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Real-Time FPGA Demonstrator of ANN-Based Equalization for Optical Communications

Published 23 Feb 2024 in eess.SP and cs.LG | (2402.15288v1)

Abstract: In this work, we present a high-throughput field programmable gate array (FPGA) demonstrator of an artificial neural network (ANN)-based equalizer. The equalization is performed and illustrated in real-time for a 30 GBd, two-level pulse amplitude modulation (PAM2) optical communication system.

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References (7)
  1. F. N. Khan et al., “An optical communication’s perspective on machine learning and its applications,” J. Lightw. Technol., vol. 37, no. 2, pp. 493–516, 2019.
  2. P. J. Freire et al., “Towards FPGA implementation of neural network-based nonlinearity mitigation equalizers in coherent optical transmission systems,” in Proc. ECOC, 2022.
  3. N. Kaneda et al., “Fixed-point analysis and FPGA implementation of deep neural network based equalizers for high-speed PON,” J. Lightw. Technol., vol. 40, no. 7, pp. 1972–1980, 2022.
  4. J. Ney et al., “From algorithm to implementation: Enabling high-throughput CNN-based equalization on FPGA for optical communications,” in Proc. Internat. Conf. on Embedded Comp. Syst.: Architect., Model. and Simul. (SAMOS XXIII), 2023.
  5. P. Matalla et al., “Hardware comparison of feed-forward clock recovery algorithms for optical communications,” in Proc. OFC, 2021.
  6. J. Ney et al., “Unsupervised ANN-based equalizer and its trainable FPGA implementation,” in Proc. EuCNC, 2023.
  7. V. Lauinger et al., “Fully-blind neural network based equalization for severe nonlinear distortions in 112 gbit/s passive optical networks,” arXiv Prepint, 2024. [Online]. Available: https://arxiv.org/abs/2401.09579

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