4.7 Article

56 GBaud PAM-4 100 Km Transmission System With Photonic Processing Schemes

Journal

JOURNAL OF LIGHTWAVE TECHNOLOGY
Volume 40, Issue 1, Pages 55-62

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JLT.2021.3117921

Keywords

Photonics; Reservoirs; Nonlinear optics; Optical modulation; Optical distortion; Optical noise; Optical feedback; Reservoir computing; extreme learning machine; optical communications; fiber transmission; data recovery

Funding

  1. MINECO (Spain) [TEC2016-80063-C3]
  2. Spanish State Research Agency, through the Severo Ochoa, and Maria de Maeztu Program for Centers and Units of Excellence in RD [MDM-2017-0711]
  3. European Union's Horizon 2020 Research and Innovation Programme under the Marie-Sklodowska Curie Grant [860360]
  4. MICINN, AEI, FEDER
  5. University of the Balearic Islands through a predoctoral fellowship [MDM-2017-0711-18-2]
  6. Conselleria d'Innovacio, Recerca i Turisme del Govern de les Illes Balears
  7. European Social Fund

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Analog photonic computing has been proposed and tested as an alternative approach for data recovery in fiber transmission systems. This study demonstrates the effectiveness of internal fading memory in photonic reservoir computing, highlighting its dependence on signal properties. It also compares data recovery performances between reservoir computing and extreme learning machine fiber-based configurations, showing equivalent results and the advantage of simplified system and increased computation speed with the latter method.
Analog photonic computing has been proposed and tested in recent years as an alternative approach for data recovery in fiber transmission systems. Photonic reservoir computing, performing nonlinear transformations of the transmitted signals and exhibiting internal fading memory, has been found advantageous for this kind of processing. In this work, we show that the effectiveness of the internal fading memory depends significantly on the properties of the signal to be processed. Specifically, we demonstrate two experimental photonic post-processing schemes for a 56 GBaud PAM-4 experimental transmission system, with 100 km uncompensated standard single-mode fiber and direct detection. We show that, for transmission systems with significant chromatic dispersion, the contribution of a photonic reservoir's fading memory to the computational performance is limited. In a comparison between the data recovery performances between a reservoir computing and an extreme learning machine fiber-based configuration, we find that both offer equivalent data recovery. The extreme learning machine approach eliminates the necessity of external recurrent connectivity, which simplifies the system and increases the computation speed. Above 31 dB OSNR, the photonics-based equalization exhibits a lower BER than the respective offline DSP-based KK receiver.

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