Learning-Based MIMO Channel Estimation under Spectrum Efficient Pilot Allocation and Feedback
Wireless links using massive MIMO transceivers are vital for next generation wireless communications networks networks. Precoding in Massive MIMO transmission requires accurate downlink channel state information (CSI). Many recent works have effectively applied deep learning (DL) to jointly train UE...
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Zusammenfassung: | Wireless links using massive MIMO transceivers are vital for next generation
wireless communications networks networks. Precoding in Massive MIMO
transmission requires accurate downlink channel state information (CSI). Many
recent works have effectively applied deep learning (DL) to jointly train
UE-side compression networks for delay domain CSI and a BS-side decoding
scheme. Vitally, these works assume that the full delay domain CSI is available
at the UE, but in reality, the UE must estimate the delay domain based on a
limited number of frequency domain pilots. In this work, we propose a linear
pilot-to-delay (P2D) estimator that transforms sparse frequency pilots to the
truncated delay CSI. We show that the P2D estimator is accurate under frequency
downsampling, and we demonstrate that the P2D estimate can be effectively
utilized with existing autoencoder-based CSI estimation networks. In addition
to accounting for pilot-based estimates of downlink CSI, we apply unrolled
optimization networks to emulate iterative solutions to compressed sensing
(CS), and we demonstrate better estimation performance than prior
autoencoder-based DL networks. Finally, we investigate the efficacy of
trainable CS networks for in a differential encoding network for time-varying
CSI estimation, and we propose a new network, MarkovNet-ISTA-ENet, comprised of
both a CS network for initial CSI estimation and multiple autoencoders to
estimate the error terms. We demonstrate that this heterogeneous network has
better asymptotic performance than networks comprised of only one type of
network. |
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DOI: | 10.48550/arxiv.2201.05225 |