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Monitoring and data analytics: Analyzing the optical spectrum for soft-failure detection and identification

机译:监控和数据分析:分析光谱以进行软故障检测和识别

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Failure detection is essential in optical networks as a result of the huge amount of traffic that optical connections support. Additionally, the cause of failure needs to be identified so failed resources can be excluded from the computation of restoration paths. In the case of soft-failures, their prompt detection, identification, and localization make that recovery can be triggered before excessive errors in optical connections translate into errors on the supported services or even become disrupted. Therefore, Monitoring and Data Analytics (MDA) become of paramount importance in the case of soft-failures. In this paper, we review a MDA architecture that reduces remarkably detection and identification times, while facilitating failure localization. In addition, we rely on Optical Spectrum Analyzers (OSA) deployed in the optical nodes as monitoring devices acquiring the optical spectrum of outgoing links. Analyzing the optical spectrum of optical connections, specific soft-failures that affect the shape of the spectrum can be detected. A workflow consisting of machine learning algorithms, designed to be integrated in the aforementioned MDA architecture, will be studied to analyze the optical spectrum of a given optical connection acquired in a node and to determine whether a filter failure is affecting it, and in such case, what is the type of filter failure and its magnitude. Exhaustive results are presented allowing to evaluate the proposed method.
机译:由于光连接支持大量流量,因此故障检测在光网络中至关重要。此外,需要确定故障原因,以便可以从恢复路径的计算中排除故障资源。在软故障的情况下,它们的迅速检测,识别和定位可以在光连接中的过多错误转化为支持的服务的错误甚至中断之前就可以触发恢复。因此,在发生软故障的情况下,监视和数据分析(MDA)变得至关重要。在本文中,我们回顾了一种MDA体系结构,该体系结构显着减少了检测和识别时间,同时促进了故障定位。此外,我们依靠部署在光节点中的光谱分析仪(OSA)作为监视设备来获取输出链路的光谱。分析光连接的光谱,可以检测到影响光谱形状的特定软故障。将研究由旨在集成到上述MDA架构中的机器学习算法组成的工作流,以分析在节点中获取的给定光学连接的光谱,并确定过滤器故障是否对其产生影响,在这种情况下,什么是过滤器故障的类型及其严重程度。给出了详尽的结果,可以评估所提出的方法。

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