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Resonance parameter estimation for low-Q microwave cavities

机译:低Q微波腔的共振参数估计

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Microwave cavity resonators are commonly used to investigate material parameters because the latter strongly influence the cavity resonances. This approach involves the extraction of resonance curve features such as the resonance frequency or the quality factor Q from measured n-port matrices. In our application, we work with 2-port S-matrices measured by automatic vector network analyzers (VNA). Well-known feature extraction methods include magnitude-only approaches (3-dB method, transformed linear approximation, nonlinear approximation) and fits of the magnitude and phase of the complex-valued S-parameters. These methods are commonly applied to high-Q resonators, and their suitability for the low-Q case is not obvious a priori. We have encountered this low-Q case in the in-situ observation of electrochemical systems such as automotive catalysts and now discuss the associated parameter estimation problem. We address the issues of which S-parameters should be measured, how they should be evaluated and what errors due to, e. g., discretization and embedding of the resonator in its environment are to be expected. It is found that the best results are achieved on the basis of the complex transfer coefficient S12 because this allows a certain amount of de-embedding and works for all values of Q examined.
机译:微波腔谐振器通常用于研究材料参数,因为后者会严重影响腔谐振。该方法涉及从测量的n端口矩阵中提取共振曲线特征,例如共振频率或品质因数Q。在我们的应用中,我们使用由自动矢量网络分析仪(VNA)测量的2端口S矩阵。众所周知的特征提取方法包括仅幅度方法(3-dB方法,变换线性逼近,非线性逼近)以及复数值S参数的幅度和相位拟合。这些方法通常应用于高Q谐振器,并且它们对于低Q情况的适用性并不是显而易见的。我们在电化学系统(例如汽车催化剂)的原位观察中遇到了这种低Q值的情况,现在讨论相关的参数估计问题。我们解决了应测量哪些S参数,应如何评估它们以及由于e。例如,预期谐振器在其环境中离散化和嵌入。可以发现,在复数传输系数S12的基础上可获得最佳结果,因为这样可以进行一定程度的解嵌并适用于所有Q值。

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