Back to Search Start Over

Reducing Training Time of Deep Learning Based Digital Backpropagation by Stacking

Authors :
Bertold Ian Bitachon
Marco Eppenberger
Benedikt Baeuerle
Juerg Leuthold
Source :
IEEE Photonics Technology Letters, 34 (7)
Publication Year :
2022
Publisher :
Institute of Electrical and Electronics Engineers (IEEE), 2022.

Abstract

A method for reducing the training time of a deep learning based digital backpropagation (DL-DBP) is presented. The method is based on dividing a link into smaller sections. A smaller section is then compensated by the DL-DBP algorithm and the same trained model is then reapplied to the subsequent sections. We show in a 32 GBd 16QAM 2400 km 5-channel wavelength division multiplexing transmission link experiment that the proposed stacked DL-DBPs provides a 0.41 dB gain with respect to linear compensation scheme. This needs to be compared with a 0.56 dB gain achieved by a non-stacked DL-DBPs compensated scheme for the price of a 203% increase in total training time. Furthermore, it is shown that by only training the last section of the stacked DL-DBP, one can increase the compensation performance to 0.48 dB.<br />IEEE Photonics Technology Letters, 34 (7)<br />ISSN:1041-1135<br />ISSN:1941-0174

Details

ISSN :
19410174 and 10411135
Volume :
34
Database :
OpenAIRE
Journal :
IEEE Photonics Technology Letters
Accession number :
edsair.doi.dedup.....103b66123878d2dbb41f42e4f6b575e3