Electronics and Electrical Engineering and Control

Sparse Bayesian learning method for eliminating dictionary mismatch in clutter space-time spectrum estimation

  • ZHANG Tao ,
  • ZHONG Lunlong ,
  • LAI Ran ,
  • GUO Juncheng
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  • Tianjin Key Laboratory for Advanced Signal Processing, Civil Aviation University of China, Tianjin 300300, China

Received date: 2020-08-03

  Revised date: 2020-09-29

  Online published: 2020-11-13

Supported by

National Natural Science Foundation of China (U1733116); Fundamental Research Foundation for Central Universities-CAUC (3122019048); Young Scholar Foundation of Civil Aviation University of China

Abstract

Space-Time Adaptive Processing (STAP) via clutter spectrum sparse recovery can reduce the requirement for clutter sample size, and suppress the clutter of airborne radar effectively using limited training samples. The space-time plane is discretized into some grid points, and the space-time steering vector dictionary with discretized grid points is designed. However, the clutter ridge is not located exactly on the pre-discretized grid points in presence of dictionary mismatch. The dictionary mismatch effect degrades significantly the performance of STAP via sparse recovery. In this paper, a sparse Bayesian learning method for eliminating dictionary mismatch in clutter spectrum estimation is proposed. A dynamic dictionary is established by two-dimensional Taylor's series, and the dictionary mismatch biases are considered as parameters to be estimated by the sparse Bayesian learning method. The space-time steering dictionary is compensated by the estimated mismatch biases. The clutter-plus-noise covariance matrix is reconstructed with the compensated dictionary, and then the clutter space-time spectrum is calculated finally. Numerical results show that the proposed method can obtain better accuracy in clutter spectrum sparse recovery, and provide better performance of clutter suppression in comparison with the STAP using the sparse Bayesian learning method with the pre-discretized dictionary.

Cite this article

ZHANG Tao , ZHONG Lunlong , LAI Ran , GUO Juncheng . Sparse Bayesian learning method for eliminating dictionary mismatch in clutter space-time spectrum estimation[J]. ACTA AERONAUTICAET ASTRONAUTICA SINICA, 2021 , 42(6) : 324592 -324592 . DOI: 10.7527/S1000-6893.2020.24592

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