论文标题
与深神经网络的联合PMD跟踪和非线性补偿
Joint PMD Tracking and Nonlinearity Compensation with Deep Neural Networks
论文作者
论文摘要
克服纤维非线性是限制光纤通信系统能力的核心挑战之一。基于机器学习的解决方案,例如学习的数字反向传播(LDBP)和最近提出的深卷积复发性神经网络(DCRNN),已证明对纤维非线性补偿(NLC)有效。在学习模型中纳入极化模式色散(PMD)的分布式补偿可以进一步提高其性能,但与此同时,它也将非线性和PMD的补偿融合在一起。因此,重要的是要考虑这种联合补偿计划的PMD时间变化。在本文中,我们研究了PMD漂移对DCRNN模型的影响,并通过PMD的分布补偿。我们提出了一种基于转移学习的选择性训练计划,以使学习的神经网络模型适应PMD的变化。我们证明,根据所提出的方法,仅对一小部分重量进行微调足以使模型适应PMD漂移。使用决策反馈进行在线学习,我们跟踪了由于极化状态(SOP)旋转时期旋转而导致的连续PMD漂移。我们表明,使用拟议方案从预先训练的基础模型中转移知识会大大减少不同PMD实现的重新训练工作。应用铰链模型进行SOP旋转,我们的仿真结果表明,学习模型在跟踪PMD时保持其性能提高。
Overcoming fiber nonlinearity is one of the core challenges limiting the capacity of optical fiber communication systems. Machine learning based solutions such as learned digital backpropagation (LDBP) and the recently proposed deep convolutional recurrent neural network (DCRNN) have been shown to be effective for fiber nonlinearity compensation (NLC). Incorporating distributed compensation of polarization mode dispersion (PMD) within the learned models can improve their performance even further but at the same time, it also couples the compensation of nonlinearity and PMD. Consequently, it is important to consider the time variation of PMD for such a joint compensation scheme. In this paper, we investigate the impact of PMD drift on the DCRNN model with distributed compensation of PMD. We propose a transfer learning based selective training scheme to adapt the learned neural network model to changes in PMD. We demonstrate that fine-tuning only a small subset of weights as per the proposed method is sufficient for adapting the model to PMD drift. Using decision directed feedback for online learning, we track continuous PMD drift resulting from a time-varying rotation of the state of polarization (SOP). We show that transferring knowledge from a pre-trained base model using the proposed scheme significantly reduces the re-training efforts for different PMD realizations. Applying the hinge model for SOP rotation, our simulation results show that the learned models maintain their performance gains while tracking the PMD.