We present a method for learning fuzzy logic membership functions and rules to approximate a numerical function from a set of examples of the function’s independent variables and the resulting function value. This method uses a three-step approach to building a complete function approximation system: first, learning the membership functions and creating a cell-based rule representation; second, simplifying the cell-based rules using an information-theoretic approach for induction of rules from discrete-valued data; and, finally, constructing a computational (neural) network to compute the function value given its independent variables. This function approximation system is demonstrated with a simple control example: learning the truck and t...
This paper examines the underlying relationship between radial basis function artificial neural netw...
: In this paper the approximation of fuzzy functions by rule-based fuzzy systems is investigated. It...
The goal of intelligent control is to achieve control objectives for complex systems where it is imp...
We present a method for learning fuzzy logic membership functions and rules to approximate a numeric...
A three-step method for function approximation with a fuzzy system is proposed. First, the membershi...
In this paper, we present a method for the induction of fuzzy logic rules to predict a numerical fun...
A three-step method for function approximation with a fuzzy system is proposed. First, the membershi...
This thesis describes the architecture of learning systems which can explain their decisions through...
Fuzzy inference systems and neural networks both provide mathematical systems for approximating cont...
Email fzhang ilkhacva knollgtechfakunibielefeldde Abstract We point out that Bspline basis funct...
Fuzzy systems can be used for function approximation based on a set of linguistic rules. We present ...
The fuzzy controller (FC) consists of two parts. First one is the control rule part which is referre...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
AbstractWhereas conventional fuzzy reasoning lacks determining membership functions, a neural networ...
We propose a neuro--fuzzy architecture for function approximation based on supervised learning. The ...
This paper examines the underlying relationship between radial basis function artificial neural netw...
: In this paper the approximation of fuzzy functions by rule-based fuzzy systems is investigated. It...
The goal of intelligent control is to achieve control objectives for complex systems where it is imp...
We present a method for learning fuzzy logic membership functions and rules to approximate a numeric...
A three-step method for function approximation with a fuzzy system is proposed. First, the membershi...
In this paper, we present a method for the induction of fuzzy logic rules to predict a numerical fun...
A three-step method for function approximation with a fuzzy system is proposed. First, the membershi...
This thesis describes the architecture of learning systems which can explain their decisions through...
Fuzzy inference systems and neural networks both provide mathematical systems for approximating cont...
Email fzhang ilkhacva knollgtechfakunibielefeldde Abstract We point out that Bspline basis funct...
Fuzzy systems can be used for function approximation based on a set of linguistic rules. We present ...
The fuzzy controller (FC) consists of two parts. First one is the control rule part which is referre...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
AbstractWhereas conventional fuzzy reasoning lacks determining membership functions, a neural networ...
We propose a neuro--fuzzy architecture for function approximation based on supervised learning. The ...
This paper examines the underlying relationship between radial basis function artificial neural netw...
: In this paper the approximation of fuzzy functions by rule-based fuzzy systems is investigated. It...
The goal of intelligent control is to achieve control objectives for complex systems where it is imp...