Title
A hybrid clonal selection algorithm with modified combinatorial recombination and success-history based adaptive mutation for numerical optimization
Abstract
Artificial immune system is a class of computational intelligence methods drawing inspiration from biological immune system. As one type of popular artificial immune computing model, clonal selection algorithm (CSA) has been widely used for many optimization problems. When dealing with complex optimization problems, such as the characteristics of multimodal, high-dimension, rotational, the traditional CSA often suffers from diversity loss, poor search ability, premature convergence and stagnation. To address the problems, a modified combinatorial recombination is introduced to bring diversity to the population and avoid the premature convergence. Moreover, the success-history based adaptive mutation strategy is introduced to form a success-history based adaptive mutation based clonal selection algorithm to improve the search ability. The mutation operator is also modified and analyzed through experimental comparison. To further improve the precision and cope with the stagnation, the gene knockout strategy is proposed. The proposed algorithm is tested on CEC 2014 benchmarks and compared with state-of-the-art evolutionary algorithms. The experimental results show that MSHCSA is quite competitive.
Year
DOI
Venue
2019
10.1007/s10489-018-1291-2
Applied Intelligence
Keywords
Field
DocType
Immune system,Clonal selection algorithm,Optimization,Mutation,Adaptive
Population,Artificial immune system,Mathematical optimization,Computational intelligence,Adaptive mutation,Premature convergence,Evolutionary algorithm,Computer science,Artificial intelligence,Clonal selection algorithm,Optimization problem,Machine learning
Journal
Volume
Issue
ISSN
49.0
2
1573-7497
Citations 
PageRank 
References 
2
0.38
26
Authors
6
Name
Order
Citations
PageRank
Weiwei Zhang1102.86
Kui Gao2303.81
Weizheng Zhang3142.22
Xiao Wang4143.33
Qiuwen Zhang5644.56
Hua Wang621452.30