Title
INVESTIGATIONS OF NON-LINEAR INDUCTION MOTOR MODEL USING THE GUDERMANNIAN NEURAL NETWORKS
Date Issued
01 January 2022
Resource Type
Journal
Author(s)
Raja M.A.Z.
Baleanu D.
Sadat R.
Ali M.R.
Abstract
This study aims to solve the non-linear fifth-order induction motor model (FO-IMM) using the Gudermannian neural networks (GNN) along with the optimization procedures of global search as a genetic algorithm together with the quick local search process as active-set technique (GNN-GA-AST). The GNN are executed to discretize the non-linear FO-IMM to prompt the fitness function in the procedure of mean square error. The exactness of the GNN-GA-AST is observed by comparing the obtained results with the reference results. The numerical performances of the stochastic GNN-GA-AST are provided to tackle three different variants based on the non-linear FO-IMM to authenticate the consistency, significance and efficacy of the designed stochastic GNN-GA-AST. Additionally, statistical illustrations are available to authenticate the precision, accuracy and convergence of the designed stochastic GNN-GA-AST.
Start page
3399
End page
3412
Volume
26
Issue
4
Scopus EID
2-s2.0-85135516747
Source
Thermal Science
Resource of which it is part
Thermal Science
ISSN of the container
03549836
Sources of information: Directorio de Producción Científica Scopus