PSO, a Swarm Intelligence-Based Evolutionary Algorithm as a Decision-Making Strategy: A Review
Ver/
Fecha
2022-02-24Autor
Luviano Cruz, David
Martinez Gomez, Erwin Adan
Pérez Domínguez, Luis
206592
Ramírez-Ochoa, Dynhora-Danheyda
Ramírez-Ochoa, Dynhora-Danheyda
206592
Metadatos
Mostrar el registro completo del ítemResumen
Companies are constantly changing in their organization and the way they treat information.
In this sense, relevant data analysis processes arise for decision makers. Similarly, to perform decisionmaking analyses, multi-criteria and metaheuristic methods represent a key tool for such analyses.
These analysis methods solve symmetric and asymmetric problems with multiple criteria. In such a
way, the symmetry transforms the decision space and reduces the search time. Therefore, the objective
of this research is to provide a classification of the applications of multi-criteria and metaheuristic
methods. Furthermore, due to the large number of existing methods, the article focuses on the
particle swarm algorithm (PSO) and its different extensions. This work is novel since the review of the
literature incorporates scientific articles, patents, and copyright registrations with applications of the
PSO method. To mention some examples of the most relevant applications of the PSO method; route
planning for autonomous vehicles, the optimal application of insulin for a type 1 diabetic patient,
robotic harvesting of agricultural products, hybridization with multi-criteria methods, among others.
Finally, the contribution of this article is to propose that the PSO method involves the following steps:
(a) initialization, (b) update of the local optimal position, and (c) obtaining the best global optimal
position. Therefore, this work contributes to researchers not only becoming familiar with the steps,
but also being able to implement it quickly. These improvements open new horizons for future lines
of research.
Colecciones
El ítem tiene asociados los siguientes archivos de licencia: