An Overview of Transmission Line Protection by Artificial Neural Network: Fault Detection, Fault Classification, Fault Location, and Fault Direction Discrimination

Anamika Yadav, Yajnaseni Dash
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引用次数: 80

Abstract

Contemporary power systems are associated with serious issues of faults on high voltage transmission lines. Instant isolation of fault is necessary to maintain the system stability. Protective relay utilizes current and voltage signals to detect, classify, and locate the fault in transmission line. A trip signal will be sent by the relay to a circuit breaker with the purpose of disconnecting the faulted line from the rest of the system in case of a disturbance for maintaining the stability of the remaining healthy system. This paper focuses on the studies of fault detection, fault classification, fault location, fault phase selection, and fault direction discrimination by using artificial neural networks approach. Artificial neural networks are valuable for power system applications as they can be trained with offline data. Efforts have been made in this study to incorporate and review approximately all important techniques and philosophies of transmission line protection reported in the literature till June 2014. This comprehensive and exhaustive survey will reduce the difficulty of new researchers to evaluate different ANN based techniques with a set of references of all concerned contributions.
传输线人工神经网络保护综述:故障检测、故障分类、故障定位和故障方向识别
高压输电线路故障是当代电力系统面临的一个严重问题。及时隔离故障是保持系统稳定的必要条件。保护继电器利用电流和电压信号来检测、分类和定位输电线路中的故障。跳闸信号将由继电器发送到断路器,目的是在发生干扰时将故障线路与系统的其余部分断开,以保持剩余健康系统的稳定。本文主要研究了基于人工神经网络的故障检测、故障分类、故障定位、故障相位选择和故障方向识别。人工神经网络可以通过离线数据进行训练,因此在电力系统中具有重要的应用价值。在这项研究中,我们努力整合和回顾了截至2014年6月文献中报道的几乎所有重要的输电线路保护技术和理念。这项全面而详尽的调查将减少新研究人员评估不同的基于人工神经网络的技术的难度,并提供一组相关贡献的参考资料。
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