IET Signal Processing (Jan 2024)

A DOA Estimation Method Based on an Improved Transformer Model for Uniform Linear Arrays with Low SNR

  • Wei Wang,
  • Lang Zhou,
  • Kun Ye,
  • Haixin Sun,
  • Shaohua Hong

DOI
https://doi.org/10.1049/2024/6666395
Journal volume & issue
Vol. 2024

Abstract

Read online

In this paper, the Star-Transformer model is improved to obtain more accurate direction of arrivals (DOA) estimation of underwater sonar uniform linear array (ULA) under low signal-to-noise ratio (SNR) conditions. The ideal real covariance matrix is divided into three channels: real part channel, imaginary part channel, and phase channel to obtain more input features. In training, the real covariance matrix is used under different SNRs. In testing, the covariance matrix of samples in the real environment is used as input. The on-grid form is used to estimate the DOA of multiple signal sources, which is modelled as a multilabel classification problem. The results show that the model can be effective and can still have a good DOA estimation performance under the conditions of trained and untrained SNRs, different snapshots, signal power mismatch, different separation angles, signal correlation, and so on. It shows that the model has excellent robustness.