We experimentally validate a real-time machine learning framework, capable of controlling the pump power values of Raman amplifiers to shape the signal power evolution in two-dimensions (2D): frequency and fiber distance. In our setup, power values of four first-order counter-propagating pumps are optimized to achieve the desired 2D power profile. The pump power optimization framework includes a convolutional neural network (CNN) followed by differential evolution (DE) technique, applied online to the amplifier setup to automatically achieve the target 2D power profiles. The results on achievable 2D profiles show that the framework is able to guarantee very low maximum absolute error (MAE) (<0.5 dB) between the obtained and the target 2D pr...
Optimized parameters of dual-pump fiber optic parametric amplifier (FOPA) to give optimized FOPA g...
Two artificial neural network (ANN) models are presented to predict power profiles over C+L–band in ...
In this work, we will give an overview of some of the most recent and successful applications of mac...
We present a machine learning (ML) framework for designing desired signal power profiles over the sp...
We propose a Convolutional Neural Network (CNN) to learn the mapping between the 2D power profiles, ...
Optical communication systems are always evolving to support the need for ever-increasing transmissi...
A machine learning framework predicting pump powers and noise figure profile for a target distribute...
A machine learning framework for Raman amplifier design is experimentally tested. Performance in ter...
It has been recently demonstrated that neural networks can learn the complex pump–signal relations i...
A wide range of highly-relevant problems in programmable and integrated photonics, optical amplifica...
Distributed Raman amplifier (DRA) has been widely studied in recent decades because of its low noise...
The paper presents recent advances in the design of controllable, highly accurate, and multi-band Ra...
One of the most promising solutions to overcome the capacity limit of current optical fiber links i...
A machine learning technique was recently proposed to optimize the gain of a multi-pump single-mode...
A multi-layer neural network is employed to learn the mapping between Raman gain profile and pump po...
Optimized parameters of dual-pump fiber optic parametric amplifier (FOPA) to give optimized FOPA g...
Two artificial neural network (ANN) models are presented to predict power profiles over C+L–band in ...
In this work, we will give an overview of some of the most recent and successful applications of mac...
We present a machine learning (ML) framework for designing desired signal power profiles over the sp...
We propose a Convolutional Neural Network (CNN) to learn the mapping between the 2D power profiles, ...
Optical communication systems are always evolving to support the need for ever-increasing transmissi...
A machine learning framework predicting pump powers and noise figure profile for a target distribute...
A machine learning framework for Raman amplifier design is experimentally tested. Performance in ter...
It has been recently demonstrated that neural networks can learn the complex pump–signal relations i...
A wide range of highly-relevant problems in programmable and integrated photonics, optical amplifica...
Distributed Raman amplifier (DRA) has been widely studied in recent decades because of its low noise...
The paper presents recent advances in the design of controllable, highly accurate, and multi-band Ra...
One of the most promising solutions to overcome the capacity limit of current optical fiber links i...
A machine learning technique was recently proposed to optimize the gain of a multi-pump single-mode...
A multi-layer neural network is employed to learn the mapping between Raman gain profile and pump po...
Optimized parameters of dual-pump fiber optic parametric amplifier (FOPA) to give optimized FOPA g...
Two artificial neural network (ANN) models are presented to predict power profiles over C+L–band in ...
In this work, we will give an overview of some of the most recent and successful applications of mac...