Remaining Useful Life Prediction for Complex Electro-Mechanical System Based on Conditional Generative Adversarial Networks
编号:29 访问权限:公开 更新:2022-12-19 18:27:33 浏览:235次 张贴报告

报告开始:暂无开始时间(Asia/Shanghai)

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摘要
Remaining Useful Life (RUL) prediction is of sig­nificance to provide valuable information for implementing condition-based maintenance and repair. Except for the difficulty on formulating the physical model of the complex electro­-mechanical system, another challenge is how to utilize the sparse samples to achieve accurate prediction results. To address this issue, this paper proposes a novel RUL prediction method based on the sample augmentation by the improved Condi­tional Generative Adversarial Networks (CGAN). The aircraft Auxiliary Power Unit (APU) is taken as a typical complex electro-mechanical object. Two-dimensional condition monitoring samples of the aircraft APU contain the potential degradation information, which bring difficulty for formulating an accurate and stable RUL prediction model. First, its two-dimension condition monitoring samples are augmented by the improved CGAN. Then, the augmented samples and the original samples are both utilized as the input of the RUL prediction method. Through comparison experiments on a practical sample set, the effectiveness of the proposed method is evaluated by different RUL prediction methods and combinations of samples.
关键词
Electro-Mechanical System, Prognostic Health Management, Sample Augmentation, Conditional Generative Ad¬versarial Networks.
报告人
易从 段
master Guilin University Of Electronic Technology

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重要日期
  • 会议日期

    11月30日

    2022

    12月02日

    2022

  • 11月30日 2022

    初稿截稿日期

  • 12月24日 2022

    报告提交截止日期

  • 04月13日 2023

    注册截止日期

主办单位
Harbin Insititute of Technology
China Instrument and Control Society
Heilongjiang Instrument and Control Society
Chinese Institute of Electronics
IEEE I&M Society Harbin Chapter
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