We implement a new variant of the end-to-end learning approach for the performance improvement of an optical coherent-detection communication system. The proposed solution enables learning the joint probabilistic and geometric shaping of symbol sequences by using auxiliary channel model based on the perturbation theory and the refined symbol probabilities training procedure. Due to its structure, the auxiliary channel model based on the first order perturbation theory expansions allows us performing an efficient parallelizable model application, while, simultaneously, producing a remarkably accurate channel approximation. The learnt multi-symbol joint probabilistic and geometric shaping demonstrates a considerable bit-wise mutual informatio...
We compare performance of several machine learning methods, including support vector machine, k-near...
Fiber nonlinearities from Kerr effect are considered as major constraints for enhancing the transmis...
End-to-end learning has become a popular method to optimize a constellation shape of a communication...
We implement a new variant of the end-to-end learning approach for the performance improvement of an...
Fiber-optic auto-encoders are demonstrated on an intensity modulation/direct detection testbed, outp...
In the current development of coherent optical communication systems, nonlinear noise is considered ...
In this article, we experimentally demonstrate the combined benefit of artificial neural network-bas...
The maximum information rate of a communication channel, often referred to as the Shannon capacity, ...
Fiber-optic auto-encoders are demonstrated on an intensity modulation/direct detection testbed, outp...
We propose a perturbation-based receiver-side machine-learning equalizer for inter- and intra-channe...
The future demand for digital information will exceed the capabilities of current optical communicat...
The performance of different probabilistic amplitude shaping (PAS)techniques in the nonlinear regime...
Vendor interoperability is one of the desired future characteristics of optical networks. This means...
We compare performance of several machine learning methods, including support vector machine, k-near...
Fiber nonlinearities from Kerr effect are considered as major constraints for enhancing the transmis...
End-to-end learning has become a popular method to optimize a constellation shape of a communication...
We implement a new variant of the end-to-end learning approach for the performance improvement of an...
Fiber-optic auto-encoders are demonstrated on an intensity modulation/direct detection testbed, outp...
In the current development of coherent optical communication systems, nonlinear noise is considered ...
In this article, we experimentally demonstrate the combined benefit of artificial neural network-bas...
The maximum information rate of a communication channel, often referred to as the Shannon capacity, ...
Fiber-optic auto-encoders are demonstrated on an intensity modulation/direct detection testbed, outp...
We propose a perturbation-based receiver-side machine-learning equalizer for inter- and intra-channe...
The future demand for digital information will exceed the capabilities of current optical communicat...
The performance of different probabilistic amplitude shaping (PAS)techniques in the nonlinear regime...
Vendor interoperability is one of the desired future characteristics of optical networks. This means...
We compare performance of several machine learning methods, including support vector machine, k-near...
Fiber nonlinearities from Kerr effect are considered as major constraints for enhancing the transmis...
End-to-end learning has become a popular method to optimize a constellation shape of a communication...