延迟敏感分层计算卸载
MEC(多接入边缘计算)在 5G 及以后(B5G)中至关重要,可通过本地处理减少延迟并提高网络效率,这对实时应用和提高安全性至关重要。这推动了雾无线接入网(F-RAN)等先进架构的采用,该架构利用无线资源头(RRH)或雾节点的分布式资源实现并行计算。每个用户设备(UE)任务可由 RRH、雾接入点、云服务器或 UE 本身处理,具体取决于资源容量。我们提出了一种在 F-RAN 中优化任务处理的集中式方法 MoNoR。MoNoR 利用全局网络信息优化卸载模式选择、计算节点任务分配和无线电资源分配。考虑到这一工作的计算复杂性,我们采用了植根于遗传算法的进化优化技术来有效解决这一问题。仿真结果表明,与之前的 F-RAN 卸载策略相比,MoNoR 在最小化延迟方面更具优势。
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