Please use this identifier to cite or link to this item: http://bibdigital.epn.edu.ec/handle/15000/9286
Title: A Nonlinear SDP Approach for Matrix Rank Minimization Problem with Applications
Authors: Sadati, Nasser
Mansoor Isvand, Yousefi
Keywords: OPTIMIZACIÓN
ALGORITMOS
PROCESAMIENTO DE LA SEÑAL
Issue Date: 21-Mar-2007
Abstract: We consider the problem of minimizing rank of a matrix under linear and nonlinear matrix inequality constraints. This problem arises in diverse applications such as estimation, control and signal processing and it is known to be computationally NP-hard even when constraints are linear .In this paper, we first formulize the RMP as an optimization problem with linear objective and simple nonlinear semialgebraic constraints. We then proceed to solve the problem with augmented Lagrangian method known in nonlinear optimization. Despite of other heuristic and approximate methods in the subject, this method guarantees to find the global optimum in the sense that it does not depends on the choice of initial point for convergence. Several numerical examples demonstrate the effectiveness of the considered algorithm.
URI: http://bibdigital.epn.edu.ec/handle/15000/9286
Type: Article
Appears in Collections:2005 International Conference on Industrial Electronics and Control Applications (FIEE)

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