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Dynamic Group Learning Distributed Particle Swarm Optimization for Large-Scale Optimization and Its Application in Cloud Workflow Scheduling

Authors
Wang, Zi-JiaZhan, Zhi-HuiYu, Wei-JieLin, YingZhang, JieGu, Tian-LongZhang, Jun
Issue Date
Jun-2020
Publisher
IEEE Advancing Technology for Humanity
Keywords
Adaptive renumber strategy (ARS); dynamic group learning distributed particle swarm optimization (DGLDPSO); dynamic group learning strategy; large-scale cloud workflow scheduling; master-slave multigroup distributed
Citation
IEEE Transactions on Cybernetics, v.50, no.6, pp 2715 - 2729
Pages
15
Indexed
SCIE
SCOPUS
Journal Title
IEEE Transactions on Cybernetics
Volume
50
Number
6
Start Page
2715
End Page
2729
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/115417
DOI
10.1109/TCYB.2019.2933499
ISSN
2168-2267
2168-2275
Abstract
Cloud workflow scheduling is a significant topic in both commercial and industrial applications. However, the growing scale of workflow has made such a scheduling problem increasingly challenging. Many current algorithms often deal with small-or medium-scale problems (e.g., less than 1000 tasks) and face difficulties in providing satisfactory solutions when dealing with the large-scale problems, due to the curse of dimensionality. To this aim, this article proposes a dynamic group learning distributed particle swarm optimization (DGLDPSO) for large-scale optimization and extends it for the large-scale cloud workflow scheduling. DGLDPSO is efficient for large-scale optimization due to its following two advantages. First, the entire population is divided into many groups, and these groups are coevolved by using the master-slave multigroup distributed model, forming a distributed PSO (DPSO) to enhance the algorithm diversity. Second, a dynamic group learning (DGL) strategy is adopted for DPSO to balance diversity and convergence. When applied DGLDPSO into the large-scale cloud workflow scheduling, an adaptive renumber strategy (ARS) is further developed to make solutions relate to the resource characteristic and to make the searching behavior meaningful rather than aimless. Experiments are conducted on the large-scale benchmark functions set and the large-scale cloud workflow scheduling instances to further investigate the performance of DGLDPSO. The comparison results show that DGLDPSO is better than or at least comparable to other state-of-The-Art large-scale optimization algorithms and workflow scheduling algorithms. © 2013 IEEE.
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ERICA 공학대학 (SCHOOL OF ELECTRICAL ENGINEERING)
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