基于配准曲线拟合模型的微带传输线宽带射频信号的精确材料表征

Subrata Mukherjee, Deepak Kumar, Obaid Elshafiey, L. Udpa, Y. Deng
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引用次数: 0

摘要

了解电学性质,如复介电常数、磁导率和损耗切线测量,正迅速成为无损评估(NDE)材料表征的必要条件。在本文中,我们的目标是提供一种数据驱动的方法,根据由材料制成的微带传输线的频率响应来估计给定衬底材料的宽带介电常数。我们展示了注册辅助机器学习模型,该模型自适应地使用来自大型模拟数据集的信息,在我们严重缺乏数据的实验数据上做出改进的预测。机器学习(ML)模型使用衬底和微带线尺寸的几种独特组合的仿真数据进行训练,并在实验数据上进行测试,其中微带线在11种不同的未知衬底上制造。与反射和透射系数相关的S参数被视为整个频率扫描的功能数据。由于实验数据很少,再加上复杂的非参数方法,我们还考虑了频率曲线上的低复杂度模型。在这方面,考虑降维技术来处理实验数据中从频率扫描中获得的特征数量远远高于实验数据中的样本数量的情况。我们比较了数据饥渴型机器学习方法与这些低复杂度模型的有效性。由于训练数据和测试数据的来源不同,采用了基于截距校正的配准策略。我们说明了基于注册的各种ML技术对实验室生成的实验数据的有效性,并获得了令人鼓舞的结果。这项工作是试图绕过电磁(EM)物理的材料表征模型,该模型基于封闭形式的数学方程,并且具有只能应用于理想化设置的局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accurate Material Characterization of Wideband RF Signals via Registration-based Curve Fitting Model using Microstrip Transmission Line
Knowledge of the electrical properties, such as complex permittivity, permeability and loss tangent measurements is rapidly becoming a necessity for Nondestructive Evaluation (NDE) based material characterization. In this paper, we aim to provide a data-driven approach to estimate the wideband dielectric permittivity for a given substrate material based on the frequency responses from microstrip transmission lines fabricated with the material. We demonstrate registration-aided machine learning models that adaptively use information from large simulated datasets to make improved predictions on experimental data where we have acute data scarcity. Machine learning (ML) models are trained using simulation data for several unique combinations of substrate and microstrip line dimensions and is tested on experimental data where the microstrip line are fabricated on eleven different unknown substrates. The $S$ parameters associated with the reflection and transmission coefficients are treated as functional data across the frequency sweeps. As we had very few experimental data, along with complex non-parametric methods, we also consider low-complexity models on the frequency curves. In this aspect, dimensionality reduction techniques are considered to deal with situations in the experimental data where the number of features obtained from the frequency sweeps are much higher than the number of samples in the experimental data. We compare the efficacy of data-hungry machine learning methods with these low-complexity models. As the source of train and test data are different, registration strategies based on intercept correction are implemented. We illustrate the efficacy of registration-based varied ML techniques for lab generated experimental data and obtained encouraging results. This work is an attempt to by-pass material characterization models of electromagnetic (EM)-physics that is based on closed form mathematical equations and have the limitations that they can only be applied in idealized set-ups.
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