2023
DOI: 10.1088/1361-6501/ad086a
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A fusion non-convex group sparsity difference method and its application in rolling bearing fault diagnosis

Huiyong Wei,
Gaigai Cai,
Zeyu Liu
et al.

Abstract: Bearing fault is a common factor leading to machine failures. How to extract the periodic transient signal due to bearing faults submerged in strong noise is a challenging problem for bearing fault diagnosis. Total variation denoising is a method used to remove noise and extract features. However, it solely relies on the sparsity of the first-order difference of the signal, resulting in the loss of important features and underestimation of amplitude. Additionally, it fails to capture the periodicity of the sig… Show more

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