4.5 Article

Combatting nonlinear phase noise in coherent optical systems with an optimized decision processor based on machine learning

Journal

OPTICS COMMUNICATIONS
Volume 369, Issue -, Pages 199-208

Publisher

ELSEVIER
DOI: 10.1016/j.optcom.2016.02.029

Keywords

Digital signal processing; Machine learning; Fiber nonlinearity; Coherent detection

Categories

Funding

  1. NSFC [61372119]
  2. Doctoral Scientific Fund Project of the Ministry of Education of China [20120005110010]
  3. BUPT Excellent Ph.D. Students Foundation [CX2015306]

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An effective machine learning algorithm, the support vector machine (SVM), is presented in the context of a coherent optical transmission system. As a classifier, the SVM can create nonlinear decision boundaries to mitigate the distortions caused by nonlinear phase noise (NLPN). Without any prior information or heuristic assumptions, the SVM can learn and capture the link properties from only a few training data. Compared with the maximum likelihood estimation (MLE) algorithm, a lower bit-error rate (BER) is achieved by the SVM for a given launch power; moreover, the launch power dynamic range (LPDR) is increased by 3.3 dBm for 8 phase-shift keying (8 PSK), 1.2 dBm for QPSK, and 0.3 dBm for BPSK. The maximum transmission distance corresponding to a BER of 1 x 10(-3) is increased by 480 km for the case of 8 PSK. The larger launch power range and longer transmission distance improve the tolerance to amplitude and phase noise, which demonstrates the feasibility of the SVM in digital signal processing for M-PSK formats. Meanwhile, in order to apply the SVM method to 16 quadratic amplitude modulation (16 QAM) detection, we propose a parameter optimization scheme. By utilizing a cross-validation and grid-search techniques, the optimal parameters of SVM can be selected, thus leading to the LPDR improvement by 2.8 dBm. Additionally, we demonstrate that the SVM is also effective in combating the laser phase noise combined with the inphase and quadrature (I/Q) modulator imperfections, but the improvement is insignificant for the linear noise and separate l/Q imbalance. The computational complexity of SVM is also discussed. The relatively low complexity makes it possible for SVM to implement the real-time processing. (C) 2016 Elsevier B.V. All rights reserved.

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