2022
DOI: 10.48550/arxiv.2208.07070
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A Vision Transformer-Based Approach to Bearing Fault Classification via Vibration Signals

Abstract: Rolling bearings are the most crucial components of rotating machinery. Identifying defective bearings in a timely manner may prevent the malfunction of an entire machinery system. The mechanical condition monitoring field has entered the big data phase as a result of the fast advancement of machine parts. When working with large amounts of data, the manual feature extraction approach has the drawback of being inefficient and inaccurate. Data-driven methods like the Deep Learning method have been successfully … Show more

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