Digitale Bibliotheek
Sluiten Bladeren door artikelen uit een tijdschrift
 
<< vorige    volgende >>
     Tijdschrift beschrijving
       Alle jaargangen van het bijbehorende tijdschrift
         Alle afleveringen van het bijbehorende jaargang
           Alle artikelen van de bijbehorende aflevering
                                       Details van artikel 3 van 4 gevonden artikelen
 
 
  Impact of static and adaptive mutation techniques on the performance of Genetic Algorithm
 
 
Titel: Impact of static and adaptive mutation techniques on the performance of Genetic Algorithm
Auteur: Rajakumar, B.R.
Verschenen in: International journal of hybrid intelligent systems
Paginering: Jaargang 10 (2013) nr. 1 pagina's 11-22
Jaar: 2013-03-12
Inhoud: Genetic Algorithm (GA) is one of the most popular heuristic search algorithms inspired by nature's evolutionary behavior. Among the various genetic operators, mutation is one important operator that helps to accelerate the searching ability of GA. As GA finds numerous applications, it undergoes various enhancements and modifications, especially with respect to mutation operator. Numerous mutation techniques have been reported in the literature that can be broadly categorized into static and adaptive mutation techniques. This work selectively analyzes six mutation techniques in a common bench of experiments. Among the six mutation techniques, two are the popular variants of static mutation techniques called as Uniform mutation and Gaussian Mutation. The remaining four were recently introduced: two individual adaptive mutation techniques, a self adaptive mutation technique and a deterministic mutation technique. Totally, 28 benchmark functions, which fall under the benchmark categories of unimodal, multimodal, extended multimodal, diagonal and quadratic functions, are used in the work. The analysis mainly intends to determine a best mutation technique for every benchmark problem and to understand the dependency behavior of mutation techniques with other GA parameters such as crossover probabilities, population sizes and number of generations. It leads to interesting findings which would help to improve the GA performance on other practical and benchmark problems.
Uitgever: IOS Press
Bronbestand: Elektronische Wetenschappelijke Tijdschriften
 
 

                             Details van artikel 3 van 4 gevonden artikelen
 
<< vorige    volgende >>
 
 Koninklijke Bibliotheek - Nationale Bibliotheek van Nederland