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 ...
Nonstationary distorted signals need to be analyzed in both the time and frequency domains to determ...
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 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...
This paper presents a novel Two Hidden Layers Artificial Neural Networks (2HLANN) model for behavior...
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...
This paper presents a time-delayed neural network (TDNN) model that has the capability of learning a...
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 ...
Nonstationary distorted signals need to be analyzed in both the time and frequency domains to determ...
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 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...
This paper presents a novel Two Hidden Layers Artificial Neural Networks (2HLANN) model for behavior...
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...
This paper presents a time-delayed neural network (TDNN) model that has the capability of learning a...
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 ...
Nonstationary distorted signals need to be analyzed in both the time and frequency domains to determ...