In this paper, a fuzzy feedback linearization is used to control nonlinear systems described by Takagi-Suengo (T-S) fuzzy systems. In this work, an optimal controller is designed using the linear quadratic regulator (LQR). The well known weighting parameters approach is applied to optimize local and global approximation and modelling capability of T-S fuzzy model to improve the choice of the performance index and minimize it. The approach used here can be considered as a generalized version of T-S method. Simulation results indicate the potential, simplicity and generality of the estimation method and the robustness of the proposed optimal LQR algorithm
Abstract – This paper describes optimization of the Takagi-Sugeno fuzzy model. To prove the existenc...
In this work, an improved approach for Takagi-Sugeno system identification is used. Linear Quadratic...
A novel optimal method is developed to improve the identification and estimation of Takagi-Sugeno (T...
In this paper, a fuzzy feedback linearization is used to control nonlinear systems described by Taka...
Part 11: Simulations and Fuzzy ModelingInternational audienceIn this paper, a fuzzy feedback lineari...
In this work, the main objective is to obtain enhanced performance of nonlinear multivariable system...
An efficient approach is presented to improve the local and global approximation and modelling capab...
An efficient approach is presented to improve the local and global approximation and modelling capab...
In this paper, we talk about the application of fuzzy control techniques to the nonlinear systems. W...
The paper presents conditions suitable in design giving quadratic performances to stabilizing contro...
Abstract — A novel optimal method is developed to improve the identification and estimation of Takag...
[[abstract]]This study introduces a fuzzy control design method for nonlinear systems with a guarant...
[[abstract]]By the use of the elegant operational properties of the orthogonal functions, a direct c...
In this work, an improved approach for Takagi-Sugeno system identification is used. Linear Quadratic...
In this paper, we introduce a robust state feedback controller design using Linear Matrix Inequaliti...
Abstract – This paper describes optimization of the Takagi-Sugeno fuzzy model. To prove the existenc...
In this work, an improved approach for Takagi-Sugeno system identification is used. Linear Quadratic...
A novel optimal method is developed to improve the identification and estimation of Takagi-Sugeno (T...
In this paper, a fuzzy feedback linearization is used to control nonlinear systems described by Taka...
Part 11: Simulations and Fuzzy ModelingInternational audienceIn this paper, a fuzzy feedback lineari...
In this work, the main objective is to obtain enhanced performance of nonlinear multivariable system...
An efficient approach is presented to improve the local and global approximation and modelling capab...
An efficient approach is presented to improve the local and global approximation and modelling capab...
In this paper, we talk about the application of fuzzy control techniques to the nonlinear systems. W...
The paper presents conditions suitable in design giving quadratic performances to stabilizing contro...
Abstract — A novel optimal method is developed to improve the identification and estimation of Takag...
[[abstract]]This study introduces a fuzzy control design method for nonlinear systems with a guarant...
[[abstract]]By the use of the elegant operational properties of the orthogonal functions, a direct c...
In this work, an improved approach for Takagi-Sugeno system identification is used. Linear Quadratic...
In this paper, we introduce a robust state feedback controller design using Linear Matrix Inequaliti...
Abstract – This paper describes optimization of the Takagi-Sugeno fuzzy model. To prove the existenc...
In this work, an improved approach for Takagi-Sugeno system identification is used. Linear Quadratic...
A novel optimal method is developed to improve the identification and estimation of Takagi-Sugeno (T...