Home /Research /Cavity Duplexer Tuning with 1d Resnet-like Neural Networks
LEARNING

Cavity Duplexer Tuning with 1d Resnet-like Neural Networks

Anton Raskovalov

Year
2025
Access
Open access

Abstract

This paper presents machine learning method for tuning of cavity duplexer with a large amount of adjustment screws. After testing we declined conventional reinforcement learning approach and reformulated our task in the supervised learning setup. The suggested neural network architecture includes 1d ResNet-like backbone and processing of some additional information about S-parameters, like the shape of curve and peaks positions and amplitudes. This neural network with external control algorithm is capable to reach almost the tuned state of the duplexer within 4-5 rotations per screw.

Keywords

cs.LGeess.SY

Related papers

Browse all LEARNING papers