Neurofuzzy modelling systems combine fuzzy logic with quantitative artificial neural networks via a concept of fuzzification by using a fuzzy membership function usually based on B-splines and algebraic operators for inference, etc. The paper introduces a neurofuzzy model construction algorithm using Bezier-Bernstein polynomial functions as basis functions. The new network maintains most of the properties of the B-spline expansion based neurofuzzy system, such as the non-negativity of the basis functions, and unity of support but with the additional advantages of structural parsimony and Delaunay input space partitioning, avoiding the inherent computational problems of lattice networks. This new modelling network is based on the idea that a...
A neurofuzzy system combines the positive attributes of a neural network and a fuzzy system by provi...
In this paper an outline is presented of a neurofuzzy modelling approach as part of an Multimedia In...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
Neurofuzzy modelling systems combine fuzzy logic with quantitative artificial neural networks via a ...
This paper introduces a new neurofuzzy model construction algorithm for nonlinear dynamic systems ba...
This paper introduces a new neurofuzzy model construction algorithm for nonlinear dynamic systems ba...
The identification of nonlinear dynamical processes has become an important task in many different a...
Neurofuzzy systems have been developed as grey box modelling technique ideal for the task of system ...
Neurofuzzy systems are ideal for modelling nonlinear processes; combining the transparent knowledge ...
A Fuzzy logic system has been shown to be able to arbitrarily approximate any nonlinear function and...
Modelling has become an invaluable tool in many areas of research, particularly in the control commu...
The authors of this paper analyse the input-output relation of the fuzzy system with a functional ru...
This dissertation presents an hybrid computational model that combines fuzzy system techniques and a...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
A neurofuzzy system combines the positive attributes of a neural network and a fuzzy system by provi...
A neurofuzzy system combines the positive attributes of a neural network and a fuzzy system by provi...
In this paper an outline is presented of a neurofuzzy modelling approach as part of an Multimedia In...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
Neurofuzzy modelling systems combine fuzzy logic with quantitative artificial neural networks via a ...
This paper introduces a new neurofuzzy model construction algorithm for nonlinear dynamic systems ba...
This paper introduces a new neurofuzzy model construction algorithm for nonlinear dynamic systems ba...
The identification of nonlinear dynamical processes has become an important task in many different a...
Neurofuzzy systems have been developed as grey box modelling technique ideal for the task of system ...
Neurofuzzy systems are ideal for modelling nonlinear processes; combining the transparent knowledge ...
A Fuzzy logic system has been shown to be able to arbitrarily approximate any nonlinear function and...
Modelling has become an invaluable tool in many areas of research, particularly in the control commu...
The authors of this paper analyse the input-output relation of the fuzzy system with a functional ru...
This dissertation presents an hybrid computational model that combines fuzzy system techniques and a...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
A neurofuzzy system combines the positive attributes of a neural network and a fuzzy system by provi...
A neurofuzzy system combines the positive attributes of a neural network and a fuzzy system by provi...
In this paper an outline is presented of a neurofuzzy modelling approach as part of an Multimedia In...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...