This paper presents a new approach to build RF dynamic behavioral models, based on time-delay neural networks (TDNNs), suitable for FET devices, and capable to identify the working class and to characterize both short- and long-term device memory, through a time-domain training procedure, for a wide range of input power levels. The presented model has been effectively applied to GaN-based devices, working in class A, AB and B
International audienceIn this paper, the authors present a behavioral model of a GaN normally ON HEM...
GaN-HEMTs suffer from trapping effects which increases device ON-state resistance (RDS(on)) above it...
Due to the complexity of the 2D coupling effects in AlGaN/GaN HEMTs, the characterization of a devic...
In this paper, a novel carrier frequencydependent time delay neural network (CF-dependent TDNN) mode...
This paper presents the formulation of a behavioral model for a gallium nitride (GaN) Doherty power ...
DynaFET: A time-domain simulation model for GaN power transistors from measured large-signal wavefor...
This paper presents a black-box model that can be applied to characterize the nonlinear dynamic beha...
This paper presents a black-box model that can be applied to characterize the nonlinear dynamic beha...
In this paper, a genetic-neural-network (GNN) based large-signal model for GaN HEMTs is presented al...
Abstract — Artificial neural networks (ANN) have gained attention as fast and flexible vehicles to m...
A newly investigated measurement approach to analysing the effects of long-term memory effects in wi...
Artificial neural networks (ANNs) are presented for the technology-independent modeling of active de...
Gallium nitride high electron-mobility transistors have gained much interest for high-power and high...
This paper presents a time-delayed neural network (TDNN) model that has the capability of learning a...
In this paper, the recent neural network (NN) approaches to time domain electromagnetic (EM)-based m...
International audienceIn this paper, the authors present a behavioral model of a GaN normally ON HEM...
GaN-HEMTs suffer from trapping effects which increases device ON-state resistance (RDS(on)) above it...
Due to the complexity of the 2D coupling effects in AlGaN/GaN HEMTs, the characterization of a devic...
In this paper, a novel carrier frequencydependent time delay neural network (CF-dependent TDNN) mode...
This paper presents the formulation of a behavioral model for a gallium nitride (GaN) Doherty power ...
DynaFET: A time-domain simulation model for GaN power transistors from measured large-signal wavefor...
This paper presents a black-box model that can be applied to characterize the nonlinear dynamic beha...
This paper presents a black-box model that can be applied to characterize the nonlinear dynamic beha...
In this paper, a genetic-neural-network (GNN) based large-signal model for GaN HEMTs is presented al...
Abstract — Artificial neural networks (ANN) have gained attention as fast and flexible vehicles to m...
A newly investigated measurement approach to analysing the effects of long-term memory effects in wi...
Artificial neural networks (ANNs) are presented for the technology-independent modeling of active de...
Gallium nitride high electron-mobility transistors have gained much interest for high-power and high...
This paper presents a time-delayed neural network (TDNN) model that has the capability of learning a...
In this paper, the recent neural network (NN) approaches to time domain electromagnetic (EM)-based m...
International audienceIn this paper, the authors present a behavioral model of a GaN normally ON HEM...
GaN-HEMTs suffer from trapping effects which increases device ON-state resistance (RDS(on)) above it...
Due to the complexity of the 2D coupling effects in AlGaN/GaN HEMTs, the characterization of a devic...