Title :
Stochastic suitability measures for nonlinear structure identification
Author :
Pearson, R.K. ; Allgower, F. ; Menold, P.H.
Author_Institution :
CR&D, DuPont Co., Wilmington, DE, USA
Abstract :
In this paper stochastic suitability measures are introduced as a means of quantifying the ability of a particular nonlinear model class to capture the control relevant I/O-behavior of a nonlinear system to be identified. These suitability measures can be used in the structure identification step that usually precedes the actual parameter identification. Properties of these measures are discussed and compared to their deterministic counterpart and the qualitative dependence on model classes and classes of input sequences is made explicit with two examples.
Keywords :
identification; nonlinear control systems; stochastic systems; control relevant I/O-behavior; nonlinear structure identification; nonlinear system; parameter identification; stochastic suitability measures; Approximation methods; Computational modeling; Nonlinear systems; Numerical models; Polynomials; Standards; Stochastic processes; modelling; nonlinear identification; stochastic;
Conference_Titel :
Control Conference (ECC), 1997 European
Conference_Location :
Brussels
Print_ISBN :
978-3-9524269-0-6