An improved model of the artificial neural network for analysis and design of induction motors is presented. Parameters of the machine equivalent circuit are calculated using finite element method for a given motor geometry. The training of the neural network model is based on a decoupled system between geometrical variables and circuit parameters. This method efficiently improved the training and performance of the neural network model which can be used to predict machine performance and solve design optimization problems. Index terms-induction machine module, neural network, finite element method. H. C. J. de Jong, AC motor design with conventional and converter Haykin, Neural Networks, A Comprehensive Foundation. Macmillan
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