Abstract

Channel estimation is a challenging task in a millimeter-wave (mm Wave) massive multiple-input multiple-output (MIMO) system. The existing deep learning scheme, which learns the mapping from the input to the target channel, has great difficulty in estimating the exact channel state information (CSI). In this paper, we consider the quantized received measurements as a low-resolution image, and we adopt the deep learning-based image super-resolution technique to reconstruct the mm Wave channel. Specifically, we exploit a state-of-the-art channel estimation framework based on residual learning and multi-path feature fusion (RL-MFF-Net). Firstly, residual learning makes the channel estimator focus on learning high-frequency residual information between the quantized received measurements and the mm Wave channel, while abundant low-frequency information is bypassed through skip connections. Moreover, to address the estimator’s gradient dispersion problem, a dense connection is added to the residual blocks to ensure the maximum information flow between the layers. Furthermore, the underlying mm Wave channel local features extracted from different residual blocks are preserved by multi-path feature fusion. The simulation results demonstrate that the proposed scheme outperforms traditional methods as well as existing deep learning methods, especially in the low signal-to-noise-ration (SNR) region.

Highlights

  • We focus on the channel estimation approaches for a millimeter Wave (mm Wave) massive multipleinput multiple-output (MIMO) system

  • The number of pilots is set to s = 8

  • To determine the best estimator structure for mm Wave massive MIMO system channel estimation, we investigate the impact of hyper parameters on estimator performance

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. The millimeter Wave (mm Wave) has become one of the research hotspots for its rich bandwidth resources and anti-interference ability in future mobile communication systems [1]. Aiming at solving the problem of path loss in mm Wave, the combination of massive MIMO and mm Wave is used to eliminate the loss by using the high beam fugacity gain provided by large antenna arrays [2]. It is difficult to obtain accurate channel state information (CSI) especially in the low SNR region because there is a lot of fading in mm Wave massive MIMO communication systems. We focus on the channel estimation approaches for a mm Wave massive MIMO system

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