Musaddiq Arslan, Olsson Tobias, Ahlgren Fredrik
Department of Computer Science and Media Technology, Linnaeus University, 39182 Kalmar, Sweden.
Sensors (Basel). 2023 Oct 6;23(19):8263. doi: 10.3390/s23198263.
Internet of Things (IoT) devices are increasingly popular due to their wide array of application domains. In IoT networks, sensor nodes are often connected in the form of a mesh topology and deployed in large numbers. Managing these resource-constrained small devices is complex and can lead to high system costs. A number of standardized protocols have been developed to handle the operation of these devices. For example, in the network layer, these small devices cannot run traditional routing mechanisms that require large computing powers and overheads. Instead, routing protocols specifically designed for IoT devices, such as the routing protocol for low-power and lossy networks, provide a more suitable and simple routing mechanism. However, they incur high overheads as the network expands. Meanwhile, reinforcement learning (RL) has proven to be one of the most effective solutions for decision making. RL holds significant potential for its application in IoT device's communication-related decision making, with the goal of improving performance. In this paper, we explore RL's potential in IoT devices and discuss a theoretical framework in the context of network layers to stimulate further research. The open issues and challenges are analyzed and discussed in the context of RL and IoT networks for further study.
由于物联网(IoT)设备的应用领域广泛,其越来越受欢迎。在物联网网络中,传感器节点通常以网状拓扑的形式连接并大量部署。管理这些资源受限的小型设备很复杂,并且可能导致高昂的系统成本。已经开发了许多标准化协议来处理这些设备的运行。例如,在网络层,这些小型设备无法运行需要大量计算能力和开销的传统路由机制。相反,专门为物联网设备设计的路由协议,如低功耗有损网络路由协议,提供了一种更合适且简单的路由机制。然而,随着网络扩展,它们会产生高昂的开销。同时,强化学习(RL)已被证明是决策最有效的解决方案之一。强化学习在物联网设备的通信相关决策中具有巨大的应用潜力,目标是提高性能。在本文中,我们探讨强化学习在物联网设备中的潜力,并在网络层的背景下讨论一个理论框架,以激发进一步的研究。在强化学习和物联网网络的背景下分析和讨论了开放问题和挑战,以供进一步研究。