Multi-core cable fault diagnosis using cluster time-frequency domain reflectometry

Chun-Kwon Lee, Y. Shin
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引用次数: 4

Abstract

Guaranteeing the integrity and functionality of the control and instrumentation (C&I) cable system is essential in ensuring safe nuclear power plant (NPP) operation. When a fault occurs in a multi-core cable, it not only affects the signals of faulty lines but in fact, disturbs the rest as well due to crosstalk and noise interference. Therefore, this results in C&I signal errors in NPP operation and further leads to a rise in concern regarding the NPP operation. Thus, it is necessary for diagnostic technologies of multi-core C&I cables to classify the faulty line and detect the fault to assure the safety and reliability of NPP operation. We propose a diagnostic method that detects the fault location and faulty line in multi-core C&I cable using a clustering algorithm based on TFDR results. The faulty line detection clustering algorithm uses TFDR cross-correlation and phase synchrony results as input feature data altogether which can detect the faulty line and identify the fault point successfully. The proposed clustering algorithm is verified by experiments with two possible fault scenarios in NPP operation.
基于聚类时频反射法的多芯电缆故障诊断
保证控制与仪表电缆系统的完整性和功能性对于确保核电站的安全运行至关重要。当多芯电缆发生故障时,不仅会影响故障线路的信号,而且由于串扰和噪声干扰,也会干扰其他线路的信号。因此,这导致了核电站运行中的C&I信号错误,并进一步导致对核电站运行的关注上升。因此,多芯C&I电缆的诊断技术需要对故障线路进行分类和故障检测,以保证核电站运行的安全可靠。提出了一种基于TFDR结果的聚类算法检测多芯C&I电缆故障位置和故障线路的诊断方法。故障线检测聚类算法将TFDR互相关结果和相位同步结果作为输入特征数据,能够成功检测故障线并识别故障点。通过NPP运行中两种可能的故障场景的实验验证了所提出的聚类算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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