基于演化模糊退化模型的功率半导体器件数据驱动预测

Khoury Boutrous, I. Bessa, V. Puig, F. Nejjari, R. Palhares
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引用次数: 2

摘要

基于半导体器件(如绝缘栅双极晶体管(igbt))的功率转换器系统的应用越来越多,这促使了对其预后和健康管理策略的研究。然而,基于物理的半导体退化建模通常是复杂的,并且依赖于不确定的参数,这促使使用数据驱动的方法。本文研究了基于退化数据流学习的演化模糊模型的igbt数据驱动预测问题。该模型依赖于两类退化特征:一组对退化阶段非常敏感的特征作为模糊模型的前提变量,另一组提供良好的趋势性和单调性的特征作为模糊模型的自回归结果进行退化预测。该策略允许获得可解释的退化模型,当从被测单元(UUT)实时获得更多的退化数据时,该模型得到了改进。此外,基于模糊的剩余使用寿命(RUL)预测具有不确定性量化机制,可以更好地辅助决策者。然后将提出的方法用于考虑NASA艾姆斯研究中心加速老化的IGBT数据集的RUL预测。
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Data-driven Prognostics based on Evolving Fuzzy Degradation Models for Power Semiconductor Devices
The increasing application of power converter systems based on semiconductor devices such as Insulated-Gate Bipolar Transistors (IGBTs) has motivated the investigation of strategies for their prognostics and health management. However, physicsbased degradation modelling for semiconductors is usually complex and depends on uncertain parameters, which motivates the use of data-driven approaches. This paper addresses the problem of data-driven prognostics of IGBTs based on evolving fuzzy models learned from degradation data streams. The model depends on two classes of degradation features: one group of features that are very sensitive to the degradation stages is used as a premise variable of the fuzzy model, and another group that provides good trendability and monotonicity is used for the auto-regressive consequent of the fuzzy model for degradation prediction. This strategy allows obtaining interpretable degradation models, which are improved when more degradation data is obtained from the Unit Under Test (UUT) in real time. Furthermore, the fuzzy-based Remaining Useful Life (RUL) prediction is equipped with an uncertainty quantification mechanism to better aid decisionmakers. The proposed approach is then used for the RUL prediction considering an accelerated aging IGBT dataset from the NASA Ames Research Center.
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