2023
DOI: 10.1088/1361-6501/acf515
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An interpretable health indicator for bearing condition monitoring based on semi-supervised autoencoder latent space variance maximization

Xieyi Chen,
Yi Wang,
Lihua Meng
et al.

Abstract: Effective health indicator (HI) construction can help equipment managers detect the abnormal state of rotating machinery quickly. However, although the current deep learning-based HI construction methods have good life prediction value, most of them lose the ability to detect device anomalies and little work has been done on model interpretability. Therefore, an interpretable HI construction method based on semi-supervised autoencoder (AE) latent space variance maximization (SSALSVM) was proposed to monitor th… Show more

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