A machine learning technique was recently proposed to optimize the gain of a multi-pump single-mode Raman amplifier, using neural networks to approximate the function that maps a given gain profile to the corresponding set of pump powers and wavelengths by training them on synthetic datasets of Raman gains. This method was then extended to FMFs, showing good results in terms of gain flatness and mode-dependent gain, but limited to the C band only. In this paper, we show that the design choice of the dataset generation phase can impact the quality of the neural network predictions, and propose different techniques to improve their accuracy. We present improved results on both flat and tilted gain profiles on the entire C+L band using a fewmode fiber supporting the LP01 and LP11 mode groups and using 8 Raman pumps.
C+L Band Gain Design in Few-mode Fibers Using Raman Amplification and Machine Learning
Marcon, Gianluca;Galtarossa, Andrea;Palmieri, Luca;Santagiustina, Marco
2020
Abstract
A machine learning technique was recently proposed to optimize the gain of a multi-pump single-mode Raman amplifier, using neural networks to approximate the function that maps a given gain profile to the corresponding set of pump powers and wavelengths by training them on synthetic datasets of Raman gains. This method was then extended to FMFs, showing good results in terms of gain flatness and mode-dependent gain, but limited to the C band only. In this paper, we show that the design choice of the dataset generation phase can impact the quality of the neural network predictions, and propose different techniques to improve their accuracy. We present improved results on both flat and tilted gain profiles on the entire C+L band using a fewmode fiber supporting the LP01 and LP11 mode groups and using 8 Raman pumps.File | Dimensione | Formato | |
---|---|---|---|
icop2020.pdf
Accesso riservato
Tipologia:
Published (publisher's version)
Licenza:
Accesso privato - non pubblico
Dimensione
331.01 kB
Formato
Adobe PDF
|
331.01 kB | Adobe PDF | Visualizza/Apri Richiedi una copia |
Pubblicazioni consigliate
I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.