A prototype fuzzy system is quite easy to set up and modify with the techniques within fuzzy system theory when linguistic rules can be given for the desired behavior. Fine-tuning of such a system proves more difficult as well as building a system when no rules can be given. Because this tuning is a very specialistic job, during construction as well as in maintenance, ways were examined to do the tuning automatically. Function approximation is described as a general technique to tune parts of a fuzzy systems based on the desired input and output behavior. Two distinct function approximation techniques were taken into consideration: Techniques based on B-splines (analytically as well as numerically) and techniques based on sigmoids (only num...
We propose a neuro--fuzzy architecture for function approximation based on supervised learning. The ...
It is known that fuzzy systems are universal approximators, i.e., any input-output system can be app...
Abstract:- This paper presents a new methodology for the adjustment of fuzzy inference systems. A no...
: In this paper the approximation of fuzzy functions by rule-based fuzzy systems is investigated. It...
The choice of fuzzy set functions affects how well fuzzy systems approximate functions. The most com...
Abstract: The usefulness of fuzzy input fuzzy output functions and their interpolation/approximation...
: We point out that B-spline basis functions are naturally defined membership functions for fuzzy lo...
Athenes, May 12-16Usually, fuzzy systems approximate functions by covering their graphs with fuzzy p...
AbstractIn this paper we propose an improvement in the field of fuzzy function approximation. It is ...
The need of function approximations arises in many branches of applied mathematics and computer scie...
A fuzzy approximation method called fuzzy transforms for approximation of continuous function is pre...
We have proposed an analytical method for limiting the complexity of neural-fuzzy models that provid...
We have proposed an analytical method for limiting the complexity of neural-fuzzy models that provid...
Fuzzy systems can be used for function approximation based on a set of linguistic rules. We present ...
An additive fuzzy system comprising m rules with n inputs and p outputs in each rule has at least t ...
We propose a neuro--fuzzy architecture for function approximation based on supervised learning. The ...
It is known that fuzzy systems are universal approximators, i.e., any input-output system can be app...
Abstract:- This paper presents a new methodology for the adjustment of fuzzy inference systems. A no...
: In this paper the approximation of fuzzy functions by rule-based fuzzy systems is investigated. It...
The choice of fuzzy set functions affects how well fuzzy systems approximate functions. The most com...
Abstract: The usefulness of fuzzy input fuzzy output functions and their interpolation/approximation...
: We point out that B-spline basis functions are naturally defined membership functions for fuzzy lo...
Athenes, May 12-16Usually, fuzzy systems approximate functions by covering their graphs with fuzzy p...
AbstractIn this paper we propose an improvement in the field of fuzzy function approximation. It is ...
The need of function approximations arises in many branches of applied mathematics and computer scie...
A fuzzy approximation method called fuzzy transforms for approximation of continuous function is pre...
We have proposed an analytical method for limiting the complexity of neural-fuzzy models that provid...
We have proposed an analytical method for limiting the complexity of neural-fuzzy models that provid...
Fuzzy systems can be used for function approximation based on a set of linguistic rules. We present ...
An additive fuzzy system comprising m rules with n inputs and p outputs in each rule has at least t ...
We propose a neuro--fuzzy architecture for function approximation based on supervised learning. The ...
It is known that fuzzy systems are universal approximators, i.e., any input-output system can be app...
Abstract:- This paper presents a new methodology for the adjustment of fuzzy inference systems. A no...