This paper presents an approach to obtain simple fuzzy models. The simplification strategy involves structure reduction of a neural network modeling the fuzzy system and is carried out through an iterative algorithm aiming at selecting a minimal number of rules for the problem at hand. The selection algorithm allows manipulation of the neuro-fuzzy model to minimize its complexity and to preserve a good level of accuracy. Experimental results demonstrate the algorithm's effectiveness in identifying reduced neuro-fuzzy networks with no degradation in the original performance
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
The normal design process for neural networks or fuzzy systems involve two different phases: the de...
This paper presents a novel learning algorithm for fuzzy logic neuron based on neural networks and f...
This paper deals with the structure identification problem for a fuzzy model, which is solved under ...
Neuro-fuzzy modeling allows a fuzzy system to be refined by neural training, thus avoiding lenghty t...
Neuro-fuzzy modeling allows a fuzzy system to be refined by neural training, thus avoiding lenghty t...
This paper proposes an integrated approach to rule structure and parameter identification for fuzzy ...
The research of neuro-fuzzy modeling is divided into two branches, the precise modeling, implemented...
The research of neuro-fuzzy modeling is divided into two branches, the precise modeling, implemented...
In the paper, we propose novel methods for designing and reduction of neuro-fuzzy systems without th...
Neurofuzzy systems have been developed as grey box modelling technique ideal for the task of system ...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
Modelling has become an invaluable tool in many areas of research, particularly in the control commu...
The normal design process for neural networks or fuzzy systems involve two different phases: the de...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
The normal design process for neural networks or fuzzy systems involve two different phases: the de...
This paper presents a novel learning algorithm for fuzzy logic neuron based on neural networks and f...
This paper deals with the structure identification problem for a fuzzy model, which is solved under ...
Neuro-fuzzy modeling allows a fuzzy system to be refined by neural training, thus avoiding lenghty t...
Neuro-fuzzy modeling allows a fuzzy system to be refined by neural training, thus avoiding lenghty t...
This paper proposes an integrated approach to rule structure and parameter identification for fuzzy ...
The research of neuro-fuzzy modeling is divided into two branches, the precise modeling, implemented...
The research of neuro-fuzzy modeling is divided into two branches, the precise modeling, implemented...
In the paper, we propose novel methods for designing and reduction of neuro-fuzzy systems without th...
Neurofuzzy systems have been developed as grey box modelling technique ideal for the task of system ...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
Modelling has become an invaluable tool in many areas of research, particularly in the control commu...
The normal design process for neural networks or fuzzy systems involve two different phases: the de...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
The normal design process for neural networks or fuzzy systems involve two different phases: the de...
This paper presents a novel learning algorithm for fuzzy logic neuron based on neural networks and f...