Logo do repositório
 
A carregar...
Miniatura
Publicação

Salp Swarm Optimization

Utilize este identificador para referenciar este registo.

Orientador(es)

Resumo(s)

In the crowded environment of bio-inspired population-based metaheuristics, the Salp Swarm Optimization (SSO) algorithm recently appeared and immediately gained a lot of momentum. Inspired by the peculiar spatial arrangement of salp colonies, which are displaced in long chains following a leader, this algorithm seems to provide an interesting optimization performance. However, the original work was characterized by some conceptual and mathematical flaws, which influenced all ensuing papers on the subject. In this manuscript, we perform a critical review of SSO, highlighting all the issues present in the literature and their negative effects on the optimization process carried out by this algorithm. We also propose a mathematically correct version of SSO, named Amended Salp Swarm Optimizer (ASSO) that fixes all the discussed problems. We benchmarked the performance of ASSO on a set of tailored experiments, showing that it is able to achieve better results than the original SSO. Finally, we performed an extensive study aimed at understanding whether SSO and its variants provide advantages compared to other metaheuristics. The experimental results, where SSO cannot outperform simple well-known metaheuristics, suggest that the scientific community can safely abandon SSO.

Descrição

Castelli, M., Manzoni, L., Mariot, L., Nobile, M. S., & Tangherloni, A. (2022). Salp Swarm Optimization: A critical review. Expert Systems with Applications, 189, 1-12. [116029]. [Advanced online publication on 16 October 2021]. Doi: https://doi.org/10.1016/j.eswa.2021.116029.---%ABS1% ---Funding Information: This work was supported by national funds through the FCT (Fundação para a Ciência e a Tecnologia), Portugal by the projects GADgET ( DSAIPA/DS/0022/2018 ) and the financial support from the Slovenian Research Agency, Republic of Slovenia (research core funding no. P5-0410 ).

Palavras-chave

Metaheuristics Global optimization Bound constrained optimization Shift invariant functions General Engineering Computer Science Applications Artificial Intelligence

Contexto Educativo

Citação

Projetos de investigação

Projeto de investigaçãoVer mais

Unidades organizacionais

Fascículo