4 research outputs found
Blind Equalization and Channel Estimation in Coherent Optical Communications Using Variational Autoencoders
We investigate the potential of adaptive blind equalizers based on
variational inference for carrier recovery in optical communications. These
equalizers are based on a low-complexity approximation of maximum likelihood
channel estimation. We generalize the concept of variational autoencoder (VAE)
equalizers to higher order modulation formats encompassing probabilistic
constellation shaping (PCS), ubiquitous in optical communications, oversampling
at the receiver, and dual-polarization transmission. Besides black-box
equalizers based on convolutional neural networks, we propose a model-based
equalizer based on a linear butterfly filter and train the filter coefficients
using the variational inference paradigm. As a byproduct, the VAE also provides
a reliable channel estimation. We analyze the VAE in terms of performance and
flexibility over a classical additive white Gaussian noise (AWGN) channel with
inter-symbol interference (ISI) and over a dispersive linear optical
dual-polarization channel. We show that it can extend the application range of
blind adaptive equalizers by outperforming the state-of-the-art
constant-modulus algorithm (CMA) for PCS for both fixed but also time-varying
channels. The evaluation is accompanied with a hyperparameter analysis.Comment: Published (Open Access) in IEEE Journal on Selected Areas in
Communications, Sep 202
Unsupervised ANN-Based Equalizer and Its Trainable FPGA Implementation
In recent years, communication engineers put strong emphasis on artificial
neural network (ANN)-based algorithms with the aim of increasing the
flexibility and autonomy of the system and its components. In this context,
unsupervised training is of special interest as it enables adaptation without
the overhead of transmitting pilot symbols. In this work, we present a novel
ANN-based, unsupervised equalizer and its trainable field programmable gate
array (FPGA) implementation. We demonstrate that our custom loss function
allows the ANN to adapt for varying channel conditions, approaching the
performance of a supervised baseline. Furthermore, as a first step towards a
practical communication system, we design an efficient FPGA implementation of
our proposed algorithm, which achieves a throughput in the order of Gbit/s,
outperforming a high-performance GPU by a large margin.Comment: accepted for publication at Joint European Conference on Networks and
Communications & 6G Summit (EuCNC/6G Summit), Gothenburg, Sweden, 6 - 9 June
202
Fully-blind Neural Network Based Equalization for Severe Nonlinear Distortions in 112 Gbit/s Passive Optical Networks
We demonstrate and evaluate a fully-blind digital signal processing (DSP)
chain for 100G passive optical networks (PONs), and analyze different equalizer
topologies based on neural networks with low hardware complexity.Comment: Accepted and to be presented at the Optical Fiber Communication
Conference (OFC) 202
Real-Time FPGA Demonstrator of ANN-Based Equalization for Optical Communications
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.Comment: Accepted and to be presented as demonstrator at the IEEE
International Conference on Machine Learning for Communication and Networking
(ICMLCN) 202