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Remaining Useful Lifetime Prediction Based on Extended Kalman Particle Filter for Power SiC MOSFETs

Wei Wu, Yongqian Gu, Mingkang Yu, Chongbing Gao, Yong Chen

2023Micromachines11 citationsDOIOpen Access PDF

Abstract

Nowadays, the performance of silicon-based devices is almost approaching the physical limit of their materials, which have difficulty meeting the needs of modern high-power applications. The SiC MOSFET, as one of the important third-generation wide bandgap power semiconductor devices, has received extensive attention. However, numerous specific reliability issues exist for SiC MOSFETs, such as bias temperature instability, threshold voltage drift, and reduced short-circuit robustness. The remaining useful life (RUL) prediction of SiC MOSFETs has become the focus of device reliability research. In this paper, a RUL estimation method using the Extended Kalman Particle Filter (EPF) based on an on-state voltage degradation model for SiC MOSFETs is proposed. A new power cycling test platform is designed to monitor the on-state voltage of SiC MOSFETs used as the failure precursor. The experimental results show that the RUL prediction error decreases from 20.5% of the traditional Particle Filter algorithm (PF) algorithm to 11.5% of EPF with 40% data input. The life prediction accuracy is therefore improved by about 10%.

Topics & Concepts

Robustness (evolution)MOSFETParticle filterKalman filterReliability (semiconductor)Electronic engineeringPower MOSFETVoltageMaterials sciencePower semiconductor deviceComputer scienceEngineeringElectrical engineeringPower (physics)TransistorPhysicsArtificial intelligenceBiochemistryQuantum mechanicsGeneChemistrySilicon Carbide Semiconductor TechnologiesSemiconductor materials and devicesAluminum Alloys Composites Properties
Remaining Useful Lifetime Prediction Based on Extended Kalman Particle Filter for Power SiC MOSFETs | Litcius