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基于神经网络的故障电弧检测装置的研究
引用本文:刘鹏,张峰,张士文.基于神经网络的故障电弧检测装置的研究[J].低压电器,2013(17):1-6,42.
作者姓名:刘鹏  张峰  张士文
作者单位:上海交通大学电子信息与电气工程学院,上海200240
基金项目:上海市社会发展领域重点科技项目(09231202600)
摘    要:提出一种以反向传播(BP)神经网络为基础的新型故障电弧辨识方法.电弧发生装置和数据采集装置分别提取电流的小波变换和时域变化的特征值,将提取的混合特征值输入到神经网络并采用自适应学习法进行学习,再将收敛的神经网络移植到故障电弧检测装置中,构成故障电弧辨识模块.在试验中装置可以准确地检测出已学习过的几种不同负载的故障电弧状态,并能及时切除故障线路.

关 键 词:故障电弧  神经网络  混合特征  检测装置

Research of Arc Fault Detctor Based on Neural Networks
LIU Peng,ZHANG Feng,ZHANG Shiwen.Research of Arc Fault Detctor Based on Neural Networks[J].Low Voltage Apparatus,2013(17):1-6,42.
Authors:LIU Peng  ZHANG Feng  ZHANG Shiwen
Affiliation:(School of Electronic Information and Electrical Engineering, Shanghai Jiaotong University, Shanghai 200240, China)
Abstract:: A new method for arc fault identification was proposed,which is based on back propagation (BP) neural network. Firstly, the current data of wavelet transform and time-domain are collected by arc generation and data acquisition device respectively. Then, it is input into BP neural network to learn by adaptive learning method. After that, the converged neural network is transplanted into the arc fault detection device to constitute the arc fault identification module. The detection device can accurately detect the are fault of several different loads and timely remove the fault line.
Keywords:arc fault  neural network  mixed feature  detection device
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