Comparison of Circuit Models for ML-Assisted Microwave Circuit Design
Journal article, 2025

Machine-learning (ML) assisted microwave circuit design is an interesting complement to traditional topology-based design since it opens up previously unexplored design spaces that in some cases may offer better performance, or similar performance with a different form factor. A key part is the circuit model, i.e., the set of discrete building blocks used to create circuits. In the work published so far circuit models encompassed a single element type in the form of metal pixels. In this paper we propose a circuit model with additional elements that facilitates diagonal connections and provides higher robustness to variations in the manufacturing process. A comparison with the pixel model shows that the new model results in more accurate ML-models for S-parameter prediction with a 9.5% reduction in root mean-square error (RMSE) on the testset, which translates to more accurate results for circuit synthetization. In addition, we demonstrate that circuits built with the new model has a higher tolerance to manufacturing imperfections, with 33% smaller RMSE penalty with respect to the original S-parameters when adding a width perturbation of 50 μm to diagonal connections, and 50/40% smaller RMSE penalty when shrinking/expanding the size of elements forming diagonal connections with 2.5% . We also use both the pixel model and the newly proposed model to design low-pass filters with competitive performance.

convolutional neural networks

surrogate models

genetic algorithm

Circuit optimization

machine learning

electronic circuits

Author

Martin E Sjödin

Ericsson

Oskar Talcoth

Ericsson

Haojie Chang

Chalmers, Microtechnology and Nanoscience (MC2), Microwave Electronics

Han Zhou

Chalmers, Microtechnology and Nanoscience (MC2), Microwave Electronics

Kristoffer Andersson

Ericsson

Saab

IEEE Journal of Microwaves

26928388 (eISSN)

Vol. In Press

Subject Categories (SSIF 2025)

Other Electrical Engineering, Electronic Engineering, Information Engineering

Bioinformatics (Computational Biology)

Mineral and Mine Engineering

Probability Theory and Statistics

Other Mathematics

Applied Mechanics

DOI

10.1109/JMW.2025.3610923

More information

Latest update

10/20/2025