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Rectangular array of electromagnetic vector sensors: tensor modelling/decomposition and DOA-polarisation estimation

机译:电磁矢量传感器的矩形阵列:张量建模/分解和DOA极化估计

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摘要

In this study, the authors propose a fast quadrilinear decomposition algorithm for estimation of the directions-of-arrival and polarisations of the incident sources via a uniform rectangular array of electromagnetic vector sensors (EMVSs). Conventional quadrilinear alternating least squares (QALS), involves computationally intensive Khatri-Rao products in each iteration, to update the parameter matrices (factors). Moreover, QALS is more likely to fall in a local minimum and tends to take more steps before an acceptable solution, which further slows down the convergence and often mis-converges, thereby yielding meaningless results. To preserve the quadrilinearity, they arrange the measurements as a four-dimensional (4D) data (fourth-order tensor), from which a third-order sub-tensor (3D slice) can be obtained by fixing one index along any dimension. These slices are used to create new cost functions that are alternately minimised while updating the factors until convergence. They show that the rows of parameter matrices form the diagonal elements of a tensor, which capture the internal quadrilinearity of data and significantly reduce the cost function in few iterations only. Simulation results verify that the authors' algorithm holds faster convergence, does not mis-converge, provides parameter estimation accuracy similarly to the QALS and superior of the Estimation of Signal Parameters via Rotational Invariance Technique and propagator method.
机译:在这项研究中,作者提出了一种快速的四线性分解算法,用于通过电磁矢量传感器(EMVS)的均匀矩形阵列估算入射源的到达方向和极化。常规的四线性交替最小二乘(QALS)在每次迭代中涉及计算密集的Khatri-Rao乘积,以更新参数矩阵(因子)。而且,QALS更有可能降到局部最小值,并且倾向于在可接受的解决方案之前采取更多的步骤,这进一步减慢了收敛速度,并且经常会出现失收敛,从而产生毫无意义的结果。为了保持四线性,他们将测量结果排列为四维(4D)数据(四阶张量),通过沿任意维度固定一个索引可以从中获得三阶次张量(3D切片)。这些分片用于创建新的成本函数,这些函数在更新因子直至收敛之前会交替最小化。他们表明,参数矩阵的行形成张量的对角元素,它们捕获了数据的内部四线性,并且仅在几次迭代中就显着降低了成本函数。仿真结果验证了该算法的收敛速度较快,不会发生误收敛,提供了与QALS相似的参数估计精度,并且通过旋转不变技术和传播子方法在信号参数估计方面具有优越性。

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