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A Self-Adaptive Routing Paradigm for Wireless Mesh Networks Based on Reinforcement Learning

机译:基于强化学习的无线Mesh网络自适应路由范例

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Classical routing protocols for VVMNs are typically designed to achieve specific target objectives (e.g., maximum throughput), and they offer very limited flexibility. As a consequence, more intelligent and adaptive mesh networking solutions are needed to obtain high performance in diverse network conditions. To this end, we propose a reinforcement learning-based routing framework that allows each mesh device to dynamically select at run time a routing protocol from a pre-defined set of routing options, which provides the best performance. The most salient advantages of our solution are: i) it can maximize routing performance considering different optimization goals, ii) it relies on a compact representation of the network state and it does not need any model of its evolution, and in) it efficiently applies Q-learning methods to guarantee convergence of the routing decision process. Through extensive ns-2 simulations we show the superior performance of the proposed routing approach in comparison with two alternative routing schemes.
机译:VVMN的经典路由协议通常旨在实现特定的目标目标(例如,最大吞吐量),并且它们提供的灵活性非常有限。结果,需要更智能和自适应的网状网络解决方案来在各种网络条件下获得高性能。为此,我们提出了一个基于增强学习的路由框架,该框架允许每个网格设备在运行时从预定义的路由选项集中动态选择路由协议,从而提供最佳性能。我们解决方案的最显着优势是:i)考虑到不同的优化目标,它可以最大限度地提高路由性能; ii)依靠网络状态的紧凑表示,不需要任何演化模型,并且)有效地应用Q学习方法可确保路由决策过程的收敛性。通过大量的ns-2仿真,我们展示了与两种替代路由方案相比,所提出的路由方法的优越性能。

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