Intelligence in wireless network routing through reinforcement learning

S. Simi, M. Ramesh
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引用次数: 4

Abstract

One of the critical challenges in mobile wireless network is resource optimised routing of messages without compromising the performance criteria of the network. Routing in wireless networks has been extensively studied and a variety of routing protocols have been proposed. But these protocols experiences problems due to the dynamism in network topology. To address these problems, reinforcement learning approaches are integrated in routing solutions. This review focuses on the impact of reinforcement learning algorithms to achieve intelligence in wireless network routing. We provide contexts and benefits of applying reinforcement learning paradigm and discuss the major techniques applied to optimise routing solutions. A survey of state of the art reinforcement learning-based routing protocols is presented and categorised these protocols according to the learning strategies. We also provide open issues and suggestions for future research in improving routing solutions.
通过强化学习的无线网络路由智能
在不影响网络性能标准的情况下,对消息进行资源优化路由是移动无线网络面临的关键挑战之一。无线网络中的路由问题已经得到了广泛的研究,并提出了各种路由协议。但由于网络拓扑结构的动态性,这些协议存在一定的问题。为了解决这些问题,强化学习方法被集成到路由解决方案中。本文主要讨论了强化学习算法对实现无线网络路由智能的影响。我们提供了应用强化学习范式的背景和好处,并讨论了用于优化路由解决方案的主要技术。对基于强化学习的路由协议进行了综述,并根据学习策略对这些协议进行了分类。我们也提供了一些开放的问题和建议,以供未来研究改进路由解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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