Variational Inference Aided Estimation of Time Varying Channels
Benedikt Böck (Technische Universität München); Michael Baur (Technische Universität München); Valentina Rizzello (Technische Universität München); Wolfgang Utschick (Technische Universität München)
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One way to improve the estimation of time varying channels is
to incorporate knowledge of previous observations. In this context,
Dynamical VAEs (DVAEs) build a promising deep learning
(DL) framework which is well suited to learn the distribution of
time series data. We introduce a new DVAE architecture, called
k-MemoryMarkovVAE (k-MMVAE), whose sparsity can be controlled
by an additional memory parameter. Following the approach
in [1] we derive a k-MMVAE aided channel estimator which takes
temporal correlations of successive observations into account. The
results are evaluated on simulated channels by QuaDRiGa and show
that the k-MMVAE aided channel estimator clearly outperforms
other machine learning (ML) aided estimators which are either
memoryless or naively extended to time varying channels without
major adaptions.