2024
DOI: 10.3390/e26060480
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Application of C-InGAN Model in Interpretable Feature of Bearing Fault Diagnosis

Wanyi Yang,
Tao Liang,
Jianxin Tan
et al.

Abstract: Although traditional fault diagnosis methods are proficient in extracting signal features, their diagnostic interpretability remains challenging. Consequently, this article proposes a conditionally interpretable generative adversarial network (C-InGAN) model for the interpretable feature fault diagnosis of bearings. Initially, the vibration signal is denoised and transformed into a frequency domain signal. The model consists of the two primary networks, each employing a convolutional layer and an attention mod… Show more

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