The deployment of artificial neural networks-based optical channel equalizers on edge-computing devices is critically important for the next generation of optical communication systems. However, this is still a highly challenging problem, mainly due to the computational complexity of the artificial neural networks (NNs) required for the efficient equalization of nonlinear optical channels with large dispersion-induced memory. To implement the NN-based optical channel equalizer in hardware, a substantial complexity reduction is needed, while we have to keep an acceptable performance level of the simplified NN model. In this work, we address the complexity reduction problem by applying pruning and quantization techniques to an NN-based optica...
We present the results of the comparative performance-versus-complexity analysis for the several typ...
Nonlinear distortion has always been a challenge for optical communication due to the nonlinear tra...
The computational complexity and system bit-error-rate (BER) performance of four types of neural-net...
The deployment of artificial neural networks-based optical channel equalizers on edge-computing devi...
This paper introduces a novel methodology for developing low-complexity neural network (NN) based eq...
This paper performs a detailed, multi-faceted analysis of key challenges and common design caveats r...
In this work, we demonstrate the offline FPGA realization of both recurrent and feedforward neural n...
This paper performs a detailed, multi-faceted analysis of key challenges and common design caveats r...
In this work, we demonstrate the offline FPGA realization of both recurrent and feedforward neural n...
We present the results of the comparative performance-versus-complexity analysis for the several typ...
Nonlinear distortion has always been a challenge for optical communication due to the nonlinear tra...
The computational complexity and system bit-error-rate (BER) performance of four types of neural-net...
The deployment of artificial neural networks-based optical channel equalizers on edge-computing devi...
This paper introduces a novel methodology for developing low-complexity neural network (NN) based eq...
This paper performs a detailed, multi-faceted analysis of key challenges and common design caveats r...
In this work, we demonstrate the offline FPGA realization of both recurrent and feedforward neural n...
This paper performs a detailed, multi-faceted analysis of key challenges and common design caveats r...
In this work, we demonstrate the offline FPGA realization of both recurrent and feedforward neural n...
We present the results of the comparative performance-versus-complexity analysis for the several typ...
Nonlinear distortion has always been a challenge for optical communication due to the nonlinear tra...
The computational complexity and system bit-error-rate (BER) performance of four types of neural-net...