Title :
Optical Performance Monitoring Using Artificial Neural Networks Trained With Eye-Diagram Parameters
Author :
Jargon, Jeffrey A. ; Wu, Xiaoxia ; Willner, Alan E.
Author_Institution :
Nat. Inst. of Stand. & Technol., Boulder, CO
Abstract :
We developed artificial neural network models to simultaneously identify three separate impairments that can degrade optical channels, namely optical signal-to-noise ratio, chromatic dispersion, and polarization-mode dispersion. The neural networks were trained with parameters derived from eye diagrams to create models that can predict levels of concurrent impairments. This method provides a means of monitoring optical performance with diagnostic capabilities.
Keywords :
monitoring; neural nets; optical fibre dispersion; optical fibre networks; optical fibre polarisation; telecommunication computing; telecommunication network management; artificial neural networks; chromatic dispersion; eye-diagram parameters; optical channel degradation; optical performance monitoring; optical signal-to-noise ratio; polarization-mode dispersion; Artificial neural network (ANN); chromatic dispersion (CD); eye diagram; optical performance monitoring (OPM); optical signal-to-noise ratio (OSNR); polarization-mode dispersion (PMD);
Journal_Title :
Photonics Technology Letters, IEEE
DOI :
10.1109/LPT.2008.2008447