Journal Article10.1109/taes.2023.3312359
Coarray Tensor-Based Angle Estimation for Bistatic MIMO Radar With a Dilated Moving Receive Array
Shuai Luo,Yuexian Wang,Jianying Li,Chintha Tellambura,Joel J. P. C. Rodrigues +4 more
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TL;DR: Coarray tensor-based angle estimation for bistatic MIMO radar with a dilated moving receive array significantly increases the DOFs and improves the angle estimation performance.
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Abstract: Utilizing sparse arrays is a very effective and commonly used method to enhance the degrees of freedom (DOFs) of multiple-input multiple-output (MIMO) radar. Unfortunately, as research on sparse arrays has matured, it has become difficult to greatly improve the DOFs by relying on array structure design only. Moreover, the existing angle estimation methods for sparse MIMO radar would process data under a matrix-based framework rather than the entire coarray tensor, thus suffering some loss in angle estimation performance. In this article, we extend the DOFs of MIMO radar by exploiting sparse array motion and propose an angle estimation method exploiting coarray tensor. First, we not only use sparse arrays at the transmitter and receiver parts of MIMO radar but also dilate the interelement spacing of the receive array on a moving platform. We set the transmitted signal as periodic, and further expand the DOFs and virtual aperture of MIMO radar by using the aperture synthesis technique introduced by array motion. Second, we build a self-correlation tensor model and reshape it to produce an optimal tensor with the highest DOFs that can be obtained under the uniqueness condition of parallel factor decomposition. Third, we theoretically analyze the achievable DOFs of the proposed method and show that the maximum number of detectable targets of bistatic MIMO radar can be increased to about three times. Simulation results verify the correctness of the theoretical analysis and demonstrate the superior estimation performance of our proposed method.
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Citations
Near-Field Target Localization for EMVS-MIMO Radar With Arbitrary Configuration
Hua Chen,Jiaxiong Fang,Weilong Wang,Wei Liu,Ye Tian,Qing Wang,Gang Wang +6 more
TL;DR: A 3-D near-field source localization method is introduced for bistatic MIMO radar with arbitrary electromagnetic vector sensors, utilizing tensor decomposition and rotation invariance to estimate target parameters with low computational complexity and no peak search.
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References
MIMO Radar with Colocated Antennas
Jian Li,Petre Stoica +1 more
TL;DR: It is shown that the waveform diversity offered by such a MIMO radar system enables significant superiority over its phased-array counterpart, including much improved parameter identifiability, direct applicability of adaptive techniques for parameter estimation, as well as superior flexibility of transmit beampattern designs.
2.5K
Nested Arrays: A Novel Approach to Array Processing With Enhanced Degrees of Freedom
Piya Pal,P.P. Vaidyanathan +1 more
TL;DR: A new array geometry, which is capable of significantly increasing the degrees of freedom of linear arrays, is proposed and a novel spatial smoothing based approach to DOA estimation is also proposed, which does not require the inherent assumptions of the traditional techniques based on fourth-order cumulants or quasi stationary signals.
Three-way arrays: rank and uniqueness of trilinear decompositions, with application to arithmetic complexity and statistics
TL;DR: In this paper, the authors define rank (X) as the minimum number of triads whose sum is X, and dim1(X) to be the dimensionality of the space of matrices generated by the 1-slabs of X.
1.8K
Spatial Diversity in Radars—Models and Detection Performance
E. Fishler,Alexander M. Haimovich,Rick S. Blum,Leonard J. Cimini,Dmitry Chizhik,Reinaldo A. Valenzuela +5 more
TL;DR: The optimal detector in the Neyman–Pearson sense is developed and analyzed for the statistical MIMO radar and it is shown that the optimal detector consists of noncoherent processing of the receiver sensors' outputs and that for cases of practical interest, detection performance is superior to that obtained through coherent processing.
1.6K
Joint Range and Angle Estimation Using MIMO Radar With Frequency Diverse Array
TL;DR: An unambiguous approach for joint range and angle estimation is devised for multiple-input multiple-output (MIMO) radar with frequency diverse array (FDA), which is capable of employing a small frequency increment across the array elements.
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