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End-to-End Deep Learning of Long-Haul Coherent Optical Fiber Communications via Regular Perturbation Model

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 نشر من قبل Vahid Aref
 تاريخ النشر 2021
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We present a novel end-to-end autoencoder-based learning for coherent optical communications using a parallelizable perturbative channel model. We jointly optimized constellation shaping and nonlinear pre-emphasis achieving mutual information gain of 0.18 bits/sym./pol. simulating 64 GBd dual-polarization single-channel transmission over 30x80 km G.652 SMF link with EDFAs.



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