Calibration of Distributed MIMO Radar Systems

Christine Bryant;Lee Patton;Brian Rigling;Braham Himed
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Abstract

When using a distributed multiple-input multiple-output (MIMO) radar system, one must account for nonideal and unknown effects due to the electronics, cables, antennas, and so on. This article addresses the problem of estimating the MIMO system transfer function coefficients of a linear time-invariant (LTI) MIMO system. The system is considered to be uncalibrated in that its MIMO transfer function, receiver noise powers, and noise spatial correlations are unknown. The problem of estimating the MIMO system transfer function coefficients is shown to be nontrivial due to its inherent Kronecker structure and is shown to be of the form of a class of unsolved problems. Three approaches for estimating the transfer function are derived and shown to achieve good performance in simulation. The first approach relaxes the constraints and finds the corresponding (relaxed) maximum likelihood estimator (MLE). The second approach projects the relaxed MLE solution into the constraint (Kronecker) set. The third approach makes use of the fact that the original transfer function MLE problem is biconvex in the transmit and receive transfer functions, respectively, and employs an alternating minimization algorithm to find them directly.
分布式MIMO雷达系统的标定
当使用分布式多输入多输出(MIMO)雷达系统时,必须考虑到由于电子设备、电缆、天线等造成的非理想和未知影响。本文研究了线性时不变(LTI) MIMO系统传递函数系数的估计问题。该系统被认为是未校准的,因为它的MIMO传递函数、接收机噪声功率和噪声空间相关性是未知的。由于其固有的Kronecker结构,MIMO系统传递函数系数的估计问题是非平凡的,并被证明是一类未解决问题的形式。推导了三种估计传递函数的方法,并在仿真中取得了良好的效果。第一种方法放宽约束并找到相应的(放宽的)最大似然估计量(MLE)。第二种方法将松弛的MLE解投影到约束(Kronecker)集中。第三种方法利用原始传递函数MLE问题在发送和接收传递函数中分别是双凸的事实,采用交替最小化算法直接找到它们。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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