Research on UPFC fault diagnosis based on wavelet transform and support vector machines

Da Feng, Cheng Xingxin, Guo Jinchao, Deng Kai, Zheng Jianyong, Liang Junhan
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Abstract

At present, the way of dealing with UPFC faults in the power grid is accomplished by relay protection. As the protection equipment removes the entire UPFC system when the UPFC fails, the maintenance personnel cannot get the fault information. In response to the problem of long fault time and low reliability, a fault diagnosis method is proposed in this paper. After processed for twice, the UPFC DC side voltage and current signals are selected to be analyzed by using db2 wavelet. The fault points are found by the 6th layer wavelet signal and then the eigenvalues of the electrical signal waveforms are extracted. The eigenvectors consisted of eigenvalues are classified by the support vector machine (SVM) to realize the fault diagnosis of UPFC. The results of UPFC fault diagnosis provide maintenance basis for maintenance personnel, so that maintenance work is more targeted and the recovery is faster.
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基于小波变换和支持向量机的UPFC故障诊断研究
目前,电网中UPFC故障的处理是通过继电保护来实现的。UPFC故障时,由于保护设备会将整个UPFC系统移除,维护人员无法获取故障信息。针对故障时间长、可靠性低的问题,提出了一种故障诊断方法。UPFC直流侧电压和电流信号经过两次处理后,选择用db2小波进行分析。利用第6层小波信号找到故障点,提取电信号波形的特征值。利用支持向量机(SVM)对特征值组成的特征向量进行分类,实现UPFC的故障诊断。UPFC故障诊断结果为维护人员提供维护依据,使维护工作更有针对性,恢复速度更快。
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