Fuzzy neural networks are learning machine that realize the parameters of a fuzzy system (i.e., fuzzy sets, fuzzy rules) by exploiting approximation techniques from neural networks. In this paper, we tend to illustrate a general methodology, based on statistical analysis of the training data, for the choice of fuzzy membership functions to be utilized in reference to fuzzy neural networks. Fuzzy neural networks give for the extraction of fuzzy rules for from artificial neural network architectures. First, the technique is represented and so illustrated utilizing two experimental examinations for determining the alternate approach of the fuzzy neural network
This thesis consists of 2 sections. A neural fuzzy (neuro-fuzzy) system/network is the neural implem...
In previous works, we have presented two methodologies to obtain fuzzy rules in order to describe th...
This document describes the architecture of neuro fuzzy systems. First part of the document provides...
Fuzzy neural networks provide for the extraction of fuzzy rules from artificial neural network archi...
In this paper, a new method which can alter the values of the parameters in neural networks is propo...
[[abstract]]An efficient and simple decision support system must have the characteristics such as in...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...
According to principles of fuzzy mathematics and neural networks, a new model on neural networks, by...
Fuzzy neural networks are a connecting link between fuzzy logic and neurocomputing. The goal of this...
In the design process of a fuzzy system it can be difficult to find optimal membership functions. Af...
In previous papers, we presented an empirical methodology based on Neural Networks for obtaining fu...
When designing any type of fuzzy rule based system, considerable effort is placed in identifying the...
AbstractThe estimation of membership functions from data is an important step in many applications o...
Different methodologies have been used to design and model a system which having the ability to make...
This thesis consists of 2 sections. A neural fuzzy (neuro-fuzzy) system/network is the neural implem...
In previous works, we have presented two methodologies to obtain fuzzy rules in order to describe th...
This document describes the architecture of neuro fuzzy systems. First part of the document provides...
Fuzzy neural networks provide for the extraction of fuzzy rules from artificial neural network archi...
In this paper, a new method which can alter the values of the parameters in neural networks is propo...
[[abstract]]An efficient and simple decision support system must have the characteristics such as in...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...
According to principles of fuzzy mathematics and neural networks, a new model on neural networks, by...
Fuzzy neural networks are a connecting link between fuzzy logic and neurocomputing. The goal of this...
In the design process of a fuzzy system it can be difficult to find optimal membership functions. Af...
In previous papers, we presented an empirical methodology based on Neural Networks for obtaining fu...
When designing any type of fuzzy rule based system, considerable effort is placed in identifying the...
AbstractThe estimation of membership functions from data is an important step in many applications o...
Different methodologies have been used to design and model a system which having the ability to make...
This thesis consists of 2 sections. A neural fuzzy (neuro-fuzzy) system/network is the neural implem...
In previous works, we have presented two methodologies to obtain fuzzy rules in order to describe th...
This document describes the architecture of neuro fuzzy systems. First part of the document provides...