A methodology for identification and control of complex nonlinear plants using multi-model approach is presented in this paper. The proposed methodology is based on fuzzy decomposition of the steady state map. It is shown that such a decomposition strategy facilitates the design of input perturbation signals and helps in identifying linear or simple nonlinear models for each local region. A composition strategy to aggregate the local model predictions is proposed and shown to give excellent cross validation as well as to facilitate smooth switching between the local models. A novel control scheme that is based on the multi model strategy is proposed. The practicality of the identification and control scheme presented here is demonstrated by...
In this paper, two mathematical ways of building a fuzzy model of both linear and nonlinear systems ...
During the years, we are witnessing a rapid change in the modeling and control of complex processes,...
In this research, the input/output data of a MIMO nonlinear system are used to create intelligent mo...
In this work, we propose a new method to model and control complex nonlinear dynamic systems. The su...
In this work, we propose a new method to model and control complex nonlinear dynamic systems. The su...
Identification and control of general nonlinear systems is a difficult but important problem. Variou...
Nonlinear complex multi-input multi-output process is very troublesome to control. It is usually als...
A nonlinear dynamic process can be described as a composition of several local affine models selecte...
AbstractThe paper deals with a fuzzy approach to the control of nonlinear systems. The concept of th...
Modeling practical physical systems frequently results in complex nonlinear systems, which poses gre...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
A nonlinear identification approach for describing the dynamical behavior of a Henon chaotic map bas...
A nonlinear dynamic process can be described as a composition of several local affine models selecte...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
grantor: University of TorontoA recent trend in the literature of nonlinear system identif...
In this paper, two mathematical ways of building a fuzzy model of both linear and nonlinear systems ...
During the years, we are witnessing a rapid change in the modeling and control of complex processes,...
In this research, the input/output data of a MIMO nonlinear system are used to create intelligent mo...
In this work, we propose a new method to model and control complex nonlinear dynamic systems. The su...
In this work, we propose a new method to model and control complex nonlinear dynamic systems. The su...
Identification and control of general nonlinear systems is a difficult but important problem. Variou...
Nonlinear complex multi-input multi-output process is very troublesome to control. It is usually als...
A nonlinear dynamic process can be described as a composition of several local affine models selecte...
AbstractThe paper deals with a fuzzy approach to the control of nonlinear systems. The concept of th...
Modeling practical physical systems frequently results in complex nonlinear systems, which poses gre...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
A nonlinear identification approach for describing the dynamical behavior of a Henon chaotic map bas...
A nonlinear dynamic process can be described as a composition of several local affine models selecte...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
grantor: University of TorontoA recent trend in the literature of nonlinear system identif...
In this paper, two mathematical ways of building a fuzzy model of both linear and nonlinear systems ...
During the years, we are witnessing a rapid change in the modeling and control of complex processes,...
In this research, the input/output data of a MIMO nonlinear system are used to create intelligent mo...