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基于时频域分析和随机森林的故障电弧检测
引用本文:王 毅,陈 进,李松浓,陈 涛,侯兴哲,许怀文. 基于时频域分析和随机森林的故障电弧检测[J]. 电子测量与仪器学报, 2021, 35(5): 62-68
作者姓名:王 毅  陈 进  李松浓  陈 涛  侯兴哲  许怀文
作者单位:重庆邮电大学 通信与信息工程学院 重庆 400065;国网重庆市电力公司电力科学研究院 重庆 400014;重庆大学 重庆 400044
基金项目:重庆市国家电网(5700 202027173A 0 0 00)项目资助
摘    要:针对生活用电器品种繁多,不同类型用电器之间的故障电流与正常电流波形可能类似,导致传统的故障电弧识别方法不能有效检测的问题,提出一种时频域分析与随机森林结合且适用于多种典型负载单独或混合工作的串联型低压故障电弧识别方法.根据收集到的多种负载频谱与纯阻性负载频谱的相关系数,将负载分为开关电源型负载和非开关电源型负载,分别训...

关 键 词:故障电弧  电流采集  负载分类  特征提取  随机森林

Arc fault detection based on time and frequency analysis and random forest
Wang Yi,Chen Jin,Li Songnong,Chen Tao,Hou Xingzhe,Xu Huaiwen. Arc fault detection based on time and frequency analysis and random forest[J]. Journal of Electronic Measurement and Instrument, 2021, 35(5): 62-68
Authors:Wang Yi  Chen Jin  Li Songnong  Chen Tao  Hou Xingzhe  Xu Huaiwen
Affiliation:1. Communication and Information Engineering College, Chongqing University of Posts and Telecommunications;2. Chongqing Electric Power Research Institute; 3. Chongqing University
Abstract:For a wide variety of domestic appliances, the fault current waveforms among different types of appliances may be similar tonormal current waveforms, which leads to the problem that traditional methods of fault arc identification cannot detect effectively, thispaper presents a series low voltage fault arc identification method which combines time-frequency domain analysis and random forestwhich is suitable for a variety of typical loads working independently or mixed. Based on the correlation coefficients between the collectedload spectra and the pure resistance load spectra, the loads are divided into switched-supply loads and non-switched-supply loads, thentwo random forest models are trained to identify the faults. A total of 33 723 sets of normal and fault current samples were collected toverify the proposed detection method, which proves that the proposed method can improve the recognition rate of fault arc.
Keywords:fault arc   current sampling   load classification   feature extraction   random forest
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