A novel nonintrusive fault identification for power transmission networks using power-spectrum-based hyperbolic S-transform — Part I: Fault classification

Hsueh-Hsien Chang, N. V. Linh, Weijen Lee
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引用次数: 11

Abstract

This paper presents a novel nonintrusive protection scheme for fault classification of power transmission networks in a wide-area measurement system (WAMS) using fault information for decision making. The protection scheme is a non-communication without GPS as it depends completely on locally measured currents for the non-intrusive fault monitoring (NIFM) using the power-spectrum-based hyperbolic S-transform (PS-HST). In this work, the HST is used to extract the high frequency components of the current signals generated by an electric fault. To effectively select the HST coefficients (HSTCs) representing fault transient signals with increasing performance, a power spectrum of the HSTCs in different scales calculated by Parseval's Theorem is proposed in this paper. Finally, back-propagation artificial neural networks (BP-ANNs) and PS-HST are used to identify fault types in power transmission networks. The proposed method is tested for different breaker ON/ OFF conditions by simulations using electromagnetic transients program (EMTP) software. The results obtained have proved that the proposed method is promising and demonstrate a high success rates and reliability for considering different fault resistances and inception angles in NIFM applications.
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基于功率谱的双曲s变换的输电网非侵入式故障识别方法——第一部分:故障分类
提出了一种基于故障信息进行决策的广域测量系统(WAMS)输电网故障分类的非侵入式保护方案。该保护方案完全依赖于局部测量电流,采用基于功率谱的双曲s变换(PS-HST)进行非侵入式故障监测(NIFM),是一种没有GPS的非通信保护方案。在这项工作中,HST用于提取由电气故障产生的电流信号的高频成分。为了有效选择性能不断提高的故障暂态信号的HST系数(HSTCs),本文利用Parseval定理计算了不同尺度下HSTCs的功率谱。最后,利用bp - ann和PS-HST对输电网故障类型进行识别。利用电磁瞬变程序(EMTP)软件对该方法进行了不同断路器开/关条件下的仿真测试。结果表明,该方法在NIFM应用中考虑了不同的故障电阻和起始角,具有较高的成功率和可靠性。
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