An Adaptive Beamforming Approach Applied to Planar Antenna Arrays Using Neural Networks

Abstract

Future wireless networks depend on the improvement of current smart antenna operations so that they maintain high accuracy levels at low response times. Utilizing machine learning techniques, it is possible to replace the currently used algorithms with a much faster yet reliable alternative. In this study, we focus on adaptive beamforming applied to a planar antenna array using the null steering beamforming algorithm (NSB). We test different types of deep neural networks (DNNs) as potential alternative beamformers, by comparing their accuracy to that of the NSB algorithm. The application concerns an 8×8 planar antenna array composed of isotropic elements. The DNNs tested here are the traditional feedforward neural networks and recurrent neural networks using either gated recurrent units or long short-term memory units. In addition, we investigate each DNN type to make sure we are utilizing the best version of each neural network architecture.

Authors

  • Ioannis Mallioras
  • Zaharias Zaharis
  • Pavlos Lazaridis
  • Vladimir Poulkov
  • Nikolaos Kantartzis
  • Traianos Yioultsis

Venue

2022 IEEE International Black Sea Conference on Communications and Networking, BlackSeaCom 2022

Links

https://ieeexplore.ieee.org/document/9858302/authors#authors

Categories

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