IEEE Access (Jan 2022)

Deep Learning-Based Hybrid Analog-Digital Signal Processing in mmWave Massive-MIMO Systems

  • Alireza Morsali,
  • Afshin Haghighat,
  • Benoit Champagne

DOI
https://doi.org/10.1109/ACCESS.2022.3188644
Journal volume & issue
Vol. 10
pp. 72348 – 72362

Abstract

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Hybrid analog-digital signal processing (HSP) is an enabling technology to harvest the potential of millimeter-wave (mmWave) massive-MIMO communications. In this paper, we present a general deep learning (DL) framework for efficient design and implementation of HSP-based massive-MIMO systems. Exploiting the fact that any complex matrix can be written as a scaled sum of two matrices with unit-modulus entries, a novel analog deep neural network (ADNN) structure is first developed which can be implemented with common radio frequency (RF) components. This structure is then embedded into an extended hybrid analog-digital deep neural network (HDNN) architecture which facilitates the implementation of mmWave massive-MIMO systems while improving their performance. In particular, the proposed HDNN architecture enables HSP-based massive-MIMO transceivers to approximate any desired transmitter and receiver mapping with arbitrary precision. To demonstrate the capabilities of the proposed DL framework, we present a new HDNN-based beamformer design that can achieve the same performance as fully-digital beamforming, with reduced number of RF chains. Finally, simulation results are presented confirming the advantages of the proposed HDNN design over existing hybrid beamforming schemes.

Keywords