2024
DOI: 10.1088/1361-6501/ad2f07
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Fault diagnosis of rolling bearings based on dynamic convolution and dual-channel feature fusion under variable working conditions

Dechen Yao,
Tao Zhou,
Jianwei Yang
et al.

Abstract: Addressing the challenge of inconsistent data feature distribution and the difficulty of fault diagnosis in rolling bearings operating under variable conditions, a novel approach is proposed for bearings fault diagnosis. Dynamic convolution and dual-channel feature fusion are utilized in our method. In the shallow network layer, we employ a dual-channel convolutional structure, combining a large convolutional group with a small convolutional group to enhance the extraction of high-low frequency fault informati… Show more

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