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Q-Learning Algorithm Based Topology Control of Power Line Communication Networks

机译:基于Q学习算法的电力线通信网络拓扑控制

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As link reliability is increasingly important in power line communications (PLC), the issue of link quality prediction has already become necessary with real-time accuracy to guaranty communication services in smart power grid. However, the superposition of nonlinear and non-stationary sequences expressed by signal to noise ratio time series of PLC link quality is the main factor that affects the performance when the PLC network conducts topology control operation. Aimed to solve this problem, this article proposes a Q-Learning algorithm enabled topology control scheme in PLC networks. In this proposed approach, the link reliability prediction model based in Q-Learning is established, which use the received signal strength information between adjacent nodes to determine the connection state between adjacent nodes. Moreover, it makes full advantage of the PLC link reliability prediction result to conduct topology control operation to achieve less packets loss and higher efficiency. Testing results show that the proposed approach is able to improved services supporting ability of PLC networks.
机译:由于链路可靠性在电力线通信(PLC)中变得越来越重要,因此,要保证智能电网中的通信服务的实时性,实时性,就已经有必要进行链路质量预测的问题。但是,PLC链路质量的信噪比时间序列表示的非线性和非平稳序列的叠加是影响PLC网络进行拓扑控制操作时影响性能的主要因素。为了解决这个问题,本文提出了一种在PLC网络中启用Q学习算法的拓扑控制方案。在此方法中,建立了基于Q学习的链路可靠性预测模型,该模型使用接收到的相邻节点之间的信号强度信息来确定相邻节点之间的连接状态。而且,充分利用PLC链路可靠性预测结果进行拓扑控制操作,可以减少丢包,提高效率。测试结果表明,该方法能够提高PLC网络的服务支持能力。

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