This paper presents a novel Two Hidden Layers Artificial Neural Networks (2HLANN) model for behavioral modeling and linearization of RF Power Amplifiers (PAs). Starting with a feedback loop principle model of a PA, an appropriate neural networks structure is deduced. This structure was then optimized to form a real valued and feed-forward 2HLANN based model capable of predicting the nonlinear behavior and the memory effects of wideband PAs. The validation of the proposed model in mimicking the behavior of a Device Under Test (DUT) is carried out in terms of its accuracy in predicting the output spectrum, dynamic AMI AM and AMIPM characteristics and the normalized mean square error. In addition, the 2HLANN model was used to linearize two 250...
Modern communication systems with advanced modulation schemes have increased the linearity demands o...
International audienceAn emulation tool with the capability of modeling the nonlinearity order and m...
In this paper, a novel carrier frequencydependent time delay neural network (CF-dependent TDNN) mode...
This paper presents a novel Two Hidden Layers Artificial Neural Networks (2HLANN) model for behavior...
Power Amplifiers (PAs) are the key building blocks of the emerging wireless radios systems. They dom...
This paper presents a Two Layer Artificial Neural Network (2LANN) model for linearization of pico-ce...
In this study, modern machine learning (ML) methods are proposed to predict the dynamic non-linear b...
This paper represents an experimental study on the linearisation of Power Amplifiers especially on h...
This work presents a digital predistortion (DPD) scheme to linearize power amplifiers (PAs) using a ...
Radio frequency (RF) communications are limited to a number of frequency bands scattered over the ra...
This thesis work studied the behavioral modeling, estimation of parameters, model performance and li...
This thesis work studied the behavioral modeling, estimation of parameters, model performance and li...
This work presents a novel Digital Predistortion (DPD) scheme based on a NARX network, suitable for ...
Abstract — For the nonlinear distortion problem of current power amplifiers (PAs) with memory effect...
Tracking the nonlinear behavior of an RF power amplifier (PA) is challenging. To tackle this problem...
Modern communication systems with advanced modulation schemes have increased the linearity demands o...
International audienceAn emulation tool with the capability of modeling the nonlinearity order and m...
In this paper, a novel carrier frequencydependent time delay neural network (CF-dependent TDNN) mode...
This paper presents a novel Two Hidden Layers Artificial Neural Networks (2HLANN) model for behavior...
Power Amplifiers (PAs) are the key building blocks of the emerging wireless radios systems. They dom...
This paper presents a Two Layer Artificial Neural Network (2LANN) model for linearization of pico-ce...
In this study, modern machine learning (ML) methods are proposed to predict the dynamic non-linear b...
This paper represents an experimental study on the linearisation of Power Amplifiers especially on h...
This work presents a digital predistortion (DPD) scheme to linearize power amplifiers (PAs) using a ...
Radio frequency (RF) communications are limited to a number of frequency bands scattered over the ra...
This thesis work studied the behavioral modeling, estimation of parameters, model performance and li...
This thesis work studied the behavioral modeling, estimation of parameters, model performance and li...
This work presents a novel Digital Predistortion (DPD) scheme based on a NARX network, suitable for ...
Abstract — For the nonlinear distortion problem of current power amplifiers (PAs) with memory effect...
Tracking the nonlinear behavior of an RF power amplifier (PA) is challenging. To tackle this problem...
Modern communication systems with advanced modulation schemes have increased the linearity demands o...
International audienceAn emulation tool with the capability of modeling the nonlinearity order and m...
In this paper, a novel carrier frequencydependent time delay neural network (CF-dependent TDNN) mode...