In previous papers from the authors fuzzy model identification methods were discussed. The bacterial algorithm for extracting fuzzy rule base from a training set was presented. The Levenberg-Marquardt algorithm was also proposed for determining membership functions in fuzzy systems. In this paper the Levenberg-Marquardt technique is improved to optimise the membership functions in the fuzzy rules without Ruspini-partition. The class of membership functions investigated is the trapezoidal one as it is general enough and widely used. The method can be easily extended to arbitrary piecewise linear functions as well
This paper shows the conditions needed to be able to determine the behavior of the output of a fuzzy...
In this paper, an unsupervised approach incorporating variable bandwidth mean-shift and robust stati...
In this paper, a constructive approach to the fuzzy model selection problem is developed. First, the...
In previous papers from the authors fuzzy model identification methods were discussed. The bacterial...
In previous papers from the authors fuzzy model identification methods were discussed. The bacterial...
This paper discusses how training algorithms for determining membership functions in fuzzy rule base...
In our previous papers fuzzy model identification methods were discussed. The bacterial algorithm fo...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...
In our previous works model identification methods were discussed. The bacterial evolutionary algori...
In this study, the structure of fuzzy functions is improved by function expansion. Unlike fuzzy conv...
AbstractThe estimation of membership functions from data is an important step in many applications o...
Based on the conclusions drawn in the bijective transformation between possibility and probability, ...
Given a. fuzzy logic system, how can we determine the membership functions that will result in the b...
The generation of membership functions for fuzzy systems is a challenging problem. In this paper, we...
In this study, the structure of fuzzy functions is improved by function expansion. Unlike fuzzy conv...
This paper shows the conditions needed to be able to determine the behavior of the output of a fuzzy...
In this paper, an unsupervised approach incorporating variable bandwidth mean-shift and robust stati...
In this paper, a constructive approach to the fuzzy model selection problem is developed. First, the...
In previous papers from the authors fuzzy model identification methods were discussed. The bacterial...
In previous papers from the authors fuzzy model identification methods were discussed. The bacterial...
This paper discusses how training algorithms for determining membership functions in fuzzy rule base...
In our previous papers fuzzy model identification methods were discussed. The bacterial algorithm fo...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...
In our previous works model identification methods were discussed. The bacterial evolutionary algori...
In this study, the structure of fuzzy functions is improved by function expansion. Unlike fuzzy conv...
AbstractThe estimation of membership functions from data is an important step in many applications o...
Based on the conclusions drawn in the bijective transformation between possibility and probability, ...
Given a. fuzzy logic system, how can we determine the membership functions that will result in the b...
The generation of membership functions for fuzzy systems is a challenging problem. In this paper, we...
In this study, the structure of fuzzy functions is improved by function expansion. Unlike fuzzy conv...
This paper shows the conditions needed to be able to determine the behavior of the output of a fuzzy...
In this paper, an unsupervised approach incorporating variable bandwidth mean-shift and robust stati...
In this paper, a constructive approach to the fuzzy model selection problem is developed. First, the...