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Robust Beamforming by Linear Programming

机译:通过线性规划实现稳健的波束成形

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摘要

In this paper, a robust linear programming beamformer (RLPB) is proposed for non-Gaussian signals in the presence of steering vector uncertainties. Unlike most of the existing beamforming techniques based on the minimum variance criterion, the proposed RLPB minimizes the l_∞-norm of the output to exploit the non-Gaussianity. We make use of a new definition of the l_p-norm (1 ≤ p ≤ ∞) of a complex-valued vector, which is based on the l_p-modulus of complex numbers. To achieve robustness against steering vector mismatch, the proposed method constrains the l_∞-modulus of the response of any steering vector within a specified uncertainty set to exceed unity. The uncertainty set is modeled as a rhombus, which differs from the spherical or ellipsoidal uncertainty region widely adopted in the literature. The resulting optimization problem is cast as a linear programming and hence can be solved efficiently. The proposed RLPB is computationally simpler than its robust counterparts requiring solution to a second-order cone programming. We also address the issue of appropriately choosing the uncertainty region size. Simulation results demonstrate the superiority of the proposed RLPB over several state-of-the-art robust beamformers and show that its performance can approach the optimal performance bounds.
机译:该文针对存在转向矢量不确定度的非高斯信号提出了一种鲁棒线性规划波束形成器(RLPB)。与大多数基于最小方差准则的现有波束成形技术不同,所提出的RLPB最小化了输出的l_∞范数,以利用非高斯性。我们利用了复值向量的l_p范数(1 ≤ p ≤ ∞)的新定义,该定义基于复数的l_p模。为了实现对转向矢量失配的鲁棒性,所提方法将任何转向矢量响应的l_∞模量限制在设定为超过单位的指定不确定度内。不确定性集被建模为菱形,这与文献中广泛采用的球形或椭球形不确定性区域不同。由此产生的优化问题被转换为线性规划,因此可以有效地求解。所提出的RLPB在计算上比需要求解二阶锥体编程的鲁棒对应物更简单。我们还解决了适当选择不确定性区域大小的问题。仿真结果表明,所提出的RLPB优于几种最先进的鲁棒波束成形器,并表明其性能可以接近最佳性能范围。

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