Whale optimization algorithm: a systematic review of contemporary applications, modifications and developments
Loading...
Files
Date
Journal Title
Journal ISSN
Volume Title
Publisher
Neural Computing and Applications
DOI
Abstract
Whale optimization algorithm (WOA) is a recently developed swarm-based meta-heuristic algorithm that is based on the
bubble-net hunting maneuver technique—of humpback whales—for solving the complex optimization problems. It has
been widely accepted swarm intelligence technique in various engineering fields due to its simple structure, less required
operator, fast convergence speed and better balancing capability between exploration and exploitation phases. Owing to its
optimal performance and efficiency, the applications of the algorithm have extensively been utilized in multidisciplinary
fields in the recent past. This paper investigates further into WOA of its applications, modifications, and hybridizations
across various fields of engineering. The description of the strengths, weaknesses and opportunities to support future
research are also explored. The Systematic Literature Review is opted as a method to disseminate the findings and gap from
the existing literature. The authors select eighty-two (82) articles as a primary studies out of nine hundred and thirty-nine
(939) articles between 2016 and 2020. As per our result, WOA-based techniques are applied in 5 fields and 17 subfields of
various engineering domains. 61% work has been found on modification, 27% on hybridization and 12% on multiobjective variants of WOA techniques. The growing research trend on WOA is expected to continue into the future. The
review presented in the paper has the potential to motivate expert researchers to propose more novel WOA-based
algorithms, and it can serve as an initial reading material for a novice researcher