This paper presents a black-box model that can be applied to characterize the nonlinear dynamic behavior of power amplifiers. We show that time-delay feed-forward Neural Networks can be used to make a large-signal input-output time-domain characterization, and to provide an analytical form to predict the amplifier response to multitone excitations. Furthermore, a new technique to immediately extract Volterra series models from the Neural Network parameters has been described. An experiment based on. a power amplifier, characterized with a two-tone power swept stimulus to extract the behavioral model, validated with spectra measurements, is demonstrated.
Orengo, G., Colantonio, P., Serino, A., Giannini, F., Ghione, G., Pirola, M., et al. (2005). Time-domain neural network characterization for dynamic behavioral models of power amplifiers. In GAAS 2005 Conference proceedings - 13th European gallium arsenide and other compound semiconductors application symposium (pp.189-192). London : Horizone house publications Ltd.
Time-domain neural network characterization for dynamic behavioral models of power amplifiers
ORENGO, GIANCARLO;COLANTONIO, PAOLO;SERINO, ANTONIO;GIANNINI, FRANCO;
2005-10-01
Abstract
This paper presents a black-box model that can be applied to characterize the nonlinear dynamic behavior of power amplifiers. We show that time-delay feed-forward Neural Networks can be used to make a large-signal input-output time-domain characterization, and to provide an analytical form to predict the amplifier response to multitone excitations. Furthermore, a new technique to immediately extract Volterra series models from the Neural Network parameters has been described. An experiment based on. a power amplifier, characterized with a two-tone power swept stimulus to extract the behavioral model, validated with spectra measurements, is demonstrated.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.