2022
DOI: 10.1002/tee.23743
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Bearing Scratch Fault Detection by Three‐Dimensional Features and a Support Vector Machine

Abstract: Induction motors play a crucial role in various industries owing to their high robustness. The demand for early fault detection is getting attention to avoid serious damage to the machines. Bearing fault is the most common failure in induction motors and the possibility of scratches has a higher probability among the various classes of the bearing faults. Recently, the effective diagnosis method considering the progression and orientation of the scratch fault by using a machine learning algorithm have been rep… Show more

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