In this work, we propose a new method to model and control complex nonlinear dynamic systems. The suggested scheme employs an output curve methodology to determine the initial set of dynamic clustering spaces. The choice of the optimal dynamic clustering space is made through an analysis of cross validation performance and other indicative indices. A fuzzy clustering methodology for dynamic model building is proposed. For online control, a smooth internal model-switching strategy based on fuzzy methods is proposed and shown to be superior to other methods hitherto proposed in the literature. Two control structures based on the proposed methodology are discussed. The efficacy of the proposed fuzzy modeling and control schemes are demonstrate...
A new fuzzy modeling method using Multi-population Cooperative Particle Swarm Optimizer (MCPSO) for ...
This paper investigates the application of the product-sum crisp type fuzzy model linearization tech...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
In this work, we propose a new method to model and control complex nonlinear dynamic systems. The su...
A methodology for identification and control of complex nonlinear plants using multi-model approach ...
Modeling practical physical systems frequently results in complex nonlinear systems, which poses gre...
The inherent nonlinearity of the pH process often renders conventional control difficult. This non-l...
Identification and control of general nonlinear systems is a difficult but important problem. Variou...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
Nonlinear complex multi-input multi-output process is very troublesome to control. It is usually als...
This paper presents a methodology for the design of a fuzzy controller applicable to continuous proc...
This paper presents the design of a fuzzy control heuristic that can be applied for modeling nonline...
During the years, we are witnessing a rapid change in the modeling and control of complex processes,...
Deriving parameters and structure of fuzzy model for a dynamical system by means of a clustering pro...
The article deals with the synthesis of effective algorithms for controlling a chemical reactor and ...
A new fuzzy modeling method using Multi-population Cooperative Particle Swarm Optimizer (MCPSO) for ...
This paper investigates the application of the product-sum crisp type fuzzy model linearization tech...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
In this work, we propose a new method to model and control complex nonlinear dynamic systems. The su...
A methodology for identification and control of complex nonlinear plants using multi-model approach ...
Modeling practical physical systems frequently results in complex nonlinear systems, which poses gre...
The inherent nonlinearity of the pH process often renders conventional control difficult. This non-l...
Identification and control of general nonlinear systems is a difficult but important problem. Variou...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
Nonlinear complex multi-input multi-output process is very troublesome to control. It is usually als...
This paper presents a methodology for the design of a fuzzy controller applicable to continuous proc...
This paper presents the design of a fuzzy control heuristic that can be applied for modeling nonline...
During the years, we are witnessing a rapid change in the modeling and control of complex processes,...
Deriving parameters and structure of fuzzy model for a dynamical system by means of a clustering pro...
The article deals with the synthesis of effective algorithms for controlling a chemical reactor and ...
A new fuzzy modeling method using Multi-population Cooperative Particle Swarm Optimizer (MCPSO) for ...
This paper investigates the application of the product-sum crisp type fuzzy model linearization tech...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...