DocumentCode
2004277
Title
Set-based genetic algorithms for solving many-objective optimization problems
Author
Dunwei Gong ; Gengxing Wang ; Xiaoyan Sun
Author_Institution
Sch. of Inf. & Electr. Eng., China Univ. of Min. & Technol., Xuzhou, China
fYear
2013
fDate
9-11 Sept. 2013
Firstpage
96
Lastpage
103
Abstract
Many-objective optimization problems are very common and important in real-world applications, and there exist few methods suitable for them. Therefore, many-objective optimization problems are focused on in this study, and a set-based genetic algorithm is presented to effectively solve them. First, each objective of the original optimization problem is transformed into a desirability function according to the preferred region defined by the decision-maker. Thereafter, the transformed problem is further converted to a bi-objective optimization one by taking hyper-volume and the decision-maker´s satisfaction as the new objectives, and a set of solutions of the original optimization problem as the new decision variable. To tackle the converted bi-objective optimization problem by using genetic algorithms, the crossover operator inside a set is designed based on the simplex method by using solutions of the original optimization problem, and the crossover operator between sets is developed by using the entropy of sets. In addition, the mutation operator of a set is presented to obey the Gaussian distribution and change along with the decision-maker´s preferences. The proposed method is applied to five benchmark many-objective optimization problems, and compared with other six methods. The experimental results empirically demonstrate its effectiveness.
Keywords
Gaussian distribution; decision making; entropy; genetic algorithms; mathematical operators; set theory; Gaussian distribution; bi-objective optimization problem; crossover operator; decision variable; decision-makers preferences; decision-makers satisfaction; desirability function; entropy; hyper-volume; many-objective optimization problems; mutation operator; set-based genetic algorithms; simplex method; Entropy; Equations; Genetic algorithms; Mathematical model; Optimization; Sociology; Statistics; Gaussian mutation; Key words; desirability function; genetic algorithm; many-objective optimization; set; simplex method;
fLanguage
English
Publisher
ieee
Conference_Titel
Computational Intelligence (UKCI), 2013 13th UK Workshop on
Conference_Location
Guildford
Print_ISBN
978-1-4799-1566-8
Type
conf
DOI
10.1109/UKCI.2013.6651293
Filename
6651293
Link To Document