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Computationally Efficient, Real-Time, and Embeddable Prognostic Techniques for Power Electronics

机译:电力电子计算高效,实时和可嵌入的预测技术

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Power electronics are increasingly important in new generation vehicles as critical safety mechanical subsystems are being replaced with more electronic components. Hence, it is vital that the health of these power electronic components is monitored for safety and reliability on a platform. The aim of this paper is to develop a prognostic approach for predicting the remaining useful life of power electronic components. The developed algorithms must also be embeddable and computationally efficient to support on-board real-time decision making. Current state-of-the-art prognostic algorithms, notably those based on Markov models, are computationally intensive and not applicable to real-time embedded applications. In this paper, an isolated-gate bipolar transistor (IGBT) is used as a case study for prognostic development. The proposed approach is developed by analyzing failure mechanisms and statistics of IGBT degradation data obtained from an accelerated aging experiment. The approach explores various probability distributions for modeling discrete degradation profiles of the IGBT component. This allows the stochastic degradation model to be efficiently simulated, in this particular example ∼1000 times more efficiently than Markov approaches.
机译:随着关键安全机械子系统被更多的电子组件所取代,电力电子在新一代车辆中的重要性越来越高。因此,至关重要的是,在平台上监视这些电力电子组件的健康状况以确保安全性和可靠性。本文的目的是开发一种预测方法,以预测电力电子组件的剩余使用寿命。开发的算法还必须是可嵌入的并且计算效率高,以支持机载实时决策。当前最先进的预后算法,尤其是基于马尔可夫模型的预后算法,计算量大,不适用于实时嵌入式应用程序。本文将隔离栅双极型晶体管(IGBT)用作预后发展的案例研究。通过分析故障机理和从加速老化实验获得的IGBT退化数据的统计数据,开发出了该方法。该方法探索了各种概率分布,以对IGBT组件的离散降级曲线进行建模。这允许对随机退化模型进行有效地仿真,在此特定示例中,效率比Markov方法高约1000倍。

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