4.6 Article

Adaptive deep-learning equalizer based on constellation partitioning scheme with reduced computational complexity in UVLC system

Journal

OPTICS EXPRESS
Volume 29, Issue 14, Pages 21773-21782

Publisher

Optica Publishing Group
DOI: 10.1364/OE.432351

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Funding

  1. National Natural Science Foundation of China [61925104, 62031011]
  2. Shanghai Municipal Science and Technology Major Project [2021SHZDZX0103]

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This paper proposes an adaptive deep learning equalizer based on a complex-valued neural network and constellation partitioning scheme for 64 QAM-CAP modulated underwater VLC system. By adaptively partitioning received symbols in constellation and designing compact equalization networks, computational consumption is reduced.
Visible light communication (VLC) system has emerged as a promising solution for high-speed underwater data transmission. To tackle with the linear and nonlinear impairments, deep learning inspired equalization is introduced into VLC. Despite their success in accuracy, deep learning approaches often come with high computational budget. In this paper, we propose an adaptive deep-learning equalizer based on complex-valued neural network and constellation partitioning scheme for 64 QAM-CAP modulated underwater VLC (UVLC) system. Inspired by the fact that symbols modulated at different levels experience various extent of nonlinear distortion, we adaptively partition the received symbols in constellation and design compact equalization networks for specific regions to reduce computation consumption. Experiments demonstrate that the partitioned equalizer can achieve the bit error rate below the 7% hard-decision forward error correction (HD-FEC) limit of 3.8 x 10(-3) at 2.85 Gbps similar to the standard complex-valued network, yet with 56.1% total computational complexity reduction. This work paves the path for online data processing in high speed UVLC system. (C) 2021 Optical Society of America under the terms of the OSA Open Access Publishing Agreement

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