We propose a method to improve the performance of evolutionary algorithms (EA). The proposed approach defines operators which can modify the performance of EA, including Levy distribution function as a strategy parameters adaptation, calculating mean point for finding proper region of breeding offspring, and shifting strategy parameters to change the sequence of these parameters. Thereafter, a set of benchmark cost functions is utilized to compare the results of the proposed method with some other well-known algorithms. It is shown that the speed and accuracy of EA are increased accordingly. Finally, this method is exploited to optimize fuzzy control of truck backer-upper system
We discuss the problem of learning fuzzy rules using Evolutionary Learning techniques, such as Genet...
AbstractThe performance of a fuzzy logic controller depends on its control rules and membership func...
A hybrid method combining an evolutionary search strategy, interval mathematics and pole assignment-...
Published version of an article in the journal: Mathematical Problems in Engineering. Also available...
This paper provides an overview on evolutionary learning methods for the automated design and optimi...
Parameter tuning in Evolutionary Algorithms (EA), is a great obstacle that can become the key to suc...
Challenging optimisation problems, which elude acceptable solution via conventional methods, arise r...
This paper develops control laws for backing up a simulated truck-and-trailer to a loading dock in a...
We propose to use an approach based on fuzzy logic for the adaptation of gap generation and mutation...
This paper proposes a fuzzy system ensemble (FSE) that can improve the system performance in non-lin...
Ponencia de la conferencia "17th International Conference on Information Processing and Management o...
Evolutionary algorithms have been successfully applied to optimize the rulebase of fuzzy systems. Th...
Two genetic algorithms and two evolutionary strategies are examined with respect to an actual proble...
Summarization: The effectiveness of optimized fuzzy controllers in the production scheduling has bee...
Designing a fuzzy system involves defining membership functions and constructing rules. Carrying out...
We discuss the problem of learning fuzzy rules using Evolutionary Learning techniques, such as Genet...
AbstractThe performance of a fuzzy logic controller depends on its control rules and membership func...
A hybrid method combining an evolutionary search strategy, interval mathematics and pole assignment-...
Published version of an article in the journal: Mathematical Problems in Engineering. Also available...
This paper provides an overview on evolutionary learning methods for the automated design and optimi...
Parameter tuning in Evolutionary Algorithms (EA), is a great obstacle that can become the key to suc...
Challenging optimisation problems, which elude acceptable solution via conventional methods, arise r...
This paper develops control laws for backing up a simulated truck-and-trailer to a loading dock in a...
We propose to use an approach based on fuzzy logic for the adaptation of gap generation and mutation...
This paper proposes a fuzzy system ensemble (FSE) that can improve the system performance in non-lin...
Ponencia de la conferencia "17th International Conference on Information Processing and Management o...
Evolutionary algorithms have been successfully applied to optimize the rulebase of fuzzy systems. Th...
Two genetic algorithms and two evolutionary strategies are examined with respect to an actual proble...
Summarization: The effectiveness of optimized fuzzy controllers in the production scheduling has bee...
Designing a fuzzy system involves defining membership functions and constructing rules. Carrying out...
We discuss the problem of learning fuzzy rules using Evolutionary Learning techniques, such as Genet...
AbstractThe performance of a fuzzy logic controller depends on its control rules and membership func...
A hybrid method combining an evolutionary search strategy, interval mathematics and pole assignment-...