AbstractA practical problem in the identification of fuzzy systems from data, is the design and the tuning of the membership functions. We demonstrate that if the data is properly transformed before the identification process, the resulting fuzzy model can be improved to the point it may not need a further tuning. The significance of the data transform can be validated using statistical methods. The method is demonstrated on a time series prediction problem, using the Box–Cox transform
The design of mathematical models of complex real-world (and typically nonlinear) systems is essenti...
Abstract—Fuzzy modeling of high-dimensional systems is a challenging topic. This paper proposes an e...
One of the crucial problems of fuzzy rule modeling is how to find an optimal or at least a quasi-opt...
AbstractA practical problem in the identification of fuzzy systems from data, is the design and the ...
This thesis concentrates on learning and identification of fuzzy systems, and this thesis is compose...
The problem of optimal identification and processing of random time series (RTS) based on the use of...
One approach forsystem identification among many othersis the fuzzy identification approach. The adv...
22 pages, accepté Reliable ComputingA number of techniques have been introduced to construct fuzzy m...
AbstractThe identification of a model is one of the key issues in the field of fuzzy system modeling...
Summary In practice, information on statistical characteristics of series mode interference is avail...
International audienceFuzzy regression using possibilistic concepts allows the identification of mod...
In recent years, we have witnessed a strong emphasis on high performance and precision of fuzzy syst...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
In this study, the structure of fuzzy functions is improved by function expansion. Unlike fuzzy conv...
The design of mathematical models of complex real-world (and typically nonlinear) systems is essenti...
Abstract—Fuzzy modeling of high-dimensional systems is a challenging topic. This paper proposes an e...
One of the crucial problems of fuzzy rule modeling is how to find an optimal or at least a quasi-opt...
AbstractA practical problem in the identification of fuzzy systems from data, is the design and the ...
This thesis concentrates on learning and identification of fuzzy systems, and this thesis is compose...
The problem of optimal identification and processing of random time series (RTS) based on the use of...
One approach forsystem identification among many othersis the fuzzy identification approach. The adv...
22 pages, accepté Reliable ComputingA number of techniques have been introduced to construct fuzzy m...
AbstractThe identification of a model is one of the key issues in the field of fuzzy system modeling...
Summary In practice, information on statistical characteristics of series mode interference is avail...
International audienceFuzzy regression using possibilistic concepts allows the identification of mod...
In recent years, we have witnessed a strong emphasis on high performance and precision of fuzzy syst...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
In this study, the structure of fuzzy functions is improved by function expansion. Unlike fuzzy conv...
The design of mathematical models of complex real-world (and typically nonlinear) systems is essenti...
Abstract—Fuzzy modeling of high-dimensional systems is a challenging topic. This paper proposes an e...
One of the crucial problems of fuzzy rule modeling is how to find an optimal or at least a quasi-opt...