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A Model-Based Probabilistic Inversion Framework for Characterizing Wire Fault Detection Using TDR

机译:基于模型的概率反演框架用于表征使用TDR的电线故障检测

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摘要

Time-domain reflectometry (TDR) is one of the standard methods for diagnosing faults in electrical wiring and interconnect systems, with a long-standing history focused mainly on hardware development of both high-fidelity systems for laboratory use and portable handheld devices for field deployment. While these devices can easily assess distance to hard faults such as sustained opens or shorts, their ability to assess subtle but important degradation such as chafing remains an open question. This paper presents a unified framework for TDR-based chafing fault detection in lossy coaxial cables by combining an $S$ -parameter-based forward-modeling approach with a probabilistic (Bayesian) inference algorithm. Results are presented for the estimation of nominal and faulty cable parameters from laboratory data.
机译:时域反射仪(TDR)是诊断电线和互连系统故障的标准方法之一,其悠久的历史主要集中在实验室用高保真系统和现场部署的便携式手持设备的硬件开发上。尽管这些设备可以轻松评估与硬故障(例如持续断路或短路)的距离,但它们评估微弱但重要的退化(如擦伤)的能力仍然是一个悬而未决的问题。本文通过将基于参数的$ S $的正向建模方法与概率(贝叶斯)推理算法相结合,提出了用于有损同轴电缆中基于TDR的磨损故障检测的统一框架。给出了根据实验室数据估算标称和故障电缆参数的结果。

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