论文标题

基于模型的机器学习,用于联合数字反向传播和PMD补偿

Model-Based Machine Learning for Joint Digital Backpropagation and PMD Compensation

论文作者

Bütler, Rick M., Häger, Christian, Pfister, Henry D., Liga, Gabriele, Alvarado, Alex

论文摘要

在本文中,我们通过参数化Manakov-PMD方程的拆分步骤傅立叶方法来提出一种基于模型的机器学习方法。最终的方法通过最近提出的学识渊博的数字反向传播(LDBP)和分布式偏振模式分散(PMD)结合了对硬件友好的时间域非线性缓解。我们将结果方法称为LDBP-PMD。我们在多个PMD实现上训练LDBP-PMD,并表明在平均428个训练迭代后,它在其峰值DB性能的1%以内收敛,从而产生了无PMD无PMD的峰值信噪比仅0.30 dB。与实用系统中最新的PMD补偿算法类似,我们的方法不假定沿着链接的特定PMD实现的了解,也不了解有关累积PMD的任何知识。与先前在分布式PMD补偿方面的工作相比,这是一个显着的改进,在这种情况下,通常假定有关累积PMD的知识。我们还根据性能,复杂性和收敛行为比较不同的参数化选择。最后,我们证明,在沿光纤的PMD实现突然改变后,可以成功地重新训练。

In this paper, we propose a model-based machine-learning approach for dual-polarization systems by parameterizing the split-step Fourier method for the Manakov-PMD equation. The resulting method combines hardware-friendly time-domain nonlinearity mitigation via the recently proposed learned digital backpropagation (LDBP) with distributed compensation of polarization-mode dispersion (PMD). We refer to the resulting approach as LDBP-PMD. We train LDBP-PMD on multiple PMD realizations and show that it converges within 1% of its peak dB performance after 428 training iterations on average, yielding a peak effective signal-to-noise ratio of only 0.30 dB below the PMD-free case. Similar to state-of-the-art lumped PMD compensation algorithms in practical systems, our approach does not assume any knowledge about the particular PMD realization along the link, nor any knowledge about the total accumulated PMD. This is a significant improvement compared to prior work on distributed PMD compensation, where knowledge about the accumulated PMD is typically assumed. We also compare different parameterization choices in terms of performance, complexity, and convergence behavior. Lastly, we demonstrate that the learned models can be successfully retrained after an abrupt change of the PMD realization along the fiber.

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