A deep learning (DL) based digital backpropagation (DBP) method with a 1 dB SNR gain over a conventional 1 step per span DBP is demonstrated in a 32 GBd 16QAM transmission across 1200 km. The new DL-DPB is shown to require 6 times less computational power over the conventional DBP scheme. The achievement is possible due to a novel training method in which the DL-DBP is blind to timing error, state of polarization rotation, frequency offset and phase offset. An analysis of the underlying mechanism is given. The applied method first undoes the dispersion, compensates for nonlinear effects in a distributed fashion and reduces the out of band nonlinear modulation due to compensation of the nonlinearities by having a low pass characteristic. We ...
We propose an adaptive digital back-propagation method (A-DBP) to selfdetermine unknown fiber nonlin...
We propose a novel digital pre-distortion (DPD) based on neural networks for high-baudrate optical c...
We investigate the application of dynamic deep neural networks for nonlinear equalization in long ha...
A computationally efficient deep learning based digital backpropagation (DL-DBP) algorithm providing...
A method for reducing the training time of a deep learning based digital backpropagation (DL-DBP) is...
A new deep learning training method for digital back propagation (DBP) is introduced. It is invarian...
Nonlinearity compensation in fiber optical communication systems has been for a long time considered...
In this paper, we apply deep learning for communication over dispersive channels with power detectio...
In this paper, we apply deep learning for communication over dispersive channels with power detectio...
High-symbol-rate coherent optical transceivers suffer more from the critical responses of transceive...
Enhanced-SSFM digital backpropagation (DBP) is experimentally demonstrated and compared to conventio...
We investigate methods for experimental performance enhancement of auto-encoders based on a recurren...
A neural-network-based approach is presented to efficiently implement digital backpropagation (DBP)....
In this paper, we apply deep learning for communication over dispersive channels with power detectio...
We propose a low-complexity sub-banded DSP architecture for digital backpropagation where the walk-o...
We propose an adaptive digital back-propagation method (A-DBP) to selfdetermine unknown fiber nonlin...
We propose a novel digital pre-distortion (DPD) based on neural networks for high-baudrate optical c...
We investigate the application of dynamic deep neural networks for nonlinear equalization in long ha...
A computationally efficient deep learning based digital backpropagation (DL-DBP) algorithm providing...
A method for reducing the training time of a deep learning based digital backpropagation (DL-DBP) is...
A new deep learning training method for digital back propagation (DBP) is introduced. It is invarian...
Nonlinearity compensation in fiber optical communication systems has been for a long time considered...
In this paper, we apply deep learning for communication over dispersive channels with power detectio...
In this paper, we apply deep learning for communication over dispersive channels with power detectio...
High-symbol-rate coherent optical transceivers suffer more from the critical responses of transceive...
Enhanced-SSFM digital backpropagation (DBP) is experimentally demonstrated and compared to conventio...
We investigate methods for experimental performance enhancement of auto-encoders based on a recurren...
A neural-network-based approach is presented to efficiently implement digital backpropagation (DBP)....
In this paper, we apply deep learning for communication over dispersive channels with power detectio...
We propose a low-complexity sub-banded DSP architecture for digital backpropagation where the walk-o...
We propose an adaptive digital back-propagation method (A-DBP) to selfdetermine unknown fiber nonlin...
We propose a novel digital pre-distortion (DPD) based on neural networks for high-baudrate optical c...
We investigate the application of dynamic deep neural networks for nonlinear equalization in long ha...