Unsupervised Support Vector Machines for Nonlinear Blind Equalization in CO-OFDM
A novel blind nonlinear equalization (BNLE) technique based on the iterative re-weighted least square is experimentally demonstrated for single- and multi-channel coherent optical orthogonal frequency-division multiplexing. The adopted BNLE combines, for the first time, a support vector machine-learning cost function with the classical Sato or Godard error functions and maximum likelihood recursive least-squares. At optimum launched optical power, BNLE reduces the fiber nonlinearity penalty by ~1 (16-QAM single-channel at 2000 km) and ~1.7 dB (QPSK multi-channel at 3200 km) compared to a Volterra-based NLE. The proposed BNLE is more effective for multi-channel configuration: 1) it outperforms the “gold-standard” digital-back propagation and 2) for a high number of subcarriers the performance is better due to its capability of tackling inter-subcarrier four-wave mixing.
Item Type | Article |
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Additional information | This document is the Accepted Manuscript of the following article: E. Giacoumidis, et al, 'Unsupervised Support Vector Machines for Nonlinear Blind Equalization in CO-OFDM', Vol. 30 (12): 1091-1094, June 2018. Under embargo until 4 May 2020. The final, published version is available online at doi: https://doi.org/10.1109/LPT.2018.2832617 © 2018 IEEE |
Keywords | optical ofdm, fiber nonlinearity compensation, machine learning, optical fiber communication, electronic, optical and magnetic materials, atomic and molecular physics, and optics, electrical and electronic engineering |
Date Deposited | 15 May 2025 13:49 |
Last Modified | 31 May 2025 00:16 |
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description - BlindNLE_PTL_2018_002_.docx
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subject - Submitted Version