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引用次数: 0
摘要
本文探讨了使用强化学习(RL)的在线协议合成的概念。该研究是在具有超低复杂度无线收发器的传感器和物联网网络背景下进行的。本文介绍了在不同的网络和流量条件下,RL和一种特殊的RL - Multi - Armed Bandit (MAB)在介质访问控制(MAC)中的应用。然后介绍了一种新的基于学习的协议合成框架,该框架解决了随机访问和时隙网络介质访问中的特定困难和限制。该机制不依赖于载波感知、网络时间同步、碰撞检测和其他低级复杂操作,因此非常适合在资源受限的传感器和物联网网络中使用超简单收发器硬件。此外,节点的独立协议学习能力使系统具有鲁棒性,能够适应网络和流量条件的变化。研究表明,可以训练节点学习避免碰撞,并使用最简单的收发器硬件实现与传感器和物联网网络中基于ALOHA的访问协议相当的网络吞吐量。研究还表明,利用RL可以合成在高流量负载下保持网络吞吐量的访问协议,这在基于aloha的系统中是不可行的。实验还证明了该系统在网络和流量异构情况下提供吞吐量公平性的能力。
Reinforcement Learning for Protocol Synthesis in Resource-Constrained Wireless Sensor and IoT Networks
This article explores the concepts of online protocol synthesis using Reinforcement Learning (RL). The study is performed in the context of sensor and IoT networks with ultra low complexity wireless transceivers. The paper introduces the use of RL and Multi Armed Bandit (MAB), a specific type of RL, for Medium Access Control (MAC) under different network and traffic conditions. It then introduces a novel learning based protocol synthesis framework that addresses specific difficulties and limitations in medium access for both random access and time slotted networks. The mechanism does not rely on carrier sensing, network time-synchronization, collision detection, and other low level complex operations, thus making it ideal for ultra simple transceiver hardware used in resource constrained sensor and IoT networks. Additionally, the ability of independent protocol learning by the nodes makes the system robust and adaptive to the changes in network and traffic conditions. It is shown that the nodes can be trained to learn to avoid collisions, and to achieve network throughputs that are comparable to ALOHA based access protocols in sensor and IoT networks with simplest transceiver hardware. It is also shown that using RL, it is feasible to synthesize access protocols that can sustain network throughput at high traffic loads, which is not feasible in the ALOHA-based systems. The ability of the system to provide throughput fairness under network and traffic heterogeneities are also experimentally demonstrated.