工业物联网网络中智能资源分配的多智能体强化学习

Julia Rosenberger, Michael Urlaub, D. Schramm
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引用次数: 4

摘要

在工业物联网(IIoT)中,大量资源有限的设备(如计算能力、内存、带宽,以及无线传感器网络中的能源)进行通信。与此同时,边缘的数据量以及数据处理的需求也在迅速增加。为了实现工业4.0 (I4.0)和工业物联网,需要智能资源分配,以最佳利用可用资源。为此,提出了一种基于深度强化学习的多智能体系统(MAS)。多智能体强化学习(MARL)已经在不同的通信网络中得到了应用,例如智能路由。尽管这些方法具有巨大的潜力,但迄今为止在工业上很少得到重视。本文将DRL应用于工业边缘计算的资源分配和负载均衡。应实现IIoT设备可用资源的最佳使用。由于工业物联网系统的结构以及安全原因,MAS是分散决策的首选。在随后的步骤中,计划在运行时添加和删除设备,更改要执行的任务数量以及对单策略和多策略方法的评估。将考虑以下方面进行评估:(1)设备资源使用的改进和(2)由于MAS的开销。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-agent reinforcement learning for intelligent resource allocation in IIoT networks
In the industrial Internet of Things (IIoT), a high number of devices with limited resources, like computational power, memory, bandwidth and, in case of wireless sensor networks, also energy, communicate. At the same time, the amount of data as well as the demand for data processing in the edge is rapidly increasing. To enable Industry 4.0 (I4.0) and the IIoT, an intelligent resource allocation is required to make optimal use of the available resources. For this purpose, a multi-agent system (MAS) based on deep reinforcement learning (DRL) is proposed. Multi-agent reinforcement learning (MARL) is already taken into account in different communication networks, e.g. for intelligent routing. Despite its great potential, little attention is paid to these methods in industry so far. In this work, DRL is applied for resource allocation and load balancing for industrial edge computing. An optimal usage of the available resources of the IIoT devices should be achieved. Due to the structure of IIoT systems as well as for security reasons, a MAS is preferred for decentralized decision making. In subsequent steps, it is planned to add and remove devices during runtime, to change the number of tasks to be executed as well as evaluations on single- and multi-policy-approaches. The following aspects will be considered for evaluation: (1) improvement of the resource usage of the devices and (2) overhead due to the MAS.
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