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Open AccessJournal ArticleDOI

Robust Adaptive Beamforming Based on Low-Rank and Cross-Correlation Techniques

Hang Ruan, +1 more
- 01 Aug 2016 - 
- Vol. 64, Iss: 15, pp 3919-3932
TLDR
This paper presents cost-effective low-rank techniques for designing robust adaptive beamforming algorithms based on the exploitation of the cross-correlation between the array observation data and the output of the beamformer, resulting in the proposed orthogonal Krylov subspace projection mismatch estimation (OKSPME) method.
Abstract
This paper presents cost-effective low-rank techniques for designing robust adaptive beamforming (RAB) algorithms. The proposed algorithms are based on the exploitation of the cross-correlation between the array observation data and the output of the beamformer. First, we construct a general linear equation considered in large dimensions whose solution yields the steering vector mismatch. Then, we employ the idea of the full orthogonalization method (FOM), an orthogonal Krylov subspace based method, to iteratively estimate the steering vector mismatch in a reduced-dimensional subspace, resulting in the proposed orthogonal Krylov subspace projection mismatch estimation (OKSPME) method. We also devise adaptive algorithms based on stochastic gradient (SG) and conjugate gradient (CG) techniques to update the beamforming weights with low complexity and avoid any costly matrix inversion. The main advantages of the proposed low-rank and mismatch estimation techniques are their cost-effectiveness when dealing with high-dimension subspaces or large sensor arrays. Simulations results show excellent performance in terms of the output signal-to-interference-plus-noise ratio (SINR) of the beamformer among all the compared RAB methods.

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Citations
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Journal ArticleDOI

Robust Adaptive Beamforming Based on Conjugate Gradient Algorithms

TL;DR: This paper derives a diagonal loading CGLS algorithm (CG applied to normal equations) and proposes a simple method to choose the loading level based on a coarse estimation of the desired signal power, which can effectively reduce the signal self-cancellation at high signal-to-noise ratio.
Journal ArticleDOI

Robust Adaptive Beamforming via Simplified Interference Power Estimation

TL;DR: Simulation results demonstrate that the overestimation of interference powers hardly degrades the performance of adaptive beamforming, and the proposed algorithm achieves nearly optimal performance across a wide range of signal-to-noise ratios.
Journal ArticleDOI

New Designs on MVDR Robust Adaptive Beamforming Based on Optimal Steering Vector Estimation

TL;DR: In this paper, the robust adaptive beamforming design problem based on estimation of the signal-of-interest (SOI) steering vector is considered, and a beamformer output power maximization problem is formulated and solved subject to a double-sided norm perturbation constraint, a similarity constraint, and an inhomogeneous constraint that guarantees that the direction of arrival (DOA) of the SOI is away from the DOA region of all linear combinations of the interference steering vectors.
Journal ArticleDOI

Maximum Entropy-Based Interference-Plus-Noise Covariance Matrix Reconstruction for Robust Adaptive Beamforming

TL;DR: A new low-complexity RAB approach based on interference-plus-noise covariance matrix (IPNC) reconstruction and steering vector (SV) estimation is proposed, which can provide superior performance to several previously proposed beamformers.
Journal ArticleDOI

Distributed Robust Beamforming Based on Low-Rank and Cross-Correlation Techniques: Design and Analysis

TL;DR: The proposed RDB approach mitigates the effects of channel errors in wireless networks equipped with relays based on the exploitation of the cross-correlation between the received data from the relays at the destination and the system output and low-rank techniques.
References
More filters
Journal ArticleDOI

Rank reduction for modeling stationary signals

TL;DR: Rank reduction is developed as a general principle for trading off model bias and model variance in the analysis and synthesis of signals as mentioned in this paper, and applied to three basic problems: stationary time series modeling, stationary time-series whitening, and vector quantization.
Journal ArticleDOI

Reduced-Rank STAP Schemes for Airborne Radar Based on Switched Joint Interpolation, Decimation and Filtering Algorithm

TL;DR: The simulation results show that the proposed RR-SJIDF STAP schemes with both the RLS and the CCG algorithms converge at a very fast speed and provide a considerable SINR improvement over the state-of-the-art reduced-rank schemes.
Journal ArticleDOI

Blind Adaptive Constrained Reduced-Rank Parameter Estimation Based on Constant Modulus Design for CDMA Interference Suppression

TL;DR: A multistage decomposition for blind adaptive parameter estimation in the Krylov subspace with the code-constrained constant modulus (CCM) design criterion is developed and the proposed techniques to the suppression of multiaccess and intersymbol interference in DS-CDMA systems are considered.
Journal ArticleDOI

Transmit Diversity and Relay Selection Algorithms for Multirelay Cooperative MIMO Systems

TL;DR: A set of joint transmit diversity selection and relay selection algorithms based on discrete iterative stochastic optimization for the uplink of cooperative multiple-input-multiple-output (MIMO) systems are proposed and shown to outperform conventional cooperative transmission and match that of the optimal exhaustive solution.
Journal ArticleDOI

Joint space-time auxiliary-vector filtering for DS/CDMA systems with antenna arrays

TL;DR: The studies show that the induced BER can be improved by orders of magnitude, while at the same time significantly lower computational optimization complexity is required in comparison with joint S-T minimum-variance distortionless response or equivalent minimum mean-square-error conventional filtering means.
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