基于规则通知神经网络的高度roadm光网络多故障定位

IF 17.2
Ruikun Wang;Qiaolun Zhang;Jiawei Zhang;Zhiqun Gu;Memedhe Ibrahimi;Hao Yu;Bojun Zhang;Francesco Musumeci;Yuefeng Ji;Massimo Tornatore
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引用次数: 0

摘要

为了适应日益增长的流量,网络运营商正在积极部署高度可重构的光路复用器(roadm),以构建大容量光网络。高度基于ROADM的光网络在ROADM节点之间有多条平行光纤,要求采用具有大量节点间/节点内组件的ROADM节点。然而,在高度ROADM网络中,大量的节点间/节点内光组件增加了同时发生多个故障的可能性,并且需要新的方法来精确定位多个故障组件。据我们所知,这是第一个研究基于roadm的高度光网络的多故障定位问题的研究。为了解决这个问题,我们首先提供了影响节点间/节点内组件的故障的描述,并且我们考虑了不同部署的光功率监视器(opm)来获取信息(即光功率),用于自动多故障定位。然后,作为我们的主要贡献,我们提出了一种基于规则通知神经网络(RINN)的多故障定位新方法,该方法结合了基于规则的推理和人工神经网络(ANN)的优点。通过大量的模拟和实验演示,我们表明,与基线算法相比,我们提出的RINN算法可以实现高达20%的定位精度提高,平均推理时间仅为4.14 ms左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Failure Localization in High-Degree ROADM-Based Optical Networks Using Rules-Informed Neural Networks
To accommodate ever-growing traffic, network operators are actively deploying high-degree reconfigurable optical add/drop multiplexers (ROADMs) to build large-capacity optical networks. High-degree ROADM-based optical networks have multiple parallel fibers between ROADM nodes, requiring the adoption of ROADM nodes with a large number of inter-/intra-node components. However, this large number of inter-/intra-node optical components in high-degree ROADM networks increases the likelihood of multiple failures simultaneously, and calls for novel methods for accurate localization of multiple failed components. To the best of our knowledge, this is the first study investigating the problem of multi-failure localization for high-degree ROADM-based optical networks. To solve this problem, we first provide a description of the failures affecting both inter-/intra-node components, and we consider different deployments of optical power monitors (OPMs) to obtain information (i.e., optical power) to be used for automated multi-failure localization. Then, as our main and original contribution, we propose a novel method based on a rules-informed neural network (RINN) for multi-failure localization, which incorporates the benefits of both rules-based reasoning and artificial neural networks (ANN). Through extensive simulations and experimental demonstrations, we show that our proposed RINN algorithm can achieve up to around 20% higher localization accuracy compared to baseline algorithms, incurring only around 4.14 ms of average inference time.
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