4.5 Article

Unsupervised Learning for Neural Network-Based Blind Equalization

Journal

IEEE PHOTONICS TECHNOLOGY LETTERS
Volume 32, Issue 10, Pages 569-572

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LPT.2020.2985307

Keywords

Training; Artificial neural networks; Equalizers; Unsupervised learning; Supervised learning; Mathematical model; Training data; Intensity modulation and direct detection (IMDD); equalization; neural network (NN); unsupervised learning

Funding

  1. National Key Research and Development Program of China [2018YFB1800904]

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For the first time, an unsupervised learning training method was proposed for neural network (NN)-based blind equalization in intensity modulation and direct detection (IMDD) system. The whole scheme can directly train an NN-based equalizer with only the received signal rather than original symbols as reference. Besides, the unsupervised learning can also help a well-trained NN to keep its performance in face of varying system status, such as wavelength shift and bias fluctuation, in practical applications. We evaluate the performance of the proposed scheme in a 50 Gb/s IMDD system. The experimental results confirm that the proposed unsupervised learning can train fully-connected NN-based equalizer as well as convolutional neural network (CNN)-based equalizer to reach the same performance as the one trained by supervised learning. Besides, in face of signals with different bias current of the directly-modulated laser (DML), the unsupervised learning method can train the NN to keep the best performance. It can be proved that the scheme can help maintain the performance of NN-based equalizer against the continuous system parameter variations.

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