ANN based double stator asynchronous machine diagnosis taking torque change into account

Abstract

In this work the strategy of the artificial intelligence (neural networks) is used to detect and localize the defects of the double stator asynchronous machine. In fact, several neural networks have been applied to the detection of defects. Then, we used a selector which allows activating only one network at a time. In this case, the selected network detects only defects corresponding to the torque developed by asynchronous machine. Finally, the simulation results were presented to show the effectiveness of artificial neural networks for automatic fault diagnosis

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Keywords

Artificial Neuron Networks (ANN), Detection, Double stator asynchronous machine, Failure, Root Mean Square (RMS), Artificial intelligence, Backpropagation, Electric fault currents, Industrial engineering, Power converters, Power electronics, Stators, Artificial neural networks, Automatic fault diagnosis;, Electrical drives, International symposium, Simulation results, Neural networks

Citation

SPEEDAM 2008 - International Symposium on Power Electronics, Electrical Drives, Automation and Motion; Ischia; Italy; 11 June 2008 through 13 June 2008; Category number08EX2053; Code 73530

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