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On Condition Monitoring of High Frequency Power GaN Converters with Adaptive Prognostics

机译:在适应预测的高频电源GAN转换器的状态监测

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There is no doubt that in the future, a need for higher switching frequency is inevitable to extract the full benefits of reliable Gallium Nitride (GaN) device characteristics. Along with the reliability enhancement for GaN-based power converters, it is essential to monitor a precursor signature identification for diagnostics/prognostics techniques. With the availability of the most granular information deduced from advanced devices, a new data-driven scheme is proposed for system monitoring and possible lifetime extension of 400W power GaN converters at 100kHz. The approach relies on the real-time R_(ds(on)) data extraction from the power converter, and calibration of an adaptive model using multi-physics co-simulations under thermal cycling. More specifically, the focus is on deploying machine learning algorithms to exploit for the parameter estimation in power electronics engineering reliability.
机译:毫无疑问,在未来,需要更高的开关频率是不可避免的,以提取可靠氮化镓(GaN)器件特性的全部益处。除了基于GaN的功率转换器的可靠性增强之外,必须监控诊断/预测技术的前体签名识别。随着从高级设备推断的最粒度信息的可用性,提出了一种新的数据驱动方案,用于在100kHz处的400W电源GaN转换器的系统监控和可能的寿命扩展。该方法依赖于功率转换器的实时R_(DS(ON))数据提取,并在热循环下使用多物理共计校正自适应模型的校准。更具体地,重点是在部署机器学习算法上,以利用电力电子工程可靠性中的参数估计。

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