Multi-armed Bandit Learning for TDMA Transmission Slot Scheduling and Defragmentation for Improved Bandwidth Usage

H. Dutta, Amit Kumar Bhuyan, S. Biswas
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Abstract

This paper proposes a Time Division Multiple Access (TDMA) MAC slot allocation protocol with efficient bandwidth usage in wireless sensor networks and Internet of Things (IoTs). The developed protocol has two primary components: a Multi-Armed Bandits (MAB)-based slot allocation mechanism for collision free transmission, and a Decentralized Defragmented Slot Backshift (DDSB) operation for improving bandwidth usage efficiency. The proposed framework is decentralized in that each node finds its transmission schedule independently without the control of any centralized arbitrator. The developed mechanism is suitable for networks with or without time synchronization, thus, making it suitable for low-complexity wireless transceivers for wireless sensor and IoT nodes. This framework is able to manage the trade-off between learning convergence time and bandwidth. In addition, it allows the nodes to adapt to topological changes while maintaining efficient bandwidth usage. The developed logic is tested for both fully-connected and arbitrary mesh networks with extensive simulation experiments. It is shown how the nodes can learn to select collision-free transmission slots using MAB. Moreover, the nodes learn to self-adjust their transmission schedules using a novel DDSB framework in order to reduce bandwidth usage.
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基于多臂强盗学习的TDMA传输时隙调度和碎片整理,以提高带宽利用率
提出了一种在无线传感器网络和物联网(iot)中有效利用带宽的时分多址(TDMA) MAC时隙分配协议。开发的协议有两个主要组成部分:基于Multi-Armed Bandits (MAB)的插槽分配机制,用于无碰撞传输,以及用于提高带宽使用效率的去中心化碎片插槽Backshift (DDSB)操作。所提出的框架是分散的,因为每个节点在没有任何集中仲裁器的控制下独立地发现其传输计划。所开发的机制适用于有或没有时间同步的网络,因此适用于无线传感器和物联网节点的低复杂度无线收发器。该框架能够管理学习收敛时间和带宽之间的权衡。此外,它允许节点适应拓扑变化,同时保持有效的带宽使用。通过大量的仿真实验,对所开发的逻辑进行了全连接和任意网状网络的测试。展示了节点如何使用MAB学习选择无碰撞传输槽。此外,节点学习使用新的DDSB框架来自我调整其传输计划,以减少带宽使用。
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