The IRMA Community
Newsletters
Research IRM
Click a keyword to search titles using our InfoSci-OnDemand powered search:
|
Parallel Single and Multiple Objectives Genetic Algorithms: A Survey
Abstract
This paper critically reviews the reported research on parallel single and multi-objective genetic algorithms. Many early efforts on single and multi-objective genetic algorithms were introduced to reduce the processing time needed to reach an acceptable solution. However, some parallel single and multi-objective genetic algorithms converged to better solutions as compared to comparable sequential single and multiple objective genetic algorithms. The authors review several representative models for parallelizing single and multi-objective genetic algorithms. Further, some of the issues that have not yet been studied systematically are identified in the context of parallel single and parallel multi-objective genetic algorithms. Finally, some of the potential applications of parallel multi-objective GAs are discussed.
Related Content
Junichiro Hayano, Emi Yuda.
© 2021.
15 pages.
|
Anna Karagianni, Vasiliki Geropanta, Panagiotis Parthenios, Riccardo Porreca, Sofia Mavroudi, Antonios Vogiatzis, Lais-Ioanna Margiori, Christos Mpaknis, Eleutheria Papadosifou, Asimina Ioanna Sampani.
© 2021.
21 pages.
|
Elias Munapo.
© 2021.
16 pages.
|
Elias Munapo, Olusegun Sunday Ewemooje.
© 2021.
16 pages.
|
Zakhid Godzhaev, Sergey Senkevich, Viktor Kuzmin, Izzet Melikov.
© 2021.
19 pages.
|
Elias Munapo.
© 2021.
22 pages.
|
Diriba Kajela Geleta, Mukhdeep Singh Manshahia.
© 2021.
39 pages.
|
|
|