A Novel Physics-embedded Digital twin-assisted Bearings Fault Diagnostic Framework Under Unseen Working Conditions
编号:10 访问权限:仅限参会人 更新:2025-06-10 11:49:24 浏览:29次 口头报告

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摘要
Fault diagnosis is essential to ensure bearing safety in industrial applications. Many existing diagnostic methods require large scales of data from a full range of working conditions. However, the structure and working conditions differences between machines lead to significant variation in data distribution, making it difficult to diagnostic with unseen samples. To handle this, a novel physics-embedded digital twin-assisted bearings fault diagnostic framework (PE-DaT) under unseen working conditions is proposed, effectively leveraging the inclusivity of the denoising diffusion probabilistic model (DDPM, i.e. diffusion model) and the idea of digital twin method for unseen sample acquisition. In this digital twin-assisted diagnostic framework, a physics-embedded diffusion net (DiffPhysiNet) is proposed for working information embedding and fault mechanism integration. Specifically, signals under limited working conditions with extended dynamic information are taken as the input for forward noising process. Then, DiffPhysiNet reconstructs signals under extended working conditions by a reverse denoising process. A physics-embedded UNet (Physi-UNet) is designed to extract working information and fault mechanism during the reverse process. Ultimately, extensive experiments on two bearing datasets (BJTU-RAO and PU) validate the effectiveness of our method compared with the state-of-the-art baselines and the ablution test confirms the significant role of DiffPhysiNet.
关键词
Deep learning,Diffusion model,Digital twin,Machinery fault diagnosis
报告人
Zhibin Guo
PhD. Student Central South University

稿件作者
Zhibin Guo Central South University
Tiantian Wang Hunan University;Central South University
Yuntian Ta Central South University
Buyao Yang Hunan University
Jingsong Xie Central South University
Jinglong Chen Xi’an Jiaotong University
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重要日期
  • 会议日期

    08月01日

    2025

    08月04日

    2025

  • 06月23日 2025

    初稿截稿日期

主办单位
中国机械工程学会设备智能运维分会
承办单位
新疆大学
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