DocumentCode :
2641634
Title :
Enhanced multivariable TS fuzzy modeling in neural network perspective
Author :
Ciftcioglu, Ozer ; Sariyildiz, I.S.
Author_Institution :
Fac. of Archit. Building Technol., Delft Univ. of Technol., Netherlands
fYear :
2005
fDate :
26-28 June 2005
Firstpage :
150
Lastpage :
155
Abstract :
A new approach is presented to enhance fuzzy modeling using multidimensional fuzzy sets directly in the fuzzy model in place of decomposed fuzzy sets by projection. The antecedent fuzzy sets in the form of multivariable functions are represented in continuous form. This is accomplished by using a multi input and multi output neural network, which is in particular radial basis functions (RBF) network providing the required multivariable function approximation properties in a fuzzy model. The inputs of the network are fuzzy model inputs, outputs are the membership function values as to the multivariable fuzzy sets involved in the model. Thus, each output is restricted to one multivariable fuzzy set. The RBF network is trained according to the multidimensional fuzzy sets which are identified after fuzzy clustering of the data. Based on this, the linear model parameters are determined by the method of least squares in a straightforward manner. The transparency issues can be handled by means of projection process to have information about the shape and locations of the membership functions pertinent to each variable at the input. The accurate fuzzy modeling having been thus guaranteed the information on the linear model parameters are used to establish the multivariable fuzzy rules with their respective validity regions. The redundancy of the number of fuzzy sets can be circumvented by classical cluster merging algorithms available. In this approach, the fuzzy rules are determined from the local linear models, however in contrast with the conventional fuzzy modeling, the model outputs are determined by the multivariable fuzzy sets. To obtain regular sets, RBF network is trained by means of orthogonal least squares (OLS) method so that at the same time the convergence issues of general neural network training is eliminated.
Keywords :
MIMO systems; fuzzy set theory; fuzzy systems; learning (artificial intelligence); least squares approximations; multidimensional systems; radial basis function networks; fuzzy clustering; membership function; multidimensional fuzzy sets; multiinput multioutput neural network; multivariable TS fuzzy modeling; multivariable function approximation; neural network training; orthogonal least squares; radial basis functions network; Clustering algorithms; Function approximation; Fuzzy neural networks; Fuzzy sets; Least squares methods; Merging; Multidimensional systems; Neural networks; Radial basis function networks; Shape;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Fuzzy Information Processing Society, 2005. NAFIPS 2005. Annual Meeting of the North American
Print_ISBN :
0-7803-9187-X
Type :
conf
DOI :
10.1109/NAFIPS.2005.1548524
Filename :
1548524
Link To Document :
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