This paper analyzes the thermal dependence of high-periphery GaN-on-SiC HEMT performance. The proposed approach is based on artificial neural networks (ANNs) that are used to model the scattering parameters versus temperature and frequency under a high dissipated power condition for a GaN HEMT with a gate width of 1.5 mm. The modeling results agree very well with measurements up to 65 GHz in the whole considered temperature range going from 35°C to 200°C, confirming the high accuracy and the good generalization capability of the proposed ANN approach.

Temperature Dependent Small-Signal Neural Modeling of High-Periphery GaN HEMTs

Vadala V.;Raffo A.;
2019

Abstract

This paper analyzes the thermal dependence of high-periphery GaN-on-SiC HEMT performance. The proposed approach is based on artificial neural networks (ANNs) that are used to model the scattering parameters versus temperature and frequency under a high dissipated power condition for a GaN HEMT with a gate width of 1.5 mm. The modeling results agree very well with measurements up to 65 GHz in the whole considered temperature range going from 35°C to 200°C, confirming the high accuracy and the good generalization capability of the proposed ANN approach.
2019
9781728108780
Artificial neural networks; GaN HEMT; High frequency; High power; High temperature; Scattering parameter measurements
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11392/2419406
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