Publication | Open Access
Neural approach for temperature‐dependent modeling of GaN HEMTs
76
Citations
28
References
2014
Year
Device ModelingWide-bandgap SemiconductorElectrical EngineeringElectronic DevicesEngineeringSemiconductor TechnologyMonte-carlo ModellingBias Temperature InstabilityApplied PhysicsMulti‐bias ModelHigh Electron‐mobility TransistorsGan Power DeviceNeural ApproachAmbient TemperatureMicroelectronicsSemiconductor Device
Abstract Gallium nitride high electron‐mobility transistors have gained much interest for high‐power and high‐temperature applications at high frequencies. Therefore, there is a need to have the dependence on the temperature included in their models. To meet this challenge, the present study presents a neural approach for extracting a multi‐bias model of a gallium nitride high electron‐mobility transistors including the dependence on the ambient temperature. Accuracy of the developed model is verified by comparing modeling results with measurements. Copyright © 2014 John Wiley & Sons, Ltd.
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