2024
DOI: 10.1088/1361-6501/ad2bc9
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A clustering multi-stage training transfer learning framework for cross simulation domain and experimental domain fault diagnosis

Shubo Yu,
Zhansheng Liu,
Chen Zhao
et al.

Abstract: Deep learning methods have demonstrated remarkable achievements in the field of fault diagnosis for rotating machinery. However, their effectiveness heavily relies on high-quality labeled samples, which presents a significant challenge owing to the limited availability of such data in engineering applications. To address this realistic issue, we propose a novel simulation-driven transfer learning model called the Clustering Multi-Stage Training Transfer Learning Framework(CMSTL) for fault diagnosis of rolling … Show more

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