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Improving QoT Estimation Accuracy with DGE Monitoring using Machine Learning

机译:使用机器学习通过DGE监视提高QoT估计精度

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In optical transport networks, Dynamic Gain Equalizers (DGE) are typically used at each link. A DGE selectively attenuates the channels to compensate the cumulative Erbium Doped Fiber Amplifier (EDFA) gain ripple effect on the multi-span link, resulting in almost flat output power at the end of the link. We leverage monitored per link DGE attenuation profiles and coherent receivers Signal to Noise Ratio (SNR) information, and propose a machine learning (ML) based scheme to estimate the EDFA gain ripple penalties for new connections. Using that in realistic simulation scenarios we observed a design margin reduction from ~1dB to ~0.3dBs.
机译:在光传输网络中,通常在每个链路上使用动态增益均衡器(DGE)。 DGE有选择地衰减通道,以补偿多跨链路上累积的掺Do光纤放大器(EDFA)增益纹波效应,从而在链路末端产生几乎平坦的输出功率。我们利用受监控的每条链路DGE衰减曲线和相干接收机的信噪比(SNR)信息,并提出一种基于机器学习(ML)的方案来估算新连接的EDFA增益纹波损失。在现实的模拟场景中使用该方法,我们观察到设计余量从〜1dB降低至〜0.3dBs。

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