English

Model-Driven Beamforming Neural Networks

Information Theory 2020-03-18 v1 Machine Learning Signal Processing math.IT

Abstract

Beamforming is evidently a core technology in recent generations of mobile communication networks. Nevertheless, an iterative process is typically required to optimize the parameters, making it ill-placed for real-time implementation due to high complexity and computational delay. Heuristic solutions such as zero-forcing (ZF) are simpler but at the expense of performance loss. Alternatively, deep learning (DL) is well understood to be a generalizing technique that can deliver promising results for a wide range of applications at much lower complexity if it is sufficiently trained. As a consequence, DL may present itself as an attractive solution to beamforming. To exploit DL, this article introduces general data- and model-driven beamforming neural networks (BNNs), presents various possible learning strategies, and also discusses complexity reduction for the DL-based BNNs. We also offer enhancement methods such as training-set augmentation and transfer learning in order to improve the generality of BNNs, accompanied by computer simulation results and testbed results showing the performance of such BNN solutions.

Keywords

Cite

@article{arxiv.2001.05277,
  title  = {Model-Driven Beamforming Neural Networks},
  author = {Wenchao Xia and Gan Zheng and Kai-Kit Wong and Hongbo Zhu},
  journal= {arXiv preprint arXiv:2001.05277},
  year   = {2020}
}
R2 v1 2026-06-23T13:11:52.064Z