학술논문

A Wideband and Flexible Testing System Based on a Quasi-Coaxial Structure and Machine Learning
Document Type
Periodical
Source
IEEE Transactions on Microwave Theory and Techniques IEEE Trans. Microwave Theory Techn. Microwave Theory and Techniques, IEEE Transactions on. 72(3):1766-1774 Mar, 2024
Subject
Fields, Waves and Electromagnetics
Transmission line measurements
Testing
Power transmission lines
Wideband
Reconstruction algorithms
Frequency measurement
Scattering parameters
Complex permittivity
flexible sample sizes
machine learning
microwave measurements
wideband testing
Language
ISSN
0018-9480
1557-9670
Abstract
In this work, a wideband system with flexible test sample sizes is proposed for retrieving the complex permittivity values of materials. It includes a well-designed testing holder and a customized machine learning-based reconstruction algorithm for the inversion. The holder is implemented on a quasi-coaxial structure consisting of three parts, i.e., a quasi-coaxial structure and two coaxial connectors (inner conductors joined together). The testing procedure consists of a simple calibration without additional assembling, a measurement without dielectric under testing (DUT), placement of the DUT, and another measurement with the DUT. This procedure suppresses system complexity and mitigates systematic errors. The reconstruction algorithm is developed based on a Gaussian process regression (GPR) machine learning technique to determine the complex permittivity of the DUT in the partially filled holder. The reconstruction results from numerical simulations and measured data with several nonmagnetic dielectric materials demonstrate the effectiveness of the proposed method.