91 / 2023-09-18 16:12:37
A Data-Driven Approach for Power IGBT Operation State Prediction Based on domain adapted BiLSTM networks
IGBT power modules, Operation state prediction, Channel self-attention mechanism, Domain adaptation, Long short-term memory networks
终稿
Shuhan Deng / South China University of Technology
Weihua Li / South China University of Technology
Ke Yue / South China University of Technology
Jipu Li / South China University of Technology
Ruyi Huang / South China University of Technology
Zhuyun Chen / South China University of Technology
Insulated gate bipolar transistor (IGBT), as a power semiconductor element used to convert direct and alternating currents, has become a key component in the fields of new energy vehicles, wind power conversion, and extra-high voltage drives. IGBT is subject to a variety of faults and aging failures when operating at high loads. A failure of an IGBT can cause the entire electrical system to fail, resulting in the destruction of the system and other related components. Therefore, accurate prediction of the operation state of IGBT is crucial for optimal work of electrical systems. This work proposes a data-driven approach to predicting the RUL of IGBTs. The approach utilizes a deep learning (DL) framework based on bidirectional long short-term memory (BiLSTM) networks. This framework allows for quick processing of timing aging data and provides accurate prediction results. Domain-adversarial neural network is also applied to the LSTM network framework to reduce the distribution differences between the source domain and the target domain, and solve the problem of predicting the operation state of IGBT under unknown modules. To evaluate the performance of our proposed approach, we utilized the NASA Ames Laboratory Prognostics Center of Excellence IGBTs accelerated aging database. Experimental results demonstrate that our method can provide correct predictions during the early stages of IGBT degradation, even under unknown operating conditions. Furthermore, the method updates the prediction results throughout the aging process.
重要日期
  • 会议日期

    11月02日

    2023

    11月04日

    2023

  • 12月15日 2023

    初稿截稿日期

  • 12月20日 2023

    注册截止日期

主办单位
IEEE Instrumentation and Measurement Society
Xidian University
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