A controller that combines the main characteristics and advantages of three different control methodologies is proposed for the control of systems with nonlinearities and uncertainties. A neural network predictive control approach is implemented modifying the output of a controller with a fuzzy logic structure that uses type-2 fuzzy sets. Neural networks are also used to optimize the membership function parameters. The proposed controller is tested by simulation for the control of a bioreactor characterized by bifurcation and parameter uncertainty
Includes bibliographical references (pages [109]-110).This thesis provides an original design idea f...
A new method for the active control of structures is proposed in this study. This method is based on...
Abstract: By continuous improvement of the intelligent control systems achieves more accurate values...
A controller that combines the main characteristics and advantages of three different control method...
A controller that combines the main characteristics and advantages of three different control method...
The object of this paper is the application of a type-2 fuzzy logic controller to a nonlinear system...
The paper describes the development of two different type-2 adaptive fuzzy logic controllers and th...
Two adaptive type-2 fuzzy logic controllers with minimum number of rules are developed and compared ...
Abstract—In this paper the control of a bioprocess using an adaptive type-2 fuzzy logic controller ...
The paper presents design of neuro-fuzzy control and its application in chemical technologies. Our a...
AbstractA new neurofuzzy controller design algorithm using a neurofuzzy identifier is proposed. The ...
A new method for the active control of structures is proposed in this study. This method is based o...
Capturing the dynamics and control of fast complex nonlinear systems often requires the application ...
Abstract: In this paper a hybrid fuzzy-neuro model based predictive control (HFNMBPC) is addressed, ...
Two distinctive approaches are studied in this report to design neuro-fuzzy control systems for indu...
Includes bibliographical references (pages [109]-110).This thesis provides an original design idea f...
A new method for the active control of structures is proposed in this study. This method is based on...
Abstract: By continuous improvement of the intelligent control systems achieves more accurate values...
A controller that combines the main characteristics and advantages of three different control method...
A controller that combines the main characteristics and advantages of three different control method...
The object of this paper is the application of a type-2 fuzzy logic controller to a nonlinear system...
The paper describes the development of two different type-2 adaptive fuzzy logic controllers and th...
Two adaptive type-2 fuzzy logic controllers with minimum number of rules are developed and compared ...
Abstract—In this paper the control of a bioprocess using an adaptive type-2 fuzzy logic controller ...
The paper presents design of neuro-fuzzy control and its application in chemical technologies. Our a...
AbstractA new neurofuzzy controller design algorithm using a neurofuzzy identifier is proposed. The ...
A new method for the active control of structures is proposed in this study. This method is based o...
Capturing the dynamics and control of fast complex nonlinear systems often requires the application ...
Abstract: In this paper a hybrid fuzzy-neuro model based predictive control (HFNMBPC) is addressed, ...
Two distinctive approaches are studied in this report to design neuro-fuzzy control systems for indu...
Includes bibliographical references (pages [109]-110).This thesis provides an original design idea f...
A new method for the active control of structures is proposed in this study. This method is based on...
Abstract: By continuous improvement of the intelligent control systems achieves more accurate values...