Physics-informed Neural Network Approach for Early Degradation Trajectory Prediction of Power Semiconductor Modules

Jie Kong, Yi Zhang, Yichi Zhang, Lukas Y Wick, Frederik Lillebæk Hansen, Dao Zhou, Huai Wang

Research output: Contribution to book/anthology/report/conference proceedingArticle in proceedingResearchpeer-review

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Abstract

DC power cycling tests in semiconductor modules induces repetitive thermal-mechanical stresses that accumulate as fatigue over time. This paper proposes a physics-informed neural network method to reduce the reliability testing time for power semiconductor modules. The main objective of this study is to reduce the testing time while maintain a satisfactory degradation trajectory prediction accuracy using physics-informed data-driven methods. The impact of testing noise and inconsistencies from device to device is attenuated. On-state saturation voltage temperature-dependence compensation and physics based loss term regularization technique are applied in Long Short-Term Memory (LSTM) architechture, which can enhance the accuracy of degradation curve prediction under early degradation. A total of 18 IGBT devices were tested in the power cycling experiments. The proposed degradation curve prediction model can achieve an average end-of-life (EOL) prediction accuracy of 90% using approximately 40% of the early degradation testing data, which can reduce the testing time by about 60%.
Original languageEnglish
Title of host publication2025 IEEE Applied Power Electronics Conference and Exposition (APEC)
Number of pages7
PublisherIEEE (Institute of Electrical and Electronics Engineers)
Publication date1 May 2025
Pages2380-2386
ISBN (Print)979-8-3315-1612-3
ISBN (Electronic)979-8-3315-1611-6
DOIs
Publication statusPublished - 1 May 2025
Event2025 IEEE Applied Power Electronics Conference and Exposition (APEC) -
Duration: 16 Mar 202320 Mar 2025

Conference

Conference2025 IEEE Applied Power Electronics Conference and Exposition (APEC)
Period16/03/202320/03/2025
SeriesI E E E Applied Power Electronics Conference and Exposition. Conference Proceedings
ISSN1048-2334

Keywords

  • DC power cycling
  • Degradation trajectory prediction
  • End-of-life
  • Neural Network
  • Reliability

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