论文标题

基于DRL的分布式资源分配,用于无细胞大型MIMO网络中的边缘计算

DRL-based Distributed Resource Allocation for Edge Computing in Cell-Free Massive MIMO Network

论文作者

Tilahun, Fitsum Debebe, Abebe, Ameha Tsegaye, Kang, Chung G.

论文摘要

在本文中,为了解决最近推出的高级多媒体服务的严格计算和服务质量(QoS)要求,我们考虑了一个无单元的庞大启用MIMO的移动边缘网络。特别是,从可靠的无单元格链接中受益于卸载到边缘服务器的密集型计算,资源受限的最终用户可以通过Edge Computing增强车载(本地)处理。为此,我们制定了联合通信和计算资源分配(JCCRA)问题,以最大程度地减少用户的总能耗,同时满足各自的用户特定的截止日期。为了解决该问题,我们提出了一种基于合作多代理增强学习框架的完全分布的解决方案方法,其中每个用户都被实施为学习代理,以仅依靠本地信息进行联合资源分配。仿真结果表明,所提出的分布式方法的性能优于启发式基准,融合到集中目标基准,而无需诉诸于大开销。此外,我们表明,与细胞MEC系统相比,所提出的算法在无细胞系统中的性能明显更好。

In this paper, with the aim of addressing the stringent computing and quality-of-service (QoS) requirements of recently introduced advanced multimedia services, we consider a cell-free massive MIMO-enabled mobile edge network. In particular, benefited from the reliable cell-free links to offload intensive computation to the edge server, resource-constrained end-users can augment on-board (local) processing with edge computing. To this end, we formulate a joint communication and computing resource allocation (JCCRA) problem to minimize the total energy consumption of the users, while meeting the respective user-specific deadlines. To tackle the problem, we propose a fully distributed solution approach based on cooperative multi-agent reinforcement learning framework, wherein each user is implemented as a learning agent to make joint resource allocation relying on local information only. The simulation results demonstrate that the performance of the proposed distributed approach outperforms the heuristic baselines, converging to a centralized target benchmark, without resorting to large overhead. Moreover, we showed that the proposed algorithm has performed significantly better in cell-free system as compared with the cellular MEC systems, e.g., a small cell-based MEC system.

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