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Phase-Normalized Neural Network for Linearization of RF Power Amplifiers

06 April 2023

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This letter proposes a methodology for phase-normalization of the complex-valued I/Q inputs of a real-valued time delay neural network (RVTDNN). The normalization enables modeling of the nonlinear behavior of an RF power amplifier (PA) in a more efficient way, by complying with the physical characteristics of the distortions at RF. The presented digital predistortion (DPD) linearization experiments with a Doherty GaN PA at 3.5 GHz show a 4 dB improvement in the output linearity compared to state-of-the-art neural network and polynomial-based DPD models, allowing linearization to below -50 dBc ACLR levels with feasible processing complexity.