Domain Adaptation: the Key Enabler of Neural Network Equalizers in Coherent Optical Systems
Pedro J. Freire
B. Spinnler
Daniel Abode
Jaroslaw E. Prilepsky
Abdallah A. i. Ali
N. Costa
W. Schairer
A. Napoli
A. Ellis
S. Turitsyn

Abstract
We introduce the domain adaptation and randomization approach for calibrating neural network-based equalizers for real transmissions, using synthetic data. The approach renders up to 99\% training process reduction, which we demonstrate in three experimental setups.
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