住宅交流电力系统串联电弧故障诊断的功能分析

S. Taco-Vasquez, P. Arauz, M. Trujillo, William Oñate, Gustavo Caiza
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引用次数: 1

摘要

对系统的组成部分进行适当的监视,可以成功地控制系统。故障检测与诊断(FDD)是一种有效的方法,它利用通常从传感器和其他设备测量到的系统信息,结合数学和统计理论,有效地控制和改进系统的性能。本研究将故障检测与诊断(iFDD)应用于交流电气装置串联电弧的分析与检测。本文提出的iFDD方法侧重于感应串联电弧下电压和电流信号的模式识别和指纹分析。交流电源系统,经常发现在家庭或商业建筑的日常使用的电器和设备,被建造并用于串联电弧实验。试验在家用负载(卤素灯和游标板)上测量的实验电流(2-7 A)上进行。所有数据数字化,采样率为250 kHz(示波器采样率为250 MHz)。分析了不同工况下串联电弧的指纹图谱。利用MATLAB对电流和电压信号进行多分辨率小波分解,选择合适的母小波进行故障暂态分析。结果表明,db4适用于利用电流信号信息检测串联电弧
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Functional Analysis for Series Arc Fault Diagnosis in Residential AC Power System
Proper monitoring of the components of a system leads to a successful control of it. Fault detection and diagnosis (FDD) is an effective methodology that uses system's information commonly measured from sensors and other devices along with mathematical and statistical theories to effectively control and improve a system's performance. In this study, fault detection and diagnosis (iFDD) was applied to analyze and detect series arcing in an AC electrical installation. The iFDD methodology presented in this article focused on pattern recognition and fingerprint analysis of voltage and current signals under induced series arcing. An AC power system, often found in houses or commercial buildings for daily use of electrical appliances and equipment, was constructed and utilized for series arcing experiments. The tests were conducted on experimental currents (2–7 A) measured on domestic loads (halogen lamp and ranger plate). All data were digitized with a sample rate of 250 kHz (oscilloscope sampling rate was 250 MHz). Fingerprints of series arcing under different working conditions were analyzed. Multiresolution wavelet decomposition of current and voltage signals were applied using MATLAB for analysis of fault transients with selection of a suitable mother wavelet. Results showed that db4 is suitable for detection of series arcing using information of the current signal
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