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Experimental Evaluation of Computational Complexity for Different Neural Network Equalizers in Optical Communications

17 September 2021
Pedro J. Freire
Yevhenii Osadchuk
A. Napoli
B. Spinnler
W. Schairer
N. Costa
Jaroslaw E. Prilepsky
S. Turitsyn
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Abstract

Addressing the neural network-based optical channel equalizers, we quantify the trade-off between their performance and complexity by carrying out the comparative analysis of several neural network architectures, presenting the results for TWC and SSMF set-ups.

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