4.7 Article

An Improved Reptile Search Algorithm with Ghost Opposition-based Learning for Global Optimization Problems

Journal

JOURNAL OF COMPUTATIONAL DESIGN AND ENGINEERING
Volume 10, Issue 4, Pages 1390-1422

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/jcde/qwad048

Keywords

reptile search algorithm; local escaping operator; restart strategy; ghost opposition-based learning; benchmark function test; engineering problem

Ask authors/readers for more resources

In 2021, a meta-heuristic algorithm called Reptile Search Algorithm (RSA) was proposed, which simulates the cooperative predatory behavior of crocodiles. However, RSA may get stuck in local optima due to the influence of crocodile predation mechanism, resulting in poor overall performance. To address this, the Improved RSA with Ghost Opposition-based Learning (IRSA) is proposed, which introduces a local escape operator and restart strategy to improve exploration ability and balance exploration and exploitation. Experimental results on benchmark functions demonstrate that IRSA has good optimization performance, robustness, and effectiveness in solving practical problems.
In 2021, a meta-heuristic algorithm, Reptile Search Algorithm (RSA), was proposed. RSA mainly simulates the cooperative predatory behavior of crocodiles. Although RSA has a fast convergence speed, due to the influence of the crocodile predation mechanism, if the algorithm falls into the local optimum in the early stage, RSA will probably be unable to jump out of the local optimum, resulting in a poor comprehensive performance. Because of the shortcomings of RSA, introducing the local escape operator can effectively improve crocodiles' ability to explore space and generate new crocodiles to replace poor crocodiles. Benefiting from adding a restart strategy, when the optimal solution of RSA is no longer updated, the algorithm's ability to jump out of the local optimum is effectively improved by randomly initializing the crocodile. Then joining Ghost opposition-based learning to balance the IRSA's exploitation and exploration, the Improved RSA with Ghost Opposition-based Learning for the Global Optimization Problem (IRSA) is proposed. To verify the performance of IRSA, we used nine famous optimization algorithms to compare with IRSA in 23 standard benchmark functions and CEC2020 test functions. The experiments show that IRSA has good optimization performance and robustness, and can effectively solve six classical engineering problems, thus proving its effectiveness in solving practical problems.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available