2024
DOI: 10.3233/jifs-237331
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Bearing fault detection technology for automated machinery based on acoustic analysis

Yufeng Pang,
Xiaojuan Li

Abstract: Traditional fault detection methods in acoustic signal feature extraction of rolling bearings often make the signal denoising process complex due to low signal-to-noise ratio and weak fault features, making this method difficult to meet real-time requirements. Therefore, a fault detection model based on Fast-Renoriented SIFT feature extraction is proposed, which can quickly extract a large number of features from the original signal without the need for noise reduction processing and can effectively improve th… Show more

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