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Using reinforcement learning for agent-based network fault diagnosis system

机译:基于强化学习的基于Agent的网络故障诊断系统

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In the network, it is important that faults can be diagnosed at early stage before they result in serious fault. However, the situation is not optimistic, which depends on what network management software is used. Aiming to this problem, a mobile agent-based network fault diagnosis model is proposed. In the model, agent can learn by reinforcement learning (RL), which can improve fault diagnosis performance. The structure and function of model, especially the architecture and learning algorithm of diagnostic agent, is depicted. At last, compared the system performance through simulation and experiment, and results show that the model has greater advantage.
机译:在网络中,重要的是要在导致严重故障之前就及早诊断出故障。但是,这种情况并不乐观,这取决于所使用的网络管理软件。针对该问题,提出了一种基于移动代理的网络故障诊断模型。在该模型中,Agent可以通过强化学习(RL)进行学习,从而可以提高故障诊断性能。描述了模型的结构和功能,尤其是诊断代理的体系结构和学习算法。最后通过仿真和实验比较了系统性能,结果表明该模型具有较大的优势。

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