An Edge Federated MARL Approach for Timeliness Maintenance in MEC Collaboration

Zheqi Zhu, Shuo Wan, Pingyi Fan, K. Letaief
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引用次数: 3

Abstract

Mobile edge computing (MEC) has been widely studied to provide new schemes for communication-computing systems such as industrial Internet of Things (IoTs), vehicular networks, smart city applications, etc. In this work, we mainly investigate on the timeliness maintenance of the MEC systems where the freshness of the data and computation tasks plays a significant role. We firstly formulate the average age of information (AoI) minimization problem of the UAV-assisted MEC systems. To maintain the system timeliness, we propose a novel multi-agent reinforcement learning (MARL) approach, called edge federated multi-agent actor-critic (MAAC), for joint trajectory planning, data scheduling and resource management in the investigated MEC systems. Through the proposed online learning method, edge devices and center controller learn the interactive policies through local observations and carry out the model-wise communication. We build up a simulation platform for time sensitive MEC systems as a gym environment module and implement the proposed algorithm. Furthermore, the comparisons with a popular MARL solution, MADDPG, show that the proposed approach achieves better performance in terms of data freshness and system stability.
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MEC协作中时效性维护的边缘联合MARL方法
移动边缘计算(MEC)已被广泛研究,为工业物联网(iot)、车联网、智慧城市应用等通信计算系统提供了新的方案。在本文中,我们主要研究了MEC系统的时效性维护,其中数据的新鲜度和计算任务起着重要的作用。首先提出了无人机辅助MEC系统的平均信息年龄最小化问题。为了保持系统的时效性,我们提出了一种新的多智能体强化学习(MARL)方法,称为边缘联合多智能体actor-critic (MAAC),用于所研究的MEC系统的联合轨迹规划、数据调度和资源管理。通过提出的在线学习方法,边缘设备和中心控制器通过局部观察学习交互策略,并进行模型通信。我们建立了一个时间敏感MEC系统的仿真平台作为健身房环境模块,并实现了所提出的算法。此外,与流行的MARL解决方案MADDPG的比较表明,该方法在数据新鲜度和系统稳定性方面取得了更好的性能。
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