天线阵列线性预测超分辨率处理性能分析

Honglei Chen, D. Kasilingam
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引用次数: 3

摘要

阵列处理中的许多应用都需要高分辨率波束形成方法。例如,为了在无线系统中实现更高的系统容量,提出了空间分多址(SDMA)。SDMA中隐含的是自适应产生窄天线波束的能力,这确保了用户之间的物理分离,并最大限度地减少了多用户干扰。然而,天线理论需要较大的天线孔径来产生窄波束。本文讨论了一种自适应算法,用于将测量值从小型天线阵列外推到更大的虚拟阵列。该技术利用线性预测(LP)方法进行外推。采用基于最小均方(LMS)的算法估计LP系数。由于该算法是线性的,它既可以作为到达方向(DoA)估计器,也可以作为检索传输信号的匹配滤波器。其他流行的高分辨率算法,如MUSIC,本质上是非线性的,因此不能单独用于检索信号信息。从干扰抑制、噪声和空间分辨率三个方面研究了该算法的性能。结果表明,代表LP过程的HR滤波器具有与信号DoA相对应的极点。所得的LP系数可以消除来自不同发射机的信号之间的干扰。然而,当两个发射机距离较近时,由于接收机噪声耦合到外推过程中,因此噪声性能没有得到改善。将外推算法与LCMV算法进行了比较,得到了相似的结果
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of Linear Predictive Super-Resolution Processing for Antenna Arrays
Many applications in array processing require a high resolution beamforming method. For example, spatial division multiple access (SDMA) has been proposed to achieve higher system capacity in wireless systems. Implicit in SDMA is the ability to adaptively generate narrow antenna beam patterns, which ensures the physical separation between users and minimizes multiple user interference. However, antenna theory requires large antenna apertures to generate narrow beam patterns. This paper discusses an adaptive algorithm for extrapolating measurements from a small antenna array to a much larger virtual array. The technique utilizes linear prediction (LP) methods to perform the extrapolation. A least mean square (LMS) based algorithm was used to estimate the LP coefficients. Since the algorithm is linear, it serves both as a direction-of-arrival (DoA) estimator and a matched filter for retrieving the transmitted signal. Other popular high-resolution algorithms such as MUSIC are inherently nonlinear and thus cannot be used on their own for retrieving signal information. The performance of this algorithm is studied with respect to interference suppression, noise and spatial resolution. It is shown that the HR filter representing the LP process has poles corresponding to the DoA of the signal. The resulting LP coefficients can eliminate the interference between signals from different transmitters. However, no improvement in noise performance is seen because the receiver noise couples into the extrapolation process when two transmitters are closely located. The extrapolation algorithm is compared with the LCMV algorithm and found to produce similar results
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