基于q学习的自适应路由

Abdellatif Serhani, N. Naja, A. Jamali
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引用次数: 13

摘要

移动自组织网络是由移动节点组成的高度可重构网络,通过无线链路进行通信。manet的主要问题包括网络节点的移动性、能量限制和带宽。因此,路由协议在算法设计中应明确考虑网络变化。为了支持多媒体和实时应用的业务需求,路由协议必须提供QoS (Quality of service),即丢包率和平均端到端时延。这项工作提出了一种基于q学习的自适应路由模型(QLAR),该模型通过强化学习(RL)技术开发,能够检测不同时间点的移动水平,以便每个单独的节点可以相应地更新路由度量。提出的协议引入:(i)通过Q-Learning技术开发的新模型来检测网络中每个节点的移动水平;(ii)一种新的度量,称为Qmetric,它考虑静态和动态路由度量,并根据不断变化的网络拓扑进行组合和更新。本文提出的度量和路由模型部署在优化链路状态路由(OLSR)协议上。通过与标准OLSR协议的比较,广泛的仿真验证了所提出模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
QLAR: A Q-learning based adaptive routing for MANETs
Mobile Ad-hoc Networks are highly reconfigurable networks of mobile nodes which communicate by wireless links. The main issues in MANETs include the mobility of the network nodes, energy limitations and bandwidth. Thus, routing protocols should explicitly consider network changes into the algorithm design. In order to support service requirements of multimedia and real-time applications, the routing protocol must provide Quality of Service (QoS) in terms of packets loss and average End-to-End Delay (ETED). This work proposes a Q-Learning based Adaptive Routing model (QLAR), developed via Reinforcement Learning (RL) techniques, which has the ability to detect the level of mobility at different points of time so that each individual node can update routing metric accordingly. The proposed protocol introduces: (i) new model, developed via Q-Learning technique, to detect the level of mobility at each node in the network; (ii) a new metric, called Qmetric, which account for the static and dynamic routing metrics, and which are combined and updated to the changing network topologies. The proposed metric and routing model in this paper are deployed on the Optimized Link State Routing (OLSR) protocol. Extensive simulations validate the effectiveness of the proposed model, through comparisons with the standard OLSR protocols.
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