Deep Learning-Driven Black-Box Doherty Power Amplifier with Pixelated Output Combiner and Extended Efficiency Range
Preprint, 2026

This article presents a deep learning-driven inverse design methodology for Doherty power amplifiers (PA) with multi-port pixelated output combiner networks. A deep convolutional neural network (CNN) is developed and trained as an electromagnetic (EM) surrogate model to accurately and rapidly predict the S-parameters of pixelated passive networks. By leveraging the CNN-based surrogate model within a blackbox Doherty framework and a genetic algorithm (GA)-based optimizer, we effectively synthesize complex Doherty combiners that enable an extended back-off efficiency range using fully symmetrical devices. As a proof of concept, we designed and fabricated two Doherty PA prototypes incorporating three-port pixelated combiners, implemented with GaN HEMT transistors. In measurements, both prototypes demonstrate a maximum drain efficiency exceeding 74% and deliver an output power surpassing 44.1 dBm at 2.75 GHz. Furthermore, a measured drain efficiency above 52% is maintained at the 9-dB back-off power level for both prototypes at the same frequency. To evaluate linearity and efficiency under realistic signal conditions, both prototypes are tested using a 20-MHz 5G new radio (NR)-like waveform exhibiting a peak-to-average power ratio (PAPR) of 9.0-dB. After applying digital predistortion (DPD), each design achieves an average power-added efficiency (PAE) above 51%, while maintaining an adjacent channel leakage ratio (ACLR) better than −60.8 dBc.

load modulation

inverse design

genetic optimization

Deep learning

Doherty power amplifier

neural networks.

Author

Han Zhou

Chalmers, Microtechnology and Nanoscience (MC2), Microwave Electronics

Haojie Chang

Chalmers, Microtechnology and Nanoscience (MC2), Microwave Electronics

David Widén

Chalmers, Microtechnology and Nanoscience (MC2), Microwave Electronics

Areas of Advance

Information and Communication Technology

Infrastructure

Kollberg Laboratory

Driving Forces

Sustainable development

Innovation and entrepreneurship

Subject Categories (SSIF 2025)

Electrical Engineering, Electronic Engineering, Information Engineering

DOI

10.48550/arXiv.2603.16565

More information

Created

3/18/2026