Harnessing machine learning for fiber-induced nonlinearity mitigation in long-haul coherent optical OFDM

Coherent optical orthogonal frequency division multiplexing (CO-OFDM) has attracted a lot of interest in optical fiber communications due to its simplified digital signal processing (DSP) units, high spectral-efficiency, flexibility, and tolerance to linear impairments. However, CO-OFDM’s high peak-...

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Veröffentlicht in:Future internet 2019-01, Vol.11 (1), p.2
Hauptverfasser: Giacoumidis, Elias, Lin, Yi, Wei, Jinlong, Aldaya, Ivan, Tsokanos, Athanasios, Barry, Liam
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Sprache:eng
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Zusammenfassung:Coherent optical orthogonal frequency division multiplexing (CO-OFDM) has attracted a lot of interest in optical fiber communications due to its simplified digital signal processing (DSP) units, high spectral-efficiency, flexibility, and tolerance to linear impairments. However, CO-OFDM’s high peak-to-average power ratio imposes high vulnerability to fiber-induced non-linearities. DSP-based machine learning has been considered as a promising approach for fiber non-linearity compensation without sacrificing computational complexity. In this paper, we review the existing machine learning approaches for CO-OFDM in a common framework and review the progress in this area with a focus on practical aspects and comparison with benchmark DSP solutions.
ISSN:1999-5903
1999-5903
DOI:10.3390/fi11010002