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Intra-Channel Nonlinearity Mitigation in Optical Fiber Transmission Systems Using Perturbation-Based Neural Network

Jiazheng Ding, Tiegen Liu, Tongyang Xu, Wenxiu Hu, Sergei Popov, Mark S. Leeson, Jian Zhao, Tianhua Xu

2022Journal of Lightwave Technology50 citationsDOI

Abstract

In this work, a perturbation-based neural network (P-NN) scheme with an embedded bidirectional long short-term memory (biLSTM) layer is investigated to compensate for the Kerr fiber nonlinearity in optical fiber communication systems. Numerical simulations have been carried out in a 32-Gbaud dual-polarization 16-ary quadrature amplitude modulation (DP-16QAM) transmission system. It is shown that this P-NN equalizer can achieve signal-to-noise ratio improvements of ∼1.37 dB and ∼0.80 dB, compared to the use of a linear equalizer and a single step per span (StPS) digital back propagation (DBP) scheme, respectively. The P-NN equalizer requires lower computational complexity and can effectively compensate for intra-channel nonlinearity. Meanwhile, the performance of P-NN is more robust to the distortion caused by equalization enhanced phase noise (EEPN). Furthermore, it is also found that there exists a tradeoff between the choice of modulation format and the nonlinear equalization schemes for a given transmission distance.

Topics & Concepts

Quadrature amplitude modulationNonlinear distortionArtificial neural networkElectronic engineeringNonlinear systemEqualization (audio)Computer scienceOpticsChannel (broadcasting)TelecommunicationsBandwidth (computing)PhysicsBit error rateEngineeringAmplifierQuantum mechanicsMachine learningOptical Network TechnologiesAdvanced Photonic Communication SystemsAdvanced Fiber Laser Technologies