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SGRL-Selective Gateway and Reinforcement Learning-based routing for WMN

机译:SGRL选择性网关和基于增强学习的WMN路由

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Thanks to their flexibility and their simplicity of installation, Wireless Mesh Networks (WMNs) allow a low cost deployment of network infrastructure. They can be used to extend wired networks coverage allowing connectivity anytime and anywhere. However, WMNs may suffer from drastic performance degradation (e.g., increased packet loss ratio and delay) because of interferences and congestion. Generally, the network may be unexpectedly congested at one or more gateways (GWs) since their number is limited and most traffic is oriented to/from Internet and passes through them. In this paper, we propose a combination between a selective gateway scheme and an adaptive routing scheme in WMNs, called SGRL (Selective Gateway and Reinforcement Learning-based routing). SGRL (1) considers a probabilistic gateway selection strategy to avoid route flapping which improves network stability and traffic fairness between gateways and (2) adaptively learns an optimal routing policy taking into account multiple metrics, such as loss ratio, interference ratio and load at the gateways. Simulation results show that SGRL can significantly improve the overall network performance compared to interference and channel switching (MIC), Reinforcement Learning-based Distributed Routing (RLBDR), Expected Transmission count (ETX), load at gateways as routing metrics.
机译:由于其灵活性和安装简便性,无线网状网络(WMN)允许低成本部署网络基础架构。它们可用于扩展有线网络覆盖范围,从而允许随时随地进行连接。然而,由于干扰和拥塞,WMN可能遭受急剧的性能下降(例如,增加的丢包率和延迟)。通常,由于一个或多个网关(GW)的数量有限并且大多数流量定向到Internet或从Internet传入并通过它们,因此网络可能会意外地出现拥塞。在本文中,我们提出了WMN中的选择性网关方案和自适应路由方案之间的组合,称为SGRL(基于选择性网关和基于强化学习的路由)。 SGRL(1)考虑一种概率网关选择策略,以避免路由震荡,从而提高网关之间的网络稳定性和流量公平性;(2)考虑多个指标(例如丢包率,干扰率和负载)自适应地学习最佳路由策略网关。仿真结果表明,与干扰和信道交换(MIC),基于强化学习的分布式路由(RLBDR),预期传输计数(ETX),网关负载作为路由度量相比,SGRL可以显着提高整体网络性能。

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