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Machine learning models for estimating quality of transmission in DWDM networks

机译:机器学习模型,用于估计DWDM网络中的传输质量

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It is estimated that 5G and the Internet of Things (IoT) will impact traffic, both in volume and dynamicity, at unprecedented rates. Thus, to cost-efficiently accommodate these challenging requirements, optical networks must become more responsive to changes impacting the traffic and network state as well as operate more closely to optimality. In this context, knowledge-defined networking (KDN) promises to play a paramount role in improving network flexibility and automation. KDN is a solution that introduces reasoning processes and machine learning techniques into the control plane of the network, enabling it to operate autonomously and faster. One of the key aspects in this environment is the accurate validation of lightpaths. Accurate lightpath validation demands running computationally intensive performance models, which can be time-consuming and impact time-critical applications (e.g., optical channel restoration). This work evaluates the effectiveness of various machine learning models when used to predict the quality of transmission (QoT) of an unestablished lightpath, speeding up the process of lightpath provisioning. Three network scenarios to efficiently generate the knowledge database used to train the models are proposed as well as an overview of the mostused machine learning models. The considered models are: K-nearest neighbors, logistic regression, support vector machines, and artificial neural networks. Results showthat, in general, allmachine learningmodels are able to correctly predict the QoTofmore than 90% of the lightpaths. However, the artificial neural networks (ANN) model is the model presenting better generalization, being able to correctly predict the QoT of almost 99.9% of the lightpaths. Moreover, ANN is able to estimate the residual margin of a lightpath with an average error of only 0.4 dB.
机译:据估计,5G和物联网(IoT)将以前所未有的速度影响流量的数量和动态。因此,为了经济有效地适应这些具有挑战性的要求,光网络必须变得对响应影响流量和网络状态的变化更加敏感,并且必须更紧密地运行于最佳状态。在这种情况下,知识定义网络(KDN)有望在提高网络灵活性和自动化方面发挥至关重要的作用。 KDN是一种将推理过程和机器学习技术引入网络控制平面的解决方案,使其能够自主且快速地运行。这种环境中的关键方面之一是光路的准确验证。准确的光路验证要求运行计算量大的性能模型,这可能是耗时的并且会影响时间紧迫的应用程序(例如,光通道恢复)。当用于预测未建立的光路的传输质量(QoT)时,这项工作评估了各种机器学习模型的有效性,从而加快了光路供应的过程。提出了三种网络方案以有效地生成用于训练模型的知识数据库,以及最常用的机器学习模型的概述。考虑的模型是:K最近邻,逻辑回归,支持向量机和人工神经网络。结果表明,一般而言,所有机器学习模型都能够正确预测超过90%的光路的QoT。但是,人工神经网络(ANN)模型具有更好的泛化能力,能够正确预测近99.9%的光路的QoT。而且,ANN能够以平均误差仅为0.4 dB的方式估计光路的剩余余量。

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