论文标题

深入学习的自动编码器,用于连贯和非线性光学通信

Deep-learning Autoencoder for Coherent and Nonlinear Optical Communication

论文作者

Uhlemann, Tim, Cammerer, Sebastian, Span, Alexander, Dörner, Sebastian, Brink, Stephan ten

论文摘要

由于最近对无线域中通信的端到端培训的成功促进,我们努力将端到端学习的想法从无线案例(即线性)转化为相干的光纤链接(即非线性)。乍一看,这听起来像是一个直接的扩展,但事实证明,就理论和实际实施而言,存在几个陷阱。本文分析了自动编码器的潜力和在Kerr-Noninearity和色散影响下的光纤的局限性。由于没有确切的容量极限,因此,没有可用的分析完美系统解决方案,我们为自动编码器的学习的解释性设定了巨大的价值。因此,我们将其架构设计为尽可能接近经典通信系统的结构,知道这可能会限制其自由度,从而限制其性能。然而,与常规参考系统相比,我们能够在光谱效率方面获得意外的高增益。

Motivated by the recent success of end-to-end training of communications in the wireless domain, we strive to adapt the end-to-end-learning idea from the wireless case (i.e., linear) to coherent optical fiber links (i.e., nonlinear). Although, at first glance, it sounds like a straightforward extension, it turns out that several pitfalls exist - in terms of theory but also in terms of practical implementation. This paper analyzes the potential of an autoencoder and limitations for the optical fiber under the influence of Kerr-nonlinearity and chromatic dispersion. As there is no exact capacity limit known and, hence, no analytical perfect system solution available, we set great value to the interpretability on the learnings of the autoencoder. Therefore, we design its architecture to be as close as possible to the structure of a classic communication system, knowing that this may limit its degree of freedom and, thus, its performance. Nevertheless, we were able to achieve an unexpected high gain in terms of spectral efficiency compared to a conventional reference system.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源