Non-Destructive Failure Analysis of Power Devices via Time- Domain Reflectometry

K. Sharma, Simon Kamm, V. Afanasenko, K. M. Barón, I. Kallfass
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引用次数: 4

Abstract

In power electronic applications, transistors are a vital component. They are, however, susceptible to failures due to degradation of the interconnections and the chip itself. This paper presents a non-destructive approach for failure detection and location in power electronic devices using time-domain reflectometry. The proposed measurement and data generation method is applied to a silicon-carbide power transistor where several characteristics (R, L, C, open, short) and the location of the failure is simulated and characterized. Moreover, the method is also used to find the intrinsic properties of the transistor such as parasitic inductance and capacitance. The data generated is mapped to physical equations, however, the reflected signal of the time-domain reflectometry can be noisy due to multiple discontinuities in the transmission path. Therefore, the simulation and measurement data can be used to train hybrid machine learning models for parameter extraction which automates the failure analysis in Industry4.0 processes to ensure a smart and reliable manufacturing process.
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基于时域反射法的电力器件无损失效分析
在电力电子应用中,晶体管是至关重要的部件。然而,由于互连和芯片本身的退化,它们容易发生故障。本文提出了一种利用时域反射法进行电力电子器件故障检测和定位的无损方法。将所提出的测量和数据生成方法应用于碳化硅功率晶体管,模拟和表征了几种特性(R、L、C、开、短)和故障位置。此外,该方法还可用于计算晶体管的寄生电感和电容等固有特性。产生的数据被映射到物理方程中,然而,时域反射计的反射信号由于传输路径中的多个不连续点而存在噪声。因此,仿真和测量数据可用于训练混合机器学习模型,用于参数提取,从而自动化工业4.0过程中的故障分析,以确保智能可靠的制造过程。
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