Title
A Dynamic Opposite Learning-Assisted Grey Wolf Optimizer
Abstract
The grey wolf optimization (GWO) algorithm is widely utilized in many global optimization applications. In this paper, a dynamic opposite learning-assisted grey wolf optimizer (DOLGWO) was proposed to improve the search ability. Herein, a dynamic opposite learning (DOL) strategy is adopted, which has an asymmetric search space and can adjust with a random opposite point to enhance the exploitation and exploration capabilities. To validate the performance of DOLGWO algorithm, 23 benchmark functions from CEC2014 were adopted in the numerical experiments. A total of 10 popular algorithms, including GWO, TLBO, PIO, Jaya, CFPSO, CFWPSO, ETLBO, CTLBO, NTLBO and DOLJaya were used to make comparisons with DOLGWO algorithm. Results indicate that the new model has strong robustness and adaptability, and has the significant advantage of converging to the global optimum, which demonstrates that the DOL strategy greatly improves the performance of original GWO algorithm.
Year
DOI
Venue
2022
10.3390/sym14091871
SYMMETRY-BASEL
Keywords
DocType
Volume
grey wolf optimization, dynamic-opposite learning, global optimization
Journal
14
Issue
ISSN
Citations 
9
2073-8994
0
PageRank 
References 
Authors
0.34
0
8
Name
Order
Citations
PageRank
Yang Wang1112.55
Chengyu Jin200.34
Qiang Li32014.81
Tianyu Hu400.34
Yunlang Xu531.39
Chao Chen6204.14
Yuqian Zhang700.34
Zhile Yang800.34