2019
DOI: 10.36001/ijphm.2019.v10i4.2615
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Simulation-driven Deep Classification of Bearing Faults from Raw Vibration Data

Abstract: The industry is moving towards maintenance strategies that consider component health, which require extensive collection and analysis of data. Condition monitoring methods that require manual feature extraction and analysis, become infeasible on an industrial scale. Machine learning algorithms can be used to automatically detect and classify faults, however, obtaining sufficient data for training is required for deep learning and other data-driven classification approaches. Data from healthy machine operation … Show more

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