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Robust Beamforming via Worst-Case SINR Maximization
149
Citations
30
References
2008
Year
Mathematical ProgrammingArray ProcessingStatistical Signal ProcessingEngineeringWeight VectorUncertainty ModelUncertainty QuantificationRobust BeamformingMinimum Variance BeamformingConvex OptimizationSystems EngineeringSmart AntennaSemidefinite ProgrammingInverse ProblemsBeamformingApproximation TheorySignal ProcessingRobust Optimization
Minimum variance beamforming, which uses a weight vector that maximizes the signal-to-interference-plus-noise ratio (SINR), is often sensitive to estimation error and uncertainty in the parameters, steering vector and covariance matrix. Robust beamforming attempts to systematically alleviate this sensitivity by explicitly incorporating a data uncertainty model in the optimization problem. In this paper, we consider robust beamforming via worst-case SINR maximization, that is, the problem of finding a weight vector that maximizes the worst-case SINR over the uncertainty model. We show that with a general convex uncertainty model, the worst-case SINR maximization problem can be solved by using convex optimization. In particular, when the uncertainty model can be represented by linear matrix inequalities, the worst-case SINR maximization problem can be solved via semidefinite programming. The convex formulation result allows us to handle more general uncertainty models than prior work using a special form of uncertainty model. We illustrate the method with a numerical example.
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