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Advanced Formulation of QoT-Estimation for Un-established Lightpaths Using Cross-train Machine Learning Methods

机译:使用交叉训练机器学习方法对未建立的光路进行QoT估计的高级公式

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Planning tools with excellent accuracy along with precise and advance estimation of the quality of transmission (QoT) of lightpaths (LPs) have techno-economic importance for a network operator. The QoT metric of LPs is defined by the generalized signal-to-noise ratio (GSNR) which includes the effect of both amplified spontaneous emission (ASE) noise and non-linear interference (NLI) accumulation. Typically, a considerable number of analytical models are available for the estimation of QoT but all of them require the exact description of system parameters. Thus, the analytical models are impractical in case of un-used network scenarios. In this study, we exploit an alternative approach based on three machine learning (ML) techniques for QoT estimation (QoT-E). The proposed ML based techniques are cross-trained on the characteristic features extracted from the telemetry data of the already in-service network. This new approach provides a reliable QoT-E and consequently assists the network operator in network planning and also enables the reliable low-margin LP deployment.
机译:具有出色准确性的规划工具以及对光路(LP)传输质量(QoT)的精确和预先估计对于网络运营商来说具有技术经济意义。 LP的QoT度量由广义信噪比(GSNR)定义,广义信噪比包括放大的自发发射(ASE)噪声和非线性干扰(NLI)累积的影响。通常,大量分析模型可用于估算QoT,但所有分析模型都需要系统参数的准确描述。因此,在未使用网络情况下,分析模型是不切实际的。在这项研究中,我们利用基于三种机器学习(ML)技术的QoT估计(QoT-E)的替代方法。在从已经投入使用的网络的遥测数据中提取的特征特征上,对所提出的基于ML的技术进行了交叉训练。这种新方法提供了可靠的QoT-E,因此可以帮助网络运营商进行网络规划,还可以实现可靠的低利润LP部署。

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