基于高斯过程回归的绝缘栅双极晶体管预测

Sheng Hong, Zheng Zhou, Chuan Lv, Hongyi Guo
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引用次数: 8

摘要

功率绝缘栅双极晶体管(IGBT)模块的失效问题主要与热老化和热机械老化机制有关。这种老化会导致设备性能的下降和故障的发生,从而导致设备失效,带来巨大的损失和灾难性的影响。为了避免这些故障,监控设备运行和检测老化状态仍然是优先考虑的问题。本文首先通过对铅基焊料结构和焊料疲劳失效的分析,阐述了功率循环失效机理。其次,采用支持不确定性表示的高斯过程回归(GPR)模型实现了对IGBT结温的预测;在此基础上,将探地雷达预测算法与神经网络算法进行了比较,并引入动态模型,提高了IGBT健康评估的预测精度。同时,探地雷达的计算复杂度更简单,耗时更少。
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Prognosis for insulated gate bipolar transistor based on Gaussian Process Regression
The failure issues of power insulated gate bipolar transistor (IGBT) modules are mainly related to thermal and thermo-mechanical aging mechanism. This aging causes degradation of the device performance and faults which can lead to the failure bringing huge loss and catastrophic influence. To avoid those failures, the monitoring of the device operation and the detection of an aging state remain as a priority. This paper, at first, describes the failure mechanism of power cycling by analyzing of the structure of lead-based solder and joint failure due to solder fatigue. Secondly, Gaussian Process Regression (GPR) model supporting uncertainty representation is used to realize the prognosis for the junction temperature of the IGBT. Furthermore, the comparison of GPR prediction with the Neural Network algorithm has been achieved, and the dynamic model is introduced to improve the prediction accuracy for the IGBT health assessment. Meantime, GPR owns more simple computational complexity and less time consuming.
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