Review: Application of CMAC neural network to the control of induction motor drives
Applied Soft Computing
An adaptive speed controller for induction motor drives using adaptive neuro-fuzzy inference system
ICIC'07 Proceedings of the intelligent computing 3rd international conference on Advanced intelligent computing theories and applications
An educational tool for artificial neural networks
Computers and Electrical Engineering
IEEE Transactions on Systems, Man, and Cybernetics, Part A: Systems and Humans
Vector control methods for induction machines: an overview
IEEE Transactions on Education
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Induction motors (IMs) are the most used electromechanic machines in industrial applications. Their control has become the subject of many studies since the 70s, and there have been several approaches to achieve high-performance adjustable speed drivers (ASDs). The review presented in this article can support the state of some related researches, since it deals with current state-of-the-art of Artificial Neural Networks (ANNs) oriented to experiments that perform motion control with induction motors. It summarizes many previous works focused on IM and can help the reader to have a starting point to begin their own research on choosing a correct type of Neural Network (NN). The paper provides a list of ANNs used to improve the ASD-control, extending the IM-driver life and achieving proper motor operation, their size and performance. A good match between IM parameter values and the data that the controller needs for the induction machine is imperative. Artificial Intelligence (AI) is a helpful tool to achieve this. The summary will also present an overview of different ANN-based drive approaches.