Optical Fiber Communication Systems Based on End-to-End Deep Learning

05/18/2020
by   Boris Karanov, et al.
0

We investigate end-to-end optimized optical transmission systems based on feedforward or bidirectional recurrent neural networks (BRNN) and deep learning. In particular, we report the first experimental demonstration of a BRNN auto-encoder, highlighting the performance improvement achieved with recurrent processing for communication over dispersive nonlinear channels.

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