An Accurate and Intelligent Approach to Predicting the Power Device Fatigue Failure Process | IEEE Journals & Magazine | IEEE Xplore

An Accurate and Intelligent Approach to Predicting the Power Device Fatigue Failure Process


Abstract:

It is significant to study power device package fatigue failure as it seriously affects the reliability of power systems. Nevertheless, the research of the power device f...Show More

Abstract:

It is significant to study power device package fatigue failure as it seriously affects the reliability of power systems. Nevertheless, the research of the power device failure process is insufficient. In this article, an accurate and intelligent approach is proposed to predict the power device fatigue failure process with multiple fatigue sampling method (MFSM) and minimal component unit method (MCUM). The MFSM is proposed to accurately build the power device lifetime model. It is accomplished through the multiple sampling fatigue morphology evolution process of solder layers combined with the fatigue parameter. Morphology evolution is detected by scanning acoustic microscope technology under an accelerated lifetime test. The fatigue parameter is obtained through finite-element analysis (FEA) by establishing each sampling geometry model. Then, the lifetime model is determined by their same failure area fraction (Fs). In particular, digital image processing is applied to describe solder layer shapes in detail, which is also the key to building a real FEA geometry model. The MCUM is utilized to complete the prediction of failure process, where solder layers are divided into minimal units and the FEA solution and location information of each unit are known. Based on the lifetime model, the failure area can be determined and the fatigue failure process can be finished intelligently by cosimulation. The proposed method is accurate and intelligent enough in predicting the failure of solder layers, which is more helpful for planned device management.
Published in: IEEE Transactions on Power Electronics ( Volume: 39, Issue: 3, March 2024)
Page(s): 3568 - 3579
Date of Publication: 05 December 2023

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