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Autoencoder Learning of Nonlinear Constellation Shape for Fiber-Wireless Convergence System

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Abstract

We propose and experimentally demonstrate a novel nonlinear constellation shape auto optimization method with a complex-valued 2D-ANN equalizer. Up to 70% lower BER compared with the conventional format is achieved at 50 Gbps in fiber-MMW system.

© 2023 The Author(s)

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