Publisher Copyright: AuthorThis paper considers a formulation of the robust adaptive beamforming (RAB) problem based on worst-case signal-to-interference-plus-noise ratio (SINR) maximization with a nonconvex uncertainty set for the steering vectors. The uncertainty set consists of a similarity constraint and a (nonconvex) double-sided ball constraint. The worst-case SINR maximization problem is turned into a quadratic matrix inequality (QMI) problem using the strong duality of semidefinite programming. Then a linear matrix inequality (LMI) relaxation for the QMI problem is proposed, with an additional valid linear constraint. Necessary and sufficient conditions for the tightened LMI relaxation problem to have a rank-one solution are establi...
Abstract The minimum power distortionless response beamformer has a good interference rejection capa...
Consider a unicast downlink beamforming optimization problem with robust signal-to-interference-plus...
Conventional beamformers can be sensitive to mismatches between presumed and actual steering vectors...
Abstract — Many advanced adaptive beamformers are robust against arbitrary array steering vector (AS...
Adaptive beamforming methods are known to degrade in the presence of steering vector and covariance ...
The research in this thesis is emphasized on the investigation of optimization techniques for robust...
Adaptive beamforming methods are known to degrade in the presence of steering vector and covariance ...
The research in this thesis is emphasized on the investigation of optimization techniques for robust...
A novel robust adaptive beamforming based on worst-case and norm constraint (RAB-WC-NC) is presented...
In this paper, a new adaptive beamforming algorithm with joint robustness against covariance matrix ...
The robust adaptive beamforming (RAB) problem for general-rank signal model with an additional posit...
Abstract—The robust adaptive beamforming problem for general-rank signal model with positive semi-de...
We propose doubly constrained robust least-squares constant modulus algorithm (LSCMA) to solve the p...
The standard MVDR beamformer has high resolution and in-terference rejection capability when the arr...
[[abstract]]This paper considers a multiuser transmit beamforming de- sign in the presence of Gaussi...
Abstract The minimum power distortionless response beamformer has a good interference rejection capa...
Consider a unicast downlink beamforming optimization problem with robust signal-to-interference-plus...
Conventional beamformers can be sensitive to mismatches between presumed and actual steering vectors...
Abstract — Many advanced adaptive beamformers are robust against arbitrary array steering vector (AS...
Adaptive beamforming methods are known to degrade in the presence of steering vector and covariance ...
The research in this thesis is emphasized on the investigation of optimization techniques for robust...
Adaptive beamforming methods are known to degrade in the presence of steering vector and covariance ...
The research in this thesis is emphasized on the investigation of optimization techniques for robust...
A novel robust adaptive beamforming based on worst-case and norm constraint (RAB-WC-NC) is presented...
In this paper, a new adaptive beamforming algorithm with joint robustness against covariance matrix ...
The robust adaptive beamforming (RAB) problem for general-rank signal model with an additional posit...
Abstract—The robust adaptive beamforming problem for general-rank signal model with positive semi-de...
We propose doubly constrained robust least-squares constant modulus algorithm (LSCMA) to solve the p...
The standard MVDR beamformer has high resolution and in-terference rejection capability when the arr...
[[abstract]]This paper considers a multiuser transmit beamforming de- sign in the presence of Gaussi...
Abstract The minimum power distortionless response beamformer has a good interference rejection capa...
Consider a unicast downlink beamforming optimization problem with robust signal-to-interference-plus...
Conventional beamformers can be sensitive to mismatches between presumed and actual steering vectors...