When Multi-access Edge Computing Meets Multi-area Intelligent Reflecting Surface: A Multi-agent Reinforcement Learning Approach

Shen Zhuang, Ying He, Fei Yu, Chengxi Gao, Weike Pan, Zhong Ming
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Abstract

In recent years, multi-access edge computing (MEC) is emerging to provide computation and storage capabilities to the Internet of things (IoT) devices to improve the quality of service (QoS) of IoT applications. In addition, intelligent reflecting surface (IRS) techniques have attracted great interests from both academia and industry to improve the communication efficiency. Although existing works leverage the IRS technique in MEC networks, they mainly focus on the single-IRS single-area scenario. However, in practice, multi-IRS will be deployed in multi-area scenarios in future networks. Consequently, considering the single-IRS single-area scenario will have inferior performance. In this paper, to address the aforementioned issue, we propose an efficient resource provisioning scheme for multi-IRS multi-area scenarios in MEC networks. We first model the problem as a cooperative multi-agent reinforcement learning process, where each agent manages one area and all agents share the network bandwidth and computation resources. Then, we propose a multi-agent actor-critic method with an attention mechanism for resource management with latency guarantee. Finally, we conduct extensive simulations to verify the effectiveness of the proposed scheme. Our scheme can reduce the required computation resources by up to 11.84% when compared with the benchmark works. It is also shown that our proposed scheme can improve the efficiency of resource allocation and scale well with the increasing demand from IoT devices.
当多访问边缘计算遇到多区域智能反射面:一种多智能体强化学习方法
近年来,多接入边缘计算(MEC)正在兴起,为物联网(IoT)设备提供计算和存储能力,以提高物联网应用的服务质量(QoS)。此外,智能反射面(IRS)技术在提高通信效率方面也引起了学术界和工业界的极大兴趣。虽然现有的工作在MEC网络中利用了IRS技术,但它们主要集中在单IRS单区域场景。但在实际应用中,未来网络将在多区域场景下部署多irs。因此,考虑到单irs单区域的场景会有较差的性能。为了解决上述问题,本文提出了一种MEC网络中多irs多区域场景下的高效资源分配方案。我们首先将该问题建模为一个协作的多智能体强化学习过程,其中每个智能体管理一个区域,所有智能体共享网络带宽和计算资源。在此基础上,提出了一种基于关注机制的多智能体行为者评价方法,用于具有延迟保证的资源管理。最后,我们进行了大量的仿真来验证所提出方案的有效性。与基准工作相比,我们的方案最多可以减少11.84%的计算资源。实验结果表明,该方案能够有效地提高资源分配效率,并能很好地适应物联网设备需求的增长。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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