Sensors (Apr 2020)

A Novel Machine Learning Aided Antenna Selection Scheme for MIMO Internet of Things

  • Wannian An,
  • Peichang Zhang,
  • Jiajun Xu,
  • Huancong Luo,
  • Lei Huang,
  • Shida Zhong

DOI
https://doi.org/10.3390/s20082250
Journal volume & issue
Vol. 20, no. 8
p. 2250

Abstract

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In this article, we propose a multi-label convolution neural network (MLCNN)-aided transmit antenna selection (AS) scheme for end-to-end multiple-input multiple-output (MIMO) Internet of Things (IoT) communication systems in correlated channel conditions. In contrast to the conventional single-label multi-class classification ML schemes, we opt for using the concept of multi-label in the proposed MLCNN-aided transmit AS MIMO IoT system, which may greatly reduce the length of training labels in the case of multi-antenna selection. Additionally, applying multi-label concept may significantly improve the prediction accuracy of the trained MLCNN model under correlated large-scale MIMO channel conditions with less training data. The corresponding simulation results verified that the proposed MLCNN-aided AS scheme may be capable of achieving near-optimal capacity performance in real time, and the performance is relatively insensitive to the effects of imperfect CSI.

Keywords