Fuzzy C-means Clustering algorithm (FCM) is a method that is frequently used in pattern recognition. It has the advantage of giving good modeling results in many cases, although, it is not capable of specifying the number of clusters by itself. In FCM algorithm most researchers fix weighting exponent (m) to a conventional value of 2 which might not be the appropriate for all applications. Consequently, the main objective of this paper is to use the subtractive clustering algorithm to provide the optimal number of clusters needed by FCM algorithm by optimizing the parameters of the subtractive clustering algorithm by an iterative search approach and then to find an optimal weighting exponent (m) for the FCM algorithm. In order to get an optimal number of clusters, the iterative search approach is used to find the optimal single-output Sugenotype Fuzzy Inference System (FIS) model by optimizing the parameters of the subtractive clustering algorithm that give minimum least square error between the actual data and the Sugeno fuzzy model. Once the number of clusters is optimized, then two approaches are proposed to optimize the weighting exponent (m) in the FCM algorithm, namely, the iterative search approach and the genetic algorithms. The above mentioned approach is tested on the generated data from the original function and optimal fuzzy models are obtained with minimum error between the real data and the obtained fuzzy models. Keywords—Fuzzy clustering, Fuzzy C-Means, Genetic Algorithm, Sugeno fuzzy systems.
[1]
Quan J. Wang,et al.
Using genetic algorithms to optimise model parameters
,
1997
.
[2]
Li-Xin Wang,et al.
A Course In Fuzzy Systems and Control
,
1996
.
[3]
James C. Bezdek,et al.
Pattern Recognition with Fuzzy Objective Function Algorithms
,
1981,
Advanced Applications in Pattern Recognition.
[4]
Dimitar Filev,et al.
Generation of Fuzzy Rules by Mountain Clustering
,
1994,
J. Intell. Fuzzy Syst..
[5]
Douglass J. Wilde,et al.
Foundations of Optimization.
,
1967
.
[6]
Stephen L. Chiu,et al.
Fuzzy Model Identification Based on Cluster Estimation
,
1994,
J. Intell. Fuzzy Syst..
[7]
James C. Bezdek,et al.
Clustering with a genetically optimized approach
,
1999,
IEEE Trans. Evol. Comput..
[8]
J. C. Dunn,et al.
A Fuzzy Relative of the ISODATA Process and Its Use in Detecting Compact Well-Separated Clusters
,
1973
.
[9]
T. H. I. Jaakola,et al.
Optimization by direct search and systematic reduction of the size of search region
,
1973
.