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Data Driven Prognostics for Failure of Power Semiconductor Packages

机译:功率半导体封装失效的数据驱动预测

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Power chips such as Metal Oxide Field Effect Transistors (MOSFETs) are widely used and can be found in many electronics and electrical products. The ability to predict the degradation of such power electronic devices can minimise the risk of their failure during operation and support maintenance planning operations. In this study, a data driven prognostics approach using system identification and machine learning modelling technique is developed and used to predict the time-to-failure of MOSFET TO-220 packages associated with delamination failure mode of the die attachment. Run-to-failure data under thermal overstress loading conditions for power chip devices, available from the NASA Prognostics Centre data repository, is used to develop a data-driven prognostic model that can be used to predict the time-to-failure (TtF) of power MOSFETs under accelerated test loads. An increment in ON-state resistance of the MOSFET is used as precursor for device failure through die-attach degradation. Results from this research show that when monitored data from a damage indicator for a particular failure mode of an electronic package changes dynamically, data-driven modelling using engineering control techniques such as State-Space representation is capable of producing reliable, multi-step ahead predictions for the time-to-failure of the device.
机译:诸如金属氧化物场效应晶体管(MOSFET)之类的功率芯片已被广泛使用,并且可以在许多电子和电气产品中找到。预测此类电力电子设备退化的能力可以将其在运行期间发生故障的风险降到最低,并支持维护计划运营。在这项研究中,开发了一种使用系统识别和机器学习建模技术的数据驱动的预测方法,并用于预测与管芯附件的分层失效模式相关的MOSFET TO-220封装的失效时间。 NASA Prognostics Center数据存储库提供的功率芯片设备在热超负荷条件下的运行失败数据可用于开发数据驱动的预测模型,该模型可用于预测失效时间(TtF)加速测试负载下的功率MOSFET的数量。 MOSFET的导通状态电阻的增加用作通过管芯附着退化导致器件故障的前兆。这项研究的结果表明,当针对电子包装的特定故障模式的来自损坏指示器的监视数据动态变化时,使用诸如状态空间表示之类的工程控制技术进行数据驱动的建模能够生成可靠的多步提前预测。设备的故障时间。

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