论文标题
通过机器学习重新审视有效的多步非线性补偿:实验演示
Revisiting Efficient Multi-Step Nonlinearity Compensation with Machine Learning: An Experimental Demonstration
论文作者
论文摘要
光纤通信系统中有效的非线性补偿是超出“能力紧缩”的关键因素。反向传播(LDBP)方法,其中分裂方法中的线性步骤被重新解释为一般线性函数,类似于深度神经网络中的重量矩阵。我们的结果表明,通过使用非常短但经过优化的有限型响应过滤器,本文概述了最近提出的LDBP的概述,我们可以通过非常优化的,有限的Impulse响应过滤器来获得比标准DBP更好的表现。
Efficient nonlinearity compensation in fiber-optic communication systems is considered a key element to go beyond the "capacity crunch''. One guiding principle for previous work on the design of practical nonlinearity compensation schemes is that fewer steps lead to better systems. In this paper, we challenge this assumption and show how to carefully design multi-step approaches that provide better performance--complexity trade-offs than their few-step counterparts. We consider the recently proposed learned digital backpropagation (LDBP) approach, where the linear steps in the split-step method are re-interpreted as general linear functions, similar to the weight matrices in a deep neural network. Our main contribution lies in an experimental demonstration of this approach for a 25 Gbaud single-channel optical transmission system. It is shown how LDBP can be integrated into a coherent receiver DSP chain and successfully trained in the presence of various hardware impairments. Our results show that LDBP with limited complexity can achieve better performance than standard DBP by using very short, but jointly optimized, finite-impulse response filters in each step. This paper also provides an overview of recently proposed extensions of LDBP and we comment on potentially interesting avenues for future work.