Journal article
Computational complexity comparison of feedforward/radial basis function/recurrent neural network-based equalizer for a 50-Gb/s PAM4 direct-detection optical link
Z Xu, C Sun, T Ji, JH Manton, W Shieh
Optics Express | Optical Society of America (OSA) | Published : 2019
DOI: 10.1364/OE.27.036953
Open access
Abstract
The computational complexity and system bit-error-rate (BER) performance of four types of neural-network-based nonlinear equalizers are analyzed for a 50-Gb/s pulse amplitude modulation (PAM)-4 direct-detection (DD) optical link. The four types are feedforward neural networks (F-NN), radial basis function neural networks (RBF-NN), auto-regressive recurrent neural networks (AR-RNN) and layer-recurrent neural networks (L-RNN). Numerical results show that, for a fixed BER threshold, the AR-RNN-based equalizers have the lowest computational complexity. Amongst all the nonlinear NN-based equalizers with the same number of inputs and hidden neurons, F-NN-based equalizers have the lowest computatio..
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Awarded by Australian Research Council
Funding Acknowledgements
Australian Research Council (DP150101864, DP190103724)