Article ID Journal Published Year Pages File Type
562651 Signal Processing 2012 7 Pages PDF
Abstract

In conventional reduced rank minimum variance beamformer (RRMVB), a rank-reducing transformation is usually obtained from eigenvectors of the estimated sample covariance matrix, while the eigenvectors are usually obtained via eigen-decomposition. To alleviate the computational burden caused by eigen-decomposition, a fast reduced rank minimum variance beamformer (FRRMVB) is proposed in this paper. In the estimated covariance matrix case, a set of receive data vectors are taken as a rough and fast estimate of the true interference subspace, and the rank-reducing transformation is chosen as the augmentation of the estimated interference subspace with the steering vector of the desired signal. As FRRMVB performs without eigen-decomposition, it requires less computational load and is easier to be executed in practical applications compared with the conventional RRMVB. Moreover, it has good performance even with small sample size. Simulation results demonstrate the efficiency of the proposed method. The proposed method can be used for real-time adaptive array processing.

► A fast reduced rank minimum variance beamformer (FRRMVB) is proposed. ► A set of receive data vectors is taken as a fast estimate of interference subspace X. ► FRRMVB requires less computational load and is easier to be implemented. ► FRRMVB has good performance even with small sample size. ► Simulation results demonstrate the efficiency of the proposed FRRMVB.

Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
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