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Empowering self-diagnosis with self-modeling

机译:通过自我建模增强自我诊断能力

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摘要

This paper proposes an approach to automatise the management of faults, covering the different segments of a network, and the end-to-end services deployed over them. This is model-based approach addressing the two weaknesses of model-based diagnosis namely deriving an accurate model and dealing with huge models. To address the first point, we propose a solution called self-modeling that formulates off-line generic patterns of the model, and identifies on-line the instances of these patterns that are deployed in the managed network. The second point is addressed by an active (self-)diagnosis engine, based on a Bayesian network formalism. This consists in reasoning on a progressively growing fragment of the network model: more observations are collected and new tests are performed until the faults are localized with sufficient confidence. This active diagnosis approach is experimented to perform cross-layer and cross-segment alarm management on an IMS network.
机译:本文提出了一种自动执行故障管理的方法,该方法涵盖了网络的不同部分以及在其上部署的端到端服务。这是一种基于模型的方法,可以解决基于模型的诊断的两个弱点,即得出准确的模型和处理庞大的模型。为了解决第一点,我们提出了一种称为自建模的解决方案,该解决方案制定了模型的离线通用模式,并在线标识了在托管网络中部署的这些模式的实例。第二点是基于贝叶斯网络形式主义的主动(自我)诊断引擎解决的。这取决于对网络模型的逐渐增长的片段进行推理:收集更多的观察值并执行新的测试,直到以足够的置信度定位故障为止。对这种主动诊断方法进行了实验,以在IMS网络上执行跨层和跨段警报管理。

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