Advanced signal processing techniques for detection and localization of electrical arcs

A. Digulescu, Teodor Petrut, Cindy Bernard, I. Candel, C. Ioana, A. Serbanescu
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引用次数: 9

Abstract

This paper presents several methods applied for the detection and localization of electrical arcs measured while survelling photovoltaic power systems. Firstly, we proposed the use of energy detectors for transients (spectrogram and wavelet) and compared them with statistical methods (Maximum Likelihood Estimation (MLE)), classical signal processing methods (Matched Filter, Zero Crossing), but not lastly with a more recent method, Recurrence Plot Analysis (RPA), which has already proved its efficiency. Afterward, we studied the precision of these methods in the localization problem. We used a four sensor detector and estimated the position of the electrical arc based on the time of arrival (TOA) obtained from the each technique.
用于电弧检测和定位的先进信号处理技术
本文介绍了几种用于光伏发电系统周边电弧检测和定位的方法。首先,我们提出了对瞬态信号(谱图和小波)使用能量检测器,并将它们与统计方法(极大似然估计(MLE))、经典信号处理方法(匹配滤波、过零)进行了比较,最后与最近的递归图分析(RPA)方法进行了比较,该方法已经证明了它的有效性。然后,我们研究了这些方法在定位问题中的精度。我们使用了一个四传感器探测器,并根据每种技术获得的到达时间(TOA)估计电弧的位置。
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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