In this paper, two mathematical ways of building a fuzzy model of both linear and nonlinear systems are presented and compared. In order to determine a model for a nonlinear system, the phase plane is divided into sub-regions and a linear model is assigned for each of these regions. This linear model is represented either in state-space or ARX model form. To determine the pre-selected parameters of the linear system model under study, least-square identification method is used. Then these linear models are arranged in a fuzzy manner to characterize the overall system behavior. The results show that this method can identify linear systems exactly and nonlinear ones quite satisfactorily with both system representations, assuming that the inpu...
The objective of this work is to describe a numerical technique to identify parameters of a fuzzy mo...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
For many practical weakly nonlinear systems we have their approximated linear model. Its parameters ...
This book provides engineers and scientists in academia and industry with a thorough understanding o...
The fuzzy model identification problem from noisy data is addressed. The piecewise linear fuzzy mode...
In this paper, a new identification method of a piecewise affine model for a nonlinear system based ...
The fuzzy model identification problem from noisy data is addressed. The piecewise linear fuzzy mode...
The fuzzy model identification problem from noisy data is addressed. The piecewise linear fuzzy mode...
The fuzzy model identification problem from noisy data is addressed. The piecewise linear fuzzy mode...
The fuzzy model identification problem from noisy data is addressed. The piecewise linear fuzzy mode...
The objective of this work is to describe a numerical technique to identify parameters of a fuzzy mo...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
For many practical weakly nonlinear systems we have their approximated linear model. Its parameters ...
This book provides engineers and scientists in academia and industry with a thorough understanding o...
The fuzzy model identification problem from noisy data is addressed. The piecewise linear fuzzy mode...
In this paper, a new identification method of a piecewise affine model for a nonlinear system based ...
The fuzzy model identification problem from noisy data is addressed. The piecewise linear fuzzy mode...
The fuzzy model identification problem from noisy data is addressed. The piecewise linear fuzzy mode...
The fuzzy model identification problem from noisy data is addressed. The piecewise linear fuzzy mode...
The fuzzy model identification problem from noisy data is addressed. The piecewise linear fuzzy mode...
The objective of this work is to describe a numerical technique to identify parameters of a fuzzy mo...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...