Remote Sensing (Dec 2023)

ADMM-Net for Beamforming Based on Linear Rectification with the Atomic Norm Minimization

  • Zhenghui Gong,
  • Xinyu Zhang,
  • Mingjian Ren,
  • Xiaolong Su,
  • Zhen Liu

DOI
https://doi.org/10.3390/rs16010096
Journal volume & issue
Vol. 16, no. 1
p. 96

Abstract

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Target misalignment can cause beam pointing deviations and degradation of sidelobe performance. In order to eliminate the effect of target misalignment, we formulate the jamming sub-space recovery problem as a linearly modified atomic norm-based optimization. Then, we develop a deep-unfolding network based on the alternating direction method of multipliers (ADMM), which effectively improves the applicability and efficiency of the algorithm. By using the back-propagation process of deep-unfolding networks, the proposed method could optimize the hyper-parameters in the original atomic norm. This feature enables the adaptive beamformer to adjust its weight according to the observed data. Specifically, the proposed method could determine the optimal hyper-parameters under different interference noise matrix conditions. Simulation results demonstrate that the proposed network could reduce computational cost and achieve near-optimal performance with low complexity.

Keywords