Sciweavers

EUSFLAT
2003

A Type 2 fuzzy system modelling algorithm

13 years 5 months ago
A Type 2 fuzzy system modelling algorithm
In this paper, a modified fuzzy system modelling algorithm that incorporates Type 2 fuzzy sets, which is based on intervalvalued membership degrees rather than singleton membership degrees, is proposed. The proposed algorithm is evaluated in terms of predictive performance and determination of the significance degrees and compared with other algorithms in the literature, namely Stepwise Multiple Linear Regression (SMLR) and Sugeno-Yasukawa [4] based fuzzy system modelling algorithm, i.e. Turksen-Bazoon (T-B) [3]. A nonlinear function, which is introduced as a benchmarking data set by SugenoYasukawa, is used for validating the models. The proposed algorithm outperformed the other alternatives both in terms of the root mean square error (RMSE) and in terms of the determination of the significance of the inputs. These results showed that the proposed fuzzy system modelling algorithm could effectively approximate nonlinear functions with simple fuzzy if-then rules without assuming a prior...
Kemal Kilic, Özge Uncu, I. Burhan Türkse
Added 31 Oct 2010
Updated 31 Oct 2010
Type Conference
Year 2003
Where EUSFLAT
Authors Kemal Kilic, Özge Uncu, I. Burhan Türksen
Comments (0)