| publication name | Investigations of nonlinear induction motor model using the Gudermannian neural networks |
|---|---|
| Authors | Zulqurnain Sabir ,Muhammad Asif Zahoor Raja ,Dumitru Baleanu ,Mohamed R. Ali |
| year | 2021 |
| keywords | Gudermannain neural network, Fifth-order nonlinear induction motor model, Genetic algorithm, Statistical measures, Active-set technique. |
| journal | Thermal Science |
| volume | 2021 |
| issue | 2021 |
| pages | 261-261 |
| publisher | Not Available |
| Local/International | International |
| Paper Link | http://www.doiserbia.nb.rs/Article.aspx?ID=0354-98362100261S#.YTZ9W7AzbIV |
| Full paper | download |
| Supplementary materials | Not Available |
Abstract
This study aims to solve the nonlinear fifth-order induction motor model (FO-IMM) using the Gudermannian neural networks (GNNs) 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). GNNs are executed to discretize the nonlinear 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 nonlinear 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.