The IRMA Community
Newsletters
Research IRM
Click a keyword to search titles using our InfoSci-OnDemand powered search:
|
Opposition-Based Multi-Tiered Grey Wolf Optimizer for Stochastic Global Optimization Paradigms
Abstract
Researchers are increasingly using algorithms that are influenced by nature because of its ease and versatility, the key components of nature-inspired metaheuristic algorithms are investigated, involving divergence and adoption, investigation and utilization, and dissemination techniques. Grey Wolf Optimizer (GWO), a relatively recent algorithm influenced by the dominance structure and poaching deportment of grey wolves, is a very popular technique for solving realistic mechanical and optical technical challenges. Half of the recurrence in the GWO are committed to the exploration and the other half to exploitation, ignoring the importance of maintaining the correct equilibrium to ensure a precise estimate of the global optimum. To address this flaw, a Multi-tiered GWO (MGWO) is formulated, that further accomplishes an appropriate equivalence among exploration and exploitation, resulting in optimal algorithm efficiency. In comparison to familiar optimization methods, simulations relying on benchmark functions exhibit the efficacy, performance, and stabilization of MGWO.
Related Content
Vasudha Bahl, Anoop Bhola.
© 2022.
26 pages.
|
Sunanda Hazra, Provas Kumar Roy.
© 2022.
22 pages.
|
Andrey A. Kovalev, Dmitriy A. Kovalev, Victor S. Grigoriev, Vladimir Panchenko.
© 2022.
17 pages.
|
Daniel Osezua Aikhuele, Ayodele A. Periola, Elijah Aigbedion, Herold U. Nwosu.
© 2022.
20 pages.
|
Kawtar Tifidat, Noureddine Maouhoub, Abdelaaziz Benahmida.
© 2022.
23 pages.
|
Nuno Domingues, Jorge Mendonça Costa, Rui Miguel Paulo.
© 2022.
26 pages.
|
Abdelouadoud Loukriz, Djamel Saigaa, Abdelhammid Kherbachi, Mustapha Koriker, Ahmed Bendib, Mahmoud Drif.
© 2022.
19 pages.
|
|
|