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
In this study, modern machine learning (ML) methods are proposed to predict the dynamic non-linear b...
Abstract- In this paper, we propose a feed-forward neural network model (FFNN) of the class B power ...
This paper presents a time-delayed neural network (TDNN) model that has the capability of learning a...
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 novel carrier frequencydependent time delay neural network (CF-dependent TDNN) mode...
In this paper, we present an envelope-domain behavioral model of a high-power RF amplifier. In this ...
In this paper a method for obtaining a time domain behavioral model of a power amplifier from compon...
are applied to modeling of electronic circuits. ANNs are used for application of the black-box model...
This paper presents a novel Two Hidden Layers Artificial Neural Networks (2HLANN) model for behavior...
This paper presents a new approach to build RF dynamic behavioral models, based on time-delay neural...
Abstract. With this paper we want to present a black-box model, that can be applied to a vast number...
In this work we want to present a novel application of Neural Networks as a Black-Box model, which a...
Abstract — This paper presents a novel and non quasi static behavioral ( black box) model of power ...
The efficient characterization of nonlinear systems is an important goal of vibration and model test...
In this study, modern machine learning (ML) methods are proposed to predict the dynamic non-linear b...
Abstract- In this paper, we propose a feed-forward neural network model (FFNN) of the class B power ...
This paper presents a time-delayed neural network (TDNN) model that has the capability of learning a...
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 novel carrier frequencydependent time delay neural network (CF-dependent TDNN) mode...
In this paper, we present an envelope-domain behavioral model of a high-power RF amplifier. In this ...
In this paper a method for obtaining a time domain behavioral model of a power amplifier from compon...
are applied to modeling of electronic circuits. ANNs are used for application of the black-box model...
This paper presents a novel Two Hidden Layers Artificial Neural Networks (2HLANN) model for behavior...
This paper presents a new approach to build RF dynamic behavioral models, based on time-delay neural...
Abstract. With this paper we want to present a black-box model, that can be applied to a vast number...
In this work we want to present a novel application of Neural Networks as a Black-Box model, which a...
Abstract — This paper presents a novel and non quasi static behavioral ( black box) model of power ...
The efficient characterization of nonlinear systems is an important goal of vibration and model test...
In this study, modern machine learning (ML) methods are proposed to predict the dynamic non-linear b...
Abstract- In this paper, we propose a feed-forward neural network model (FFNN) of the class B power ...
This paper presents a time-delayed neural network (TDNN) model that has the capability of learning a...