There is no wealth like Knowledge
                            No Poverty like Ignorance
ARPN Journals

ARPN Journal of Engineering and Applied Sciences >> Call for Papers

ARPN Journal of Engineering and Applied Sciences

Enhancing cloud performance through grey wolf optimization: A robust approach to load balancing

Full Text Pdf Pdf
Author Kethineni Vinod Kumar, A. Rajesh and R. Balakrishna
e-ISSN 1819-6608
On Pages 933-946
Volume No. 19
Issue No. 14
Issue Date October 12, 2024
DOI https://doi.org/10.59018/072424
Keywords optimization of gray wolves, mouse customized golden eagle optimization, load-balancing system.


Abstract

Much progress in computing has resulted from the advent of cloud computing. End users may reap the benefits of a plethora of cloud technologies. Services are accessible through online login only. Load balancing is the cornerstone problem in cloud computing that has stumped researchers. Users are happier and systems are more productive when load balancing is used to distribute tasks evenly across all available CPU cores. Moreover, it would be difficult to maintain a load balance across resources since resources are often spread in a dispersed fashion. By using a met heuristics approach, several load-balancing techniques have sought to optimize system performance. In this research, we apply the Optimization of gray wolves (OGW) technique to balance loads reliably among all available resources. In the first step, the OGW algorithm looks for idle or busy nodes, and then it attempts to determine the threshold and fitness function for each of these nodes. Simulation findings in CloudSim confirmed that the suggested approach yields superior outcomes in terms of cost and reaction time.

Back

GoogleCustom Search



Seperator
    arpnjournals.com Publishing Policy Review Process Code of Ethics

Copyrights
© 2024 ARPN Publishers