Publication | Open Access
Deep Neural Network-Based Digital Pre-Distortion for High Baudrate Optical Coherent Transmission
50
Citations
34
References
2021
Year
PhotonicsTransceiver ComponentsEngineeringOptical Transmission SystemOptical PropertiesOptical TransmissionNeural NetworkCoherent Optical CommunicationComputer EngineeringModulation CodingSignal ProcessingOptical Wireless CommunicationModulation TechniqueOptical CommunicationOptical NetworkingOptoelectronicsTransceiver ResponseOptical Amplifier
High-symbol-rate coherentoptical transceivers suffer more from the critical responses of transceiver components at high frequency, especially when applying a higher order modulation format. We recently proposed a neural network (NN)-based digital pre-distortion (DPD) technique trained to mitigate the transceiver response of a 128 GBaud optical coherent transmission system. In this paper, we further detail this work and assess the NN-based DPD by training it using either a direct learning architecture (DLA) or an indirect learning architecture (ILA), and compare performance against a Volterra series-based ILA DPD and a linear DPD. Furthermore, we deliberately increase the transmitter nonlinearity and compare the performance of the three DPDs schemes. The proposed NN-based DPD trained using DLA performs the best among the three contenders. In comparison to a linear DPD, it provides more than 1 dB signal-to-noise ratio (SNR) gains at the output of a conventional coherent receiver DSP for uniform 64-quadrature amplitude modulation (QAM) and PCS-256-QAM signals. Finally, the NN-based DPD enables achieving a record 1.61 Tb/s net rate transmission on a single channel after 80 km of standard single mode fiber (SSMF).
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