Artificial Neural Network-Based Fault Distance Locator for Double-Circuit Transmission Lines

Anamika Jain
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引用次数: 20

Abstract

This paper analyses two different approaches of fault distance location in a double circuit transmission lines, using artificial neural networks. The single and modular artificial neural networks were developed for determining the fault distance location under varying types of faults in both the circuits. The proposed method uses the voltages and currents signals available at only the local end of the line. The model of the example power system is developed using Matlab/Simulink software. Effects of variations in power system parameters, for example, fault inception angle, CT saturation, source strength, its X/R ratios, fault resistance, fault type and distance to fault have been investigated extensively on the performance of the neural network based protection scheme (for all ten faults in both the circuits). Additionally, the effects of network changes: namely, double circuit operation and single circuit operation, have also been considered. Thus, the present work considers the entire range of possible operating conditions, which has not been reported earlier. The comparative results of single and modular neural network indicate that the modular approach gives correct fault location with better accuracy. It is adaptive to variation in power system parameters, network changes and works successfully under a variety of operating conditions.
基于人工神经网络的双回输电线路故障距离定位
本文利用人工神经网络分析了双回路输电线路故障测距的两种不同方法。分别开发了单神经网络和模块神经网络,用于确定两种电路在不同故障类型下的故障距离定位。所提出的方法使用仅在线路的本地端可用的电压和电流信号。利用Matlab/Simulink软件建立了实例电力系统的模型。电力系统参数的变化,例如故障起始角、CT饱和、源强度、其X/R比、故障电阻、故障类型和故障距离,对基于神经网络的保护方案的性能的影响已经进行了广泛的研究(对于两个电路中的所有十个故障)。此外,还考虑了网络变化的影响,即双回路运行和单回路运行。因此,目前的工作考虑了整个可能的操作条件范围,这在以前没有报道过。将单个神经网络与模块化神经网络进行比较,结果表明,模块化神经网络能准确定位故障,定位精度更高。它能适应电力系统参数的变化和网络的变化,在各种运行条件下都能正常工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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