Advances in Sand Cat Swarm Optimization: A Comprehensive Study
Künye
ANKA, Ferzat & Nazim AGHAYEV. "Advances in Sand Cat Swarm Optimization: A Comprehensive Study". Archives of Computational Methods in Engineering, (2025): 1-44.Özet
This study provides an in-depth review and analysis of the nature-inspired Sand Cat Swarm Optimization (SCSO) algorithm.
The SCSO algorithm effectively focuses on exploring solution areas inspired by sand cat hearing and finding the most suitable
solutions for their hunting behavior. This algorithm is easily adaptable to various problems due to its stability, low-cost,
flexibility, simple implementation, simplicity, derivative-free mechanism, and reasonable computation time. For these reasons,
although it was published recently, it has begun to attract the attention of researchers. SCSO-based research has been
presented in prestigious international journals such as Elsevier, Springer, MDPI, and IEEE since its inception in 2022. The
studies cited in this paper are examined in three categories: improved, hybrid, and adapted. Research trends show that 39,
21, and 40% of SCSO-based studies fall into these three categories, respectively. Additionally, research on solving various
problems inspired by the SCSO algorithm is discussed from two different perspectives: global optimizations and real-world
applications. Analysis of the applications shows that 15 and 85% of the studies belong to these two fields, respectively.