Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/49404
Title: Thermal Behavior Prediction of the Silicon Carbide Power Devices Based on Time Series Decomposition
Authors: Du, Bangli
Özel, Kazim Efe
Zuo, Yu
Martinez , Wilmar
Issue Date: 2025
Publisher: IEEE
Source: 2025 IEEE/AIAA Transportation Electrification Conference and Electric Aircraft Technologies Symposium (ITEC+EATS), IEEE,
Series/Report: IEEE Transportation Electrification Conference and Expo
Abstract: The junction temperature parameters of power devices have an important impact on the device lifetime and the overall reliability of power electronic converters. The impact is mainly reflected in the characteristic parameters such as the fluctuation and mean value of the junction temperature, which directly affect the health status of the devices. The traditional thermal management method is only based on the historical junction temperature data of the power devices, and does not predict and manage the future junction temperature behavior. Therefore, the calculation results cannot cover the future thermal behavior of the power devices. In addition, the historical junction temperature data of the traditional thermal management method is very short, and the big data of junction temperature is not introduced. Therefore, the thermal behavior state reflected has great limitations. This paper innovatively proposes to use the Prophet algorithm based on time series decomposition to calculate the future thermal behavior of the junction temperature of the silicon carbide (SiC) power devices. The algorithm introduces a large database of junction temperature and combines historical junction temperature data with future junction temperature numerical prediction data to accurately predict the lifetime of the SiC power devices. Simulation and experiments prove the effectiveness of the algorithm proposed in this paper.
The junction temperature parameters of power devices have an important impact on the device lifetime and the overall reliability of power electronic converters. The impact is mainly reflected in the characteristic parameters such as the fluctuation and mean value of the junction temperature, which directly affect the health status of the devices. The traditional thermal management method is only based on the historical junction temperature data of the power devices, and does not predict and manage the future junction temperature behavior. Therefore, the calculation results cannot cover the future thermal behavior of the power devices. In addition, the historical junction temperature data of the traditional thermal management method is very short, and the big data of junction temperature is not introduced. Therefore, the thermal behavior state reflected has great limitations. This paper innovatively proposes to use the Prophet algorithm based on time series decomposition to calculate the future thermal behavior of the junction temperature of the silicon carbide (SiC) power devices. The algorithm introduces a large database of junction temperature and combines historical junction temperature data with future junction temperature numerical prediction data to accurately predict the lifetime of the SiC power devices. Simulation and experiments prove the effectiveness of the algorithm proposed in this paper.
Keywords: SiC power devices;prophet algorithm;junction temperature prediction;time series decomposition
Document URI: http://hdl.handle.net/1942/49404
ISBN: 979-8-3315-2214-8
DOI: 10.1109/ITEC63604.2025.11098100
ISI #: 001554935600191
Category: C1
Type: Proceedings Paper
Appears in Collections:Research publications

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