We investigate the application of dynamic deep neural networks for nonlinear equalization in long haul transmission systems. Through extensive numerical analysis we identify their optimum dimensions and calculate their computational complexity as a function of system length. Performing comparison with traditional back-propagation based nonlinear compensation of 2 steps-per-span and 2 samples-per-symbol, we demonstrate equivalent mitigation performance at significantly lower computational cost
Nonlinear distortion has always been a challenge for optical communication due to the nonlinear tra...
In this work, we propose to use various artificial neural network (ANN) structures for modeling and ...
In this work, we address the question of the adaptability of artificial neural networks (NNs) used f...
We investigate the application of dynamic deep neural networks for nonlinear equalization in long ha...
In this paper we investigate the application of dynamic multi-leyer perceptron networks for long hau...
This paper introduces a novel methodology for developing low-complexity neural network (NN) based eq...
Practical implementation of digital signal processing for mitigation of transmission impairments in ...
This paper performs a detailed, multi-faceted analysis of key challenges and common design caveats r...
This paper performs a detailed, multi-faceted analysis of key challenges and common design caveats r...
Nonlinear distortion has always been a challenge for optical communication due to the nonlinear tra...
In this work, we propose to use various artificial neural network (ANN) structures for modeling and ...
In this work, we address the question of the adaptability of artificial neural networks (NNs) used f...
We investigate the application of dynamic deep neural networks for nonlinear equalization in long ha...
In this paper we investigate the application of dynamic multi-leyer perceptron networks for long hau...
This paper introduces a novel methodology for developing low-complexity neural network (NN) based eq...
Practical implementation of digital signal processing for mitigation of transmission impairments in ...
This paper performs a detailed, multi-faceted analysis of key challenges and common design caveats r...
This paper performs a detailed, multi-faceted analysis of key challenges and common design caveats r...
Nonlinear distortion has always been a challenge for optical communication due to the nonlinear tra...
In this work, we propose to use various artificial neural network (ANN) structures for modeling and ...
In this work, we address the question of the adaptability of artificial neural networks (NNs) used f...