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Model-Based Subspace Projection Beamforming for Deep Interference Nulling

机译:基于模型的子空间投影波束成形用于深层干扰消除

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摘要

This paper considers the problem of adaptive array processing for interference canceling to drive very deep nulls in difficult signal environments. In many practical scenarios, the achievable null depth is limited by covariance matrix estimation error leading to poor identification of the interference subspace. We address the particularly troublesome cases of low interference-to-noise ratio (INR), relatively rapid interference motion, and correlated noise across the receiving array. A polynomial-based model is incorporated in the proposed algorithm to track changes in the array covariance matrix over time, mitigate interference subspace estimation errors, and improve canceler performance. The application of phased array feeds for radio astronomical telescopes is used to illustrate the problem and proposed solution. Here even weak residual interference after cancelation may obscure a signal of interest, so very deep beampattern nulls are required. Performance for conventional subspace projection (SP) is compared with polynomial-augmented SP using simulated and real experimental data, showing null-depth improvement of 6 to 30 dB.
机译:本文考虑了在干扰较大的信号环境中,用于消除干扰以驱动很深的零点的自适应阵列处理问题。在许多实际情况下,可达到的零点深度受到协方差矩阵估计误差的限制,从而导致对干扰子空间的识别不佳。我们解决了低干扰噪声比(INR),相对较快的干扰运动以及整个接收阵列中相关噪声的特别麻烦的情况。提出的算法中采用了基于多项式的模型来跟踪阵列协方差矩阵随时间的变化,减轻干扰子空间估计误差,并提高抵消器性能。相控阵馈电在射电天文望远镜中的应用被用来说明问题和提出的解决方案。在这里,即使抵消后的残留干扰很小,也可能会使感兴趣的信号模糊,因此需要非常深的波束图零点。使用模拟和实际实验数据,将常规子空间投影(SP)的性能与多项式增强SP进行了比较,显示出零深度改善了6至30 dB。

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