Blind Equalization Using a Variational Autoencoder With Second Order Volterra Channel Model

Søren Føns Nielsen, Darko Zibar, Mikkel N. Schmidt

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Abstract

Existing communication hardware is being exerted to its limits to accommodate for the ever increasing internet usage globally. This leads to non-linear distortion in the communication link that requires non-linear equalization techniques to operate the link at a reasonable bit error rate. This paper addresses the challenge of blind non-linear equalization using a variational autoencoder (VAE) with a second-order Volterra channel model. The VAE framework’s costfunction, the evidence lower bound (ELBO), is derived for real-valued constellations and can be evaluated analytically without resorting to sampling techniques. We demonstrate the effectiveness of our approach through simulations on a synthetic Wiener-Hammerstein channel and a simulated intensity modulated direct detection (IM/DD) optical link. The results show significant improvements in equalization performance, compared to a VAE with linear channel assumptions, highlighting the importance of appropriate channel modeling in unsupervised VAE equalizer frameworks.
Original languageEnglish
JournalIeee Transactions on Cognitive Communications and Networking
Number of pages10
ISSN2372-2045
DOIs
Publication statusAccepted/In press - 2025

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