Model quality evaluation in identification for H∞ control

A mixed parametric-nonparametric approach to H/sub /spl infin// identification is proposed, aimed at estimating a low-order approximating model and an identification error giving a measure of the model perturbation in a form well suited for H/sub /spl infin// control methodologies. It is shown how to estimate the modeling errors of the identified parametric model and how to evaluate the performance values that can be guaranteed when the H/sub /spl infin// controller is designed and applied to the real system. This performance value is then used for selecting the most "suitable" order of the parametric model class.

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