Mathematical and Computational Applications (Mar 2023)

Estimation of the Equivalent Circuit Parameters in Transformers Using Evolutionary Algorithms

  • Hector Ascencion-Mestiza,
  • Serguei Maximov,
  • Efrén Mezura-Montes,
  • Juan Carlos Olivares-Galvan,
  • Rodrigo Ocon-Valdez,
  • Rafael Escarela-Perez

DOI
https://doi.org/10.3390/mca28020036
Journal volume & issue
Vol. 28, no. 2
p. 36

Abstract

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The conventional methods of parameter estimation in transformers, such as the open-circuit and short-circuit tests, are not always available, especially when the transformer is already in operation and its disconnection is impossible. Therefore, alternative (non-interruptive) methods of parameter estimation have become of great importance. In this work, no-interruption, transformer equivalent circuit parameter estimation is presented using the following metaheuristic optimization methods: the genetic algorithm (GA), particle swarm optimization (PSO) and the gravitational search algorithm (GSA). These algorithms provide a maximum average error of 12%, which is twice as better as results found in the literature for estimation of the equivalent circuit parameters in transformers at a frequency of 50 Hz. This demonstrates that the proposed GA, PSO and GSA metaheuristic optimization methods can be applied to estimate the equivalent circuit parameters of single-phase distribution and power transformers with a reasonable degree of accuracy.

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