We address the problem of tensor decomposition in application to direction-of-arrival (DOA) estimation for transmit beamspace (TB) multiple-input multiple-output (MIMO) radar. A general 4-order tensor model that enables computationally efficient DOA estimation is designed. Whereas other tensor decomposition-based methods treat all factor matrices as arbitrary, the essence of the proposed DOA estimation method is to fully exploit the Vandermonde structure of the factor matrices to take advantage of the shift-invariance between and within different subarrays. Specifically, the received signal of TB MIMO radar is expressed as a 4-order tensor. Depending on the target Doppler shifts, the constructed tensor is reshaped into two distinct 3-order tensors. A computationally efficient tensor decomposition method is proposed to decompose the Vandermonde factor matrices. The generators of the Vandermonde factor matrices are computed to estimate the phase rotations between subarrays, which can be utilized as a look-up table for finding target DOA. It is further shown that our proposed method can be used in a more general scenario where the subarray structures can be arbitrary but identical. The proposed DOA estimation method requires no prior information about the tensor rank and is guaranteed to achieve precise decomposition result. Simulation results illustrate the performance improvement of the proposed DOA estimation method as compared to conventional DOA estimation techniques for TB MIMO Radar.
翻译:我们解决了在对传送光空多投多输出(MIMO)雷达的传送方向(DAA)估计应用中电离分解的问题。设计了一个通用四级高压模型,使DOA能够进行计算效率高的估算。其他以温度分解法为基础的方法将所有要素矩阵视为任意的,而拟议的DOA估算方法的本质是充分利用因素矩阵的Vandermonde结构,利用不同亚体之间和不同亚体内部的变换。具体地说,收到的TBMIMIM雷达信号以4级高压信号表示。根据目标多普勒转换情况,将构建的高压调整成两个不同的3级高压模型。提出了一种以计算效率高压分解法将Vandermonde要素矩阵分解解解。Vandermonde系数矩阵的生成器,用来估计亚体次组之间的周期轮值。可以利用TBMIMIM雷达的信号作为查找目标的图表。进一步表明,根据目标多普勒尔的变技术,所建的变的推算法将调整成两种不同的DOOA 。拟议的方法可以保证采用一种常规结构。