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Experimental Demonstration of a Machine Learning-Based in-band OSNR Estimator from Optical Spectra

机译:基于光谱的基于机器学习的带内OSNR估计器的实验演示

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摘要

Channel spectral monitors are becoming a cost effective solution to improve the management, resiliency and efficiency of next generation optical transport networks. We experimentally demonstrate a technique based on machine learning (ML) for the in-band estimation of amplified spontaneous emission (ASE) noise and filter 3-dB bandwidth, using optical spectra acquired after the reconfigurable optical add/drop multiplexers (ROADMs) filters. We assess the performance of the proposed method, considering laser drift and filters bandwidth tightening scenarios, showing quite good estimation accuracy under such conditions.
机译:信道频谱监视器正在成为一种具有成本效益的解决方案,以改善下一代光传输网络的管理,弹性和效率。我们实验证明了基于机器学习(ML)的技术,该技术使用可重配置光学分插复用器(ROADM)滤波器后获得的光谱,对带内自发发射(ASE)噪声和滤波器3 dB带宽进行带内估计。考虑到激光漂移和滤波器带宽紧缩的情况,我们评估了该方法的性能,在这种情况下显示出相当不错的估计精度。

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