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  1. Pubblicazioni

Deep Learning Algorithm for Advanced Level-3 Inverse-Modeling of Silicon-Carbide Power MOSFET Devices

Contributo in Atti di convegno
Data di Pubblicazione:
2024
Abstract:
Inverse modelling with deep learning algorithms involves training deep architecture to predict device’s parameters from its static behaviour. Inverse device modelling is suitable to reconstruct drifted physical parameters of devices temporally degraded or to retrieve physical configuration. There are many variables that can influence the performance of an inverse modelling method. In this work the authors propose a deep learning method trained for retrieving physical parameters of Level-3 model of Power Silicon-Carbide MOSFET (SiC Power MOS). The SiC devices are used in applications where classical silicon devices failed due to high-temperature or high switching capability. The key application of SiC power devices is in the automotive field (i.e. in the field of electrical vehicles). Due to physiological degradation or high-stressing environment, SiC Power MOS shows a significant drift of physical parameters which can be monitored by using inverse modelling. The aim of this work is to provide a possible deep learning-based solution for retrieving physical parameters of the SiC Power MOSFET. Preliminary results based on the retrieving of channel length of the device are reported. Channel length of power MOSFET is a key parameter involved in the static and dynamic behaviour of the device. The experimental results reported in this work confirmed the effectiveness of a multi-layer perceptron designed to retrieve this parameter.
Tipologia CRIS:
14.d.3 Contributi in extenso in Atti di convegno
Keywords:
channel length modeling; Deep network; Power MOS inverse modeling
Elenco autori:
Spata, M. O.; Battiato, S.; Ortis, A.; Rundo, F.; Calabretta, M.; Pino, C.; Messina, A.
Autori di Ateneo:
CALABRETTA Michele
Link alla scheda completa:
https://iris.unime.it/handle/11570/3346989
Titolo del libro:
Proceedings of SPIE - The International Society for Optical Engineering
Pubblicato in:
PROCEEDINGS OF SPIE, THE INTERNATIONAL SOCIETY FOR OPTICAL ENGINEERING
Journal
PROCEEDINGS OF SPIE, THE INTERNATIONAL SOCIETY FOR OPTICAL ENGINEERING
Series
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