Title of article :
A type-2 fuzzy c-regression clustering algorithm for Takagi–Sugeno system identification and its application in the steel industry
Author/Authors :
M.H. Fazel Zarandi، نويسنده , , R. Gamasaee، نويسنده , , I.B. Turksen، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
This paper proposes a new type-2 fuzzy c-regression clustering algorithm for the structure identification phase of Takagi–Sugeno (T–S) systems. We present uncertainties with fuzzifier parameter “m”. In order to identify the parameters of interval type-2 fuzzy sets, two fuzzifiers “image” and “image” are used. Then, by utilizing these two fuzzifiers in a fuzzy c-regression clustering algorithm, the interval type-2 fuzzy membership functions are generated. The proposed model in this paper is an extended version of a type-1 FCRM algorithm , which is extended to an interval type-2 fuzzy model. The Gaussian Mixture model is used to create the partition matrix of the fuzzy c-regression clustering algorithm. Finally, in order to validate the proposed model, several numerical examples are presented. The model is tested on a real data set from a steel company in Canada. Our computational results show that our model is more effective for robustness and error reduction than type-1 NFCRM and the multiple-regression.
Keywords :
Steel Industry , IT2F c-regression clustering , Weighted least square , multiple-regression , structure identification , Gaussian mixture
Journal title :
Information Sciences
Journal title :
Information Sciences