On line gnn based induction motor parameter estimation

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D. K. Chaturvedi
Mayank Pratap Singh
Md. Sharif Iqbal
Vikas Pratap Singh

Abstract

The induction motor is commonly used in industries due to its rugged construction and almost no maintenance. To precisely control the induction motor, accurate estimation of parameters is required. Artificial Neural Network (ANN) is used in the past for parameter estimation. The conventional ANN has its own problems such as learning issues, unknown size of ANN and its connections, etc. To overcome some of its problems generalized neural network is used in this paper. The GNN is trained to estimate parameters of three phase induction motor. Experimental setup is developed in DEI, which is consisting of a 415 V, 3Φ squirrel cage induction motor, data acquisition system and on-line parameter estimator.

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How to Cite
Chaturvedi, D. K., Pratap Singh, M., Sharif Iqbal, M., & Pratap Singh, V. (2015). On line gnn based induction motor parameter estimation. Power Research - A Journal of CPRI, 333–340. Retrieved from https://cprijournal.in/index.php/pr/article/view/729

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