Low-complexity implementation for worst-case optimization-based robust adaptive beamforming

Biao Jiang
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引用次数: 1

Abstract

In this paper, an efficient low-complexity robust adaptive beamforming method based on worst-case performance optimization is proposed. Lagrangian method was applied to obtain the expression for the robust adaptive weight vector, which is optimized on the boundary of the steering vector uncertainty region, that is to say, in the worst mismatch case. Combining the constraint condition and the eigendecomposition of the array covariance matrix, root-finding method is used to obtain the optimal Lagrange multiplier. Then, the diagonal loading-like robust weight vector is achieved. The implementation efficiency is greatly improved since the main computational burden is the eigendecomposition operator. Numerical results show that the performance of the proposed method is nearly identical to the robust Capon beamforming.
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基于最坏情况优化的鲁棒自适应波束形成的低复杂度实现
提出了一种基于最坏情况性能优化的高效低复杂度鲁棒自适应波束形成方法。采用拉格朗日方法得到鲁棒自适应权向量表达式,该权重向量在导向向量不确定性区域边界上进行优化,即在最坏失配情况下进行优化。结合约束条件和阵列协方差矩阵的特征分解,采用寻根法求出最优拉格朗日乘子。然后,实现了类对角加载的鲁棒权向量。由于主要的计算负担是特征分解算子,因此大大提高了实现效率。数值结果表明,该方法的性能与稳健的Capon波束形成方法几乎相同。
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