New Designs on MVDR Robust Adaptive Beamforming Based on Optimal Steering Vector Estimation
Yongwei Huang, Mingkang Zhou, Sergiy A. Vorobyov

TL;DR
This paper introduces a novel robust adaptive beamforming method that estimates the signal's steering vector using advanced optimization techniques, improving output SINR and power in uncertain environments.
Contribution
It develops a new beamformer design based on optimal steering vector estimation with a non-convex QCQP formulation and efficient algorithms for global optimality.
Findings
Enhanced output SINR in simulations
Improved output power performance
Robustness against steering vector uncertainties
Abstract
The robust adaptive beamforming design problem based on estimation of the signal of interest steering vector is considered in the paper. In this case, the optimal beamformer is obtained by computing the sample matrix inverse and an optimal estimate of the signal of interest steering vector. The common criteria to find the best estimate of the steering vector are the beamformer output SINR and output power, while the constraints assume as little as possible prior inaccurate knowledge about the signal of interest, the propagation media, and the antenna array. Herein, a new beamformer output power maximization problem is formulated and solved subject to a double-sided norm perturbation constraint, a similarity constraint, and a quadratic constraint that guarantees that the direction-of-arrival (DOA) of the signal of interest is away from the DOA region of all linear combinations of the…
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