Litcius/Paper detail

Residual Neural Networks for Digital Predistortion

Yibo Wu, Ulf Gustavsson, Alexandre Graell i Amat, Henk Wymeersch

202049 citationsDOIOpen Access PDF

Abstract

Tracking the nonlinear behavior of an RF power amplifier (PA) is challenging. To tackle this problem, we build a connection between residual learning and the PA nonlinearity, and propose a novel residual neural network structure, referred to as the residual real-valued time-delay neural network (R2TDNN). Instead of learning the whole behavior of the PA, the R2TDNN focuses on learning its nonlinear behavior by adding identity shortcut connections between the input and output layer. In particular, we apply the R2TDNN to digital predistortion and measure experimental results on a real PA. Compared with neural networks recently proposed by Liu et at. and Wang et at., the R2TDNN achieves the best linearization performance in terms of normalized mean square error and adjacent channel power ratio with less or similar computational complexity. Furthermore, the R2TDNN exhibits significantly faster training speed and lower training error.

Topics & Concepts

PredistortionResidualComputer scienceAdjacent channel power ratioArtificial neural networkNonlinear systemLinearizationNonlinear distortionControl theory (sociology)AmplifierPower (physics)Convolutional neural networkArtificial intelligenceAlgorithmTelecommunicationsControl (management)Bandwidth (computing)PhysicsQuantum mechanicsAdvanced Power Amplifier DesignRadio Frequency Integrated Circuit DesignGaN-based semiconductor devices and materials
Residual Neural Networks for Digital Predistortion | Litcius