2012 ©
             Publication
Journal Publication
Title of Article A Hybrid Genetic Algorithm with Multi-Parent Crossover in Fuzzy Rule-Based 
Date of Acceptance 30 September 2017 
Journal
     Title of Journal International Journal of Machine Learning and Computing 
     Standard SCOPUS 
     Institute of Journal International Association of Computer Science and Information Technology 
     ISBN/ISSN 2010-3700 
     Volume
     Issue
     Month October
     Year of Publication 2017 
     Page 114-117 
     Abstract The fuzzy system has been widely used in several application fields and successfully performed by applying evolutionary. Genetic algorithm (GA) is one of the evolutionary methods for solving optimization problems. The success of GA depends on the design of its search operation which crossover and mutation are important operators to find a promising solution for difficult optimization problems. This article proposes a hybrid genetic algorithm with multi-parent crossover operators (HGA-MC) in fuzzy rule-based. An HGA-MC is used to optimize the fuzzy rule-based of linguistic values, which are associated with the global search. In experiments, the proposed algorithm and other existing algorithms were evaluated using optimization problems in UCI five datasets with different dimensionality. The experimental results showed that the proposed (fuzzy HGA-MC) achieved higher target precision than other existing methods by about 94.31%. Based on experimental results, HGA-MC could search for combinations of the crossover and mutation operators to discover accurate and concise optimization rules than other existing algorithms. 
     Keyword Hybrid genetic algorithm, multi-parent crossovers, fuzzy rule-based. 
Author
607040015-7 Mr. KRITBODIN PHIWHORM [Main Author]
Engineering Doctoral Degree

Reviewing Status มีผู้ประเมินอิสระ 
Status ตีพิมพ์แล้ว 
Level of Publication นานาชาติ 
citation true 
Part of thesis true 
Attach file
Citation 0