Skip to the main content

Original scientific paper

https://doi.org/10.37798/2025743718

Comparative Analysis of Metaheuristic Algorithms for Parameters Estimation of Single-Cage and Double-Cage Induction Machine Models

Mihailo Micev ; University of Montenegro, Faculty of Electrical Engineering, Podgorica, Montenegro *
Martin Ćalasan ; University of Montenegro, Faculty of Electrical Engineering, Podgorica, Montenegro
Miljan Janketić ; CEDIS, Montenegrin distribution system operator, Podgorica, Montenegro

* Corresponding author.


Full text: english pdf 1.901 Kb

page 41-47

downloads: 54

cite


Abstract

This paper deals with the estimation of parameters of single-cage and double-cage induction machine models using HBA (Honey Badger Algorithm) and EO (Equilbrium Optimizer) algorithms. The input data for the estimation procedure are the induction machine nameplate data – power factor, starting, rated, and maximum torque. Based on the nameplate data, the criterion function is defined. The applicability of both considered methods is proven by
comparing the output characteristics of induction machine determined using parameters estimated with other literature known algorithm. The obtained results demonstrate that the applied algorithm is very efficient, accurate, and precise method for the parameters estimation of single-cage and double-cage induction machine models.

Keywords

induction machine; estimation; parameters; metaheuristic algorithms

Hrčak ID:

343164

URI

https://hrcak.srce.hr/343164

Publication date:

1.12.2025.

Visits: 137 *