DocumentCode :
893178
Title :
A robust design criterion for interpretable fuzzy models with uncertain data
Author :
Kumar, Mohit ; Stoll, Regina ; Stoll, Norbert
Author_Institution :
Fac. of Medicine, Rostock Univ., Germany
Volume :
14
Issue :
2
fYear :
2006
fDate :
4/1/2006 12:00:00 AM
Firstpage :
314
Lastpage :
328
Abstract :
We believe that nonlinear fuzzy filtering techniques may be turned out to give better robustness performance than the existing linear methods of estimation (H2 and H filtering techniques), because of the fact that not only linear parameters (consequents), but also the nonlinear parameters (membership functions) attempt to identify the uncertain behavior of the unknown system. However, the fuzzy identification methods must be robust to data uncertainties and modeling errors to ensure that the fuzzy approximation of unknown system´s behavior is optimal in some sense. This study presents a deterministic approach to the robust design of fuzzy models in the presence of unknown but finite uncertainties in the identification data. We consider online identification of an interpretable fuzzy model, based on the robust solution of a regularized least-squares fuzzy parameters estimation problem. The aim is to resolve the difficulties associated with the robust fuzzy identification method due to lack of a priori knowledge about upper bounds on the data uncertainties. The study derives an optimal level of regularization that should be provided to ensure the robustness of fuzzy identification strategy by achieving an upper bound on the value of energy gain from data uncertainties and modeling errors to the estimation errors. A time-domain feedback analysis of the proposed identification approach is carried out with emphasis on stability, robustness, and steady-state issues. The simulation studies are provided to show the superiority of the proposed fuzzy estimation over the classical estimation methods.
Keywords :
filtering theory; fuzzy set theory; identification; least mean squares methods; fuzzy approximation; fuzzy identification methods; interpretable fuzzy models; membership functions; nonlinear fuzzy filtering techniques; regularized least-squares fuzzy parameters estimation problem; robust design criterion; time-domain feedback analysis; uncertain data; Estimation error; Filtering; Fuzzy systems; Nonlinear filters; Parameter estimation; Robust stability; Robustness; Time domain analysis; Uncertainty; Upper bound; interpretability; least-squares; min–max identification; normalized least mean squares algorithm (NLMS) algorithm;
fLanguage :
English
Journal_Title :
Fuzzy Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1063-6706
Type :
jour
DOI :
10.1109/TFUZZ.2005.861614
Filename :
1618522
Link To Document :
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