4.7 Article

Target Parameter Estimation Algorithm Based on Real-Valued HOSVD for Bistatic FDA-MIMO Radar

期刊

REMOTE SENSING
卷 15, 期 5, 页码 -

出版社

MDPI
DOI: 10.3390/rs15051192

关键词

bistatic FDA-MIMO radar; unitary transformation technique; HOSVD; DOA-DOD-range estimation

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For bistatic FDA-MIMO radar, a real-valued parameter estimation algorithm based on high-order singular value decomposition is proposed to tackle target parameter estimation. The algorithm utilizes subarray division, forward-backward averaging, and unitary transformation techniques to decouple direction of departure (DOD) and range information. The algorithm also reduces the dimension of spatial spectrum and eliminates phase ambiguity by using the frequency increment between subarrays.
Since there is a frequency offset between each adjacent antenna of FDA radar, there exists angle-range two-dimensional dependence in the transmitter. For bistatic FDA-multiple input multiple output (MIMO) radar, range-direction of departure (DOD)-direction of arrival (DOA) information is coupled in transmitting the steering vector. How to decouple the three information has become the focus of research. Aiming at the issue of target parameter estimation of bistatic FDA-MIMO radar, a real-valued parameter estimation algorithm based on high-order-singular value decomposition (HOSVD) is developed. Firstly, for decoupling DOD and range in transmitter, it is necessary to divide the transmitter into subarrays. Then, the forward-backward averaging and unitary transformation techniques are utilized to convert complex-valued data into real-valued data. The signal subspace is obtained by HOSVD, and the two-dimensional spatial spectral function is constructed. Secondly, the dimension of spatial spectrum is reduced by the Lagrange algorithm, so that it is only related to DOA, and the DOA estimation is obtained. Then the frequency increment between subarrays is used to decouple the DOD and range information, and eliminate the phase ambiguity at the same time. Finally, the DOD and range estimation automatically matched with DOA estimation are obtained. The proposed algorithm uses the multidimensional structure of high-dimensional data to promote performance. Meanwhile, the proposed real-valued tensor-based method can effectively cut down the computing time. Simulation results verify the high efficiency of the developed method.

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