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NARX Neural Network Bandwidth Generalization Capability in Power Amplifier Modeling

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Résumé

Nonlinear AutoRegressive with eXogenous input Neural Network (NARXNN) can exhibit strong generalization capabilities and rapid convergence by combining all features of a recurrent neural network (RNN), and the ability of training as a purely feedforward architecture,. As a result, it can be used to simulate the dynamic nonlinear behavior of radio frequency (RF) power amplifiers (PAs). In this paper, a comparative study of NARXNN and real-valued focused time-delay neural networks (RVFTDNN) has been executed to demonstrate that NARXNN is a more suitable option for describing the functions of PAs in terms of bandwidth generalization. The validation of NARXNN is carried out in two scenarios: i) single bandwidth and ii) bandwidth generalization using MATLAB-provided measured signals. By evaluating the accuracy in the predicting output spectrum, the normalized mean square error, and the complexity of the models, NARXNN performs a significantly reduced number of coefficients and a dominant precision compared to RVFTDNN.

langue originaleAnglais
titre2024 22nd IEEE Interregional NEWCAS Conference, NEWCAS 2024
EditeurInstitute of Electrical and Electronics Engineers Inc.
Pages363-367
Nombre de pages5
ISBN (Electronique)9798350361759
Les DOIs
étatPublié - 1 janv. 2024
Evénement22nd IEEE Interregional NEWCAS Conference, NEWCAS 2024 - Sherbrooke, Canada
Durée: 16 juin 202419 juin 2024

Série de publications

Nom2024 22nd IEEE Interregional NEWCAS Conference, NEWCAS 2024

Une conférence

Une conférence22nd IEEE Interregional NEWCAS Conference, NEWCAS 2024
Pays/TerritoireCanada
La villeSherbrooke
période16/06/2419/06/24

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