[[abstract]]Two architectures for designing optimal fuzzy control systems were proposed in this paper. In both cases, the membership functions in the fuzzy rulebases were tuned by the genetic algorithms. The objective was to explore a fuzzy controller by minimizing a quadratic cost fkction. In the first architecture, the employed controller was a conventional, fuzzy logic controller which used the system states as input variables. Consequently, the reciprocal of the cost function to be minimized could be directly applied towards evaluating the fitness of the controller. In the second architecture, a $my sliding mode controller was adopted. The combined information of the system states, i.e. the sliding function, formed a single input variab...
[[abstract]]A multituning fuzzy control system structure that involves two simple, but effective tun...
Abstract- In this paper, we design fuzzy sliding mode controller by real-value genetic algorithms. I...
This paper examines the applicability of genetic algorithms (GA) in the complete design of fuzzy log...
[[abstract]]In this paper, genetic algorithms were applied to search a sub-optimal fuzzy rule-base f...
[[abstract]]The issue of developing a stable self-learning optimal fuzzy control system is discussed...
For the design of a fuzzy controller it is necessary to choose, besides other parameters, suitable m...
This article proposes a stable fuzzy system (FS) optimized by genetic algorithm (GA). The FS uses GA...
Abstract—This paper addresses the optimization and stabiliza-tion problems of nonlinear systems subj...
This dissertation introduces a new method to the study of optimal fuzzy control. This new fuzzy cont...
This dissertation introduces a new method to the study of optimal fuzzy control. This new fuzzy cont...
[[abstract]]The paper presents an optimal fuzzy logic controller design using efficient robust optim...
This paper provides an overview on evolutionary learning methods for the automated design and optimi...
This paper presents genetic algorithms (GAs) to perform the optimal design of an auto-tuning fuzzy p...
This thesis examines the utility of fuzzy logic in the field of control engineering. A tutorial intr...
The design of a fuzzy controller suffers from choice problems of fuzzy input and output membership f...
[[abstract]]A multituning fuzzy control system structure that involves two simple, but effective tun...
Abstract- In this paper, we design fuzzy sliding mode controller by real-value genetic algorithms. I...
This paper examines the applicability of genetic algorithms (GA) in the complete design of fuzzy log...
[[abstract]]In this paper, genetic algorithms were applied to search a sub-optimal fuzzy rule-base f...
[[abstract]]The issue of developing a stable self-learning optimal fuzzy control system is discussed...
For the design of a fuzzy controller it is necessary to choose, besides other parameters, suitable m...
This article proposes a stable fuzzy system (FS) optimized by genetic algorithm (GA). The FS uses GA...
Abstract—This paper addresses the optimization and stabiliza-tion problems of nonlinear systems subj...
This dissertation introduces a new method to the study of optimal fuzzy control. This new fuzzy cont...
This dissertation introduces a new method to the study of optimal fuzzy control. This new fuzzy cont...
[[abstract]]The paper presents an optimal fuzzy logic controller design using efficient robust optim...
This paper provides an overview on evolutionary learning methods for the automated design and optimi...
This paper presents genetic algorithms (GAs) to perform the optimal design of an auto-tuning fuzzy p...
This thesis examines the utility of fuzzy logic in the field of control engineering. A tutorial intr...
The design of a fuzzy controller suffers from choice problems of fuzzy input and output membership f...
[[abstract]]A multituning fuzzy control system structure that involves two simple, but effective tun...
Abstract- In this paper, we design fuzzy sliding mode controller by real-value genetic algorithms. I...
This paper examines the applicability of genetic algorithms (GA) in the complete design of fuzzy log...