Deep Learning of Geometric Constellation Shaping including Fiber Nonlinearities

05/10/2018
by   Rasmus T. Jones, et al.
0

A new geometric shaping method is proposed, leveraging unsupervised machine learning to optimize the constellation design. The learned constellation mitigates nonlinear effects with gains up to 0.13 bit/4D when trained with a simplified fiber channel model.

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