2024
DOI: 10.3390/en17163956
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Improved Fault Detection Using Shifting Window Data Augmentation of Induction Motor Current Signals

Robert Wright,
Poria Fajri,
Xingang Fu
et al.

Abstract: Deep learning models have demonstrated potential in Condition-Based Monitoring (CBM) for rotating machinery, such as induction motors (IMs). However, their performance is significantly influenced by the size of the training dataset and the way signals are presented to the model. When trained on segmented signals over a fixed period, the model’s accuracy can decline when tested on signals that differ from the training interval or are randomly sampled. Conversely, models utilizing data augmentation techniques ex… Show more

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