串联电弧故障的时域特征分析与故障诊断

Yanli Liu, Fengyi Guo, Zhiling Ren, Peilong Wang, Tuannghia Nguyen, Jia Zheng, Xirui Zhang
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引用次数: 7

摘要

为了实时监测电连接器串联电弧故障,提高供电系统的可靠性,利用电弧故障发生器进行了串联电弧故障实验。实验负载分别为三相异步电机和三相变频电机。提取电流信号相邻5个周期的方差、协方差和过零点个数,并进行归一化处理。利用过零点个数、方差和协方差等变量构建特征向量。采用k近邻法对特征向量进行模式识别。结果表明,该方法对电连接器串联电弧故障的诊断是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature analysis in time-domain and fault diagnosis of series arc fault
In order to monitor series arc fault in real-time for electrical connectors and improve the reliability of power supply systems, series arc fault experiments were carried out using an arc fault generator. A three-phase asynchronous motor and a three-phase frequency conversion motor were used as experimental loads. The variance, covariance and number of zero-crossing points of five adjacent periods of current signals were extracted and normalized. The feature vector was constructed by using the above variables such as number of zero-crossing points, variance and covariance. The k-nearest neighbor method was used for pattern recognition of the feature vector. The results showed that this method was effective for the diagnosis of series arc fault in electrical connectors.
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