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A Novel ULA-Difference-Coarray-Based DOA Estimation Method for General Coherent Signals

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  • Zhang Chen
  • Hao Wu
  • Yongxiang Liu

Abstract

In this article, a difference-coarray-based direction of arrival (DOA) method is introduced, which utilizes the uniform linear array (ULA) in a novel fashion to address the problem of DOA estimation for coherent signals. Inspired by the coarray-based estimators employed in cases of sparse arrays, we convert the sample covariance matrix of the observed signals into the difference coarray domain and process the signals using a spatial smoothing technique. The proposed method exhibits good accuracy and robustness in both the uncorrelated and coherent cases. Numerical simulations verify that the ULA difference coarray- (UDC-) based method can achieve good DOA estimation accuracy even when the SNR is very low. In addition, the UDC-based method is insensitive to the number of snapshots. Under extremely challenging conditions, the proposed UDC-ES-DOA method is preferred because of its outstanding robustness, while the UDC-MUSIC method is suitable for most moderate cases of lower complexity. Due to its demonstrated advantages, the proposed method is a promising and competitive solution for practical DOA estimation, especially for low-SNR or snapshot-limited applications.

Suggested Citation

  • Zhang Chen & Hao Wu & Yongxiang Liu, 2020. "A Novel ULA-Difference-Coarray-Based DOA Estimation Method for General Coherent Signals," Mathematical Problems in Engineering, Hindawi, vol. 2020, pages 1-13, November.
  • Handle: RePEc:hin:jnlmpe:1548016
    DOI: 10.1155/2020/1548016
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