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Robust spectral factor approximation of discrete-time frequency domain power spectras
Authors:Karel Hinnen [Author Vitae]  Michel Verhaegen [Author Vitae] [Author Vitae]
Affiliation:a Delft Center for Systems and Control, Delft University of Technology, Mekelweg 2, 2628 CD Delft, The Netherlands
b TNO Science and Industry, P.O. Box 155, 2600 AD Delft, The Netherlands
Abstract:This paper presents a subspace-based identification algorithm for estimating the state-space quadruple [A,B,C,D] of a minimum-phase spectral factor from matrix-valued power spectrum data. For a given pair [A,C] with A stable, the minimum-phase property is guaranteed via the solution of a conic linear programming (CLP) problem. In comparison with the classical LMI-based solution, this results in a more efficient way to minimize the weighted 2-norm of the error between the estimated and given power spectrum. The conic linear programming problem can be solved in a globally optimal sense. This property is exploited in the derivation of a separable least-squares procedure for the (local) minimization of the above 2-norm with respect to the parameters of the minimal phase spectral factor. The advantages of the derived subspace algorithm and the iterative local minimization procedure are illustrated in a brief simulation study. In this study, the effect of dealing with short length data sets for computing the power spectrum, on the estimated spectral factor, is illustrated.
Keywords:Spectral factorization   Subspace identification   Power spectra   Stochastic realization   Conic linear programming
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