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Deep-neural-network-based wavelength selection and switching in ROADM systems

机译:ROADM系统中基于深度神经网络的波长选择和切换

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摘要

Recent advances in software and hardware greatly improve the multi-layer control and management of reconfigurable optical add-drop multiplexer (ROADM) systems facilitating wavelength switching. However, ensuring stable performance and reliable quality of transmission (QoT) remain difficult problems for dynamic operation. Optical power dynamics that arise from a variety of physical effects in the amplifiers and transmission fiber complicate the control and performance predictions in these systems.We present a deep-neural-network-based machine learning method to predict the power dynamics of a 90-channel ROADM system from data collection and training. We further show that the trained deep neural network can recommend wavelength assignments for wavelength switching with minimal power excursions.
机译:软件和硬件的最新进展极大地改善了可重构光分插复用器(ROADM)系统的多层控制和管理,从而促进了波长切换。但是,确保稳定的性能和可靠的传输质量(QoT)仍然是动态运行的难题。由放大器和传输光纤中的各种物理效应引起的光功率动态使这些系统的控制和性能预测变得复杂。我们提出了一种基于深度神经网络的机器学习方法来预测90通道的功率动态ROADM系统来自数据收集和培训。我们进一步表明,训练有素的深度神经网络可以以最小的功率偏移为波长切换推荐波长分配。

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