A parallel immune optimization algorithm for numeric function optimization

Immune optimization algorithms show good performance in obtaining optimal solutions especially in dealing with numeric optimization problems where such solutions are often difficult to determine by traditional techniques. This article presents the parallel suppression control algorithm (PSCA), a par...

Full description

Saved in:
Bibliographic Details
Published inEvolutionary intelligence Vol. 1; no. 3; pp. 171 - 185
Main Authors Lau, Henry Y. K., Tsang, Wilburn W. P.
Format Journal Article
LanguageEnglish
Published Berlin/Heidelberg Springer-Verlag 01.10.2008
Subjects
Online AccessGet full text
ISSN1864-5909
1864-5917
DOI10.1007/s12065-008-0014-8

Cover

More Information
Summary:Immune optimization algorithms show good performance in obtaining optimal solutions especially in dealing with numeric optimization problems where such solutions are often difficult to determine by traditional techniques. This article presents the parallel suppression control algorithm (PSCA), a parallel algorithm for optimization based on artificial immune systems (AIS). PSCA is implemented in a parallel platform where the corresponding population of antibodies is partitioned into subpopulations that are distributed among the processes. Each process executes the immunity-based algorithm for optimizing its subpopulation. In the process of evolving the solutions, the activities of antibodies and the activities of the computation agents are regulated by the general suppression control framework (GSCF) which maintains and controls the interactions between the populations and processes. The proposed algorithm is evaluated with benchmark problems, and its performance is measured and compared with other conventional optimization approaches.
ISSN:1864-5909
1864-5917
DOI:10.1007/s12065-008-0014-8