Sequenced Steering Vector Estimation for Eigen-Subspace Projection-Based Robust Adaptive Beamformer

Robust adaptive beamforming (RAB) is essential in many applications to ensure signal-receiving quality when model errors exist. Eigen-subspace projection (ESP), one of the most popular RAB methods, can be used when there are arbitrary model errors. However, a major challenge of ESP is projection sub...

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Main Authors: Xiangwei Chen, Weixing Sheng
Format: Article
Language:English
Published: MDPI AG 2023-07-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/12/13/2897
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author Xiangwei Chen
Weixing Sheng
author_facet Xiangwei Chen
Weixing Sheng
author_sort Xiangwei Chen
collection DOAJ
description Robust adaptive beamforming (RAB) is essential in many applications to ensure signal-receiving quality when model errors exist. Eigen-subspace projection (ESP), one of the most popular RAB methods, can be used when there are arbitrary model errors. However, a major challenge of ESP is projection subspace selection. Traditional ESP (TESP) treats the signal subspace as the projection subspace; thus, source enumeration is required to obtain prior information. Another inherent defect is its poor performance at low signal-to-noise ratios (SNRs). To overcome these drawbacks, two improved ESP-based RAB methods are proposed in this study. Considering that a reliable signal-of-interest steering vector needs to be obtained via the subspace projection, the main idea underlying the proposed methods is to use sequenced steering vector estimation to invert the subspace dimension estimate for an arranged eigenvector matrix. As the proposed methods do not require source enumeration, they are simple to implement. Numerical examples demonstrate the effectiveness and robustness of the proposed methods in terms of output signal-to-interference-plus-noise ratio performance. Specifically, compared with TESP, the proposed methods present at least a 2.6 dB improvement at low SNRs regardless of the error models.
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spelling doaj.art-81c9ece4ee7a45a789e1c380c25b29832023-11-18T16:25:01ZengMDPI AGElectronics2079-92922023-07-011213289710.3390/electronics12132897Sequenced Steering Vector Estimation for Eigen-Subspace Projection-Based Robust Adaptive BeamformerXiangwei Chen0Weixing Sheng1School of Electronic and Optical Engineering, Nanjing University of Science and Technology, Nanjing 210094, ChinaSchool of Electronic and Optical Engineering, Nanjing University of Science and Technology, Nanjing 210094, ChinaRobust adaptive beamforming (RAB) is essential in many applications to ensure signal-receiving quality when model errors exist. Eigen-subspace projection (ESP), one of the most popular RAB methods, can be used when there are arbitrary model errors. However, a major challenge of ESP is projection subspace selection. Traditional ESP (TESP) treats the signal subspace as the projection subspace; thus, source enumeration is required to obtain prior information. Another inherent defect is its poor performance at low signal-to-noise ratios (SNRs). To overcome these drawbacks, two improved ESP-based RAB methods are proposed in this study. Considering that a reliable signal-of-interest steering vector needs to be obtained via the subspace projection, the main idea underlying the proposed methods is to use sequenced steering vector estimation to invert the subspace dimension estimate for an arranged eigenvector matrix. As the proposed methods do not require source enumeration, they are simple to implement. Numerical examples demonstrate the effectiveness and robustness of the proposed methods in terms of output signal-to-interference-plus-noise ratio performance. Specifically, compared with TESP, the proposed methods present at least a 2.6 dB improvement at low SNRs regardless of the error models.https://www.mdpi.com/2079-9292/12/13/2897robust adaptive beamformingsteering vector mismatcheigen-subspace projectionprojection subspacesequenced steering vector estimationranking model
spellingShingle Xiangwei Chen
Weixing Sheng
Sequenced Steering Vector Estimation for Eigen-Subspace Projection-Based Robust Adaptive Beamformer
Electronics
robust adaptive beamforming
steering vector mismatch
eigen-subspace projection
projection subspace
sequenced steering vector estimation
ranking model
title Sequenced Steering Vector Estimation for Eigen-Subspace Projection-Based Robust Adaptive Beamformer
title_full Sequenced Steering Vector Estimation for Eigen-Subspace Projection-Based Robust Adaptive Beamformer
title_fullStr Sequenced Steering Vector Estimation for Eigen-Subspace Projection-Based Robust Adaptive Beamformer
title_full_unstemmed Sequenced Steering Vector Estimation for Eigen-Subspace Projection-Based Robust Adaptive Beamformer
title_short Sequenced Steering Vector Estimation for Eigen-Subspace Projection-Based Robust Adaptive Beamformer
title_sort sequenced steering vector estimation for eigen subspace projection based robust adaptive beamformer
topic robust adaptive beamforming
steering vector mismatch
eigen-subspace projection
projection subspace
sequenced steering vector estimation
ranking model
url https://www.mdpi.com/2079-9292/12/13/2897
work_keys_str_mv AT xiangweichen sequencedsteeringvectorestimationforeigensubspaceprojectionbasedrobustadaptivebeamformer
AT weixingsheng sequencedsteeringvectorestimationforeigensubspaceprojectionbasedrobustadaptivebeamformer