An Adaptive Distance Protection Scheme for High Varying Fault Resistances

Uma Uzubi, A. Ekwue, E. Ejiogu
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引用次数: 3

Abstract

The variation of fault resistances introduces error in the measured apparent impedance of the conventional distance protection scheme. With this, the measured apparent impedance at the relay location is not proportional to its length. This paper presents an adaptive protection scheme using Artificial Neural Network (ANN) to address the problem. A MATLAB based adaptive distance relaying scheme is proposed using the ANN feed-forward nonlinear supervised back-propagation algorithm based on the Levenberg-Marquardt network topology. The PSCAD /EMTDC software is used to generate the current and voltage signals for specified transmission lines which are used for subsequent ANN training and testing of the proposed algorithm. The proposed non-conventional adaptive scheme was validated with a new set of high fault resistances data using the proposed model. The results show the ability of ANN to correctly detect, classify and localized fault under varying fault resistance.
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一种高变故障电阻自适应距离保护方案
由于故障电阻的变化,导致传统距离保护方案测量的视阻抗存在误差。这样,在继电器位置测量的视阻抗与它的长度不成比例。本文提出了一种基于人工神经网络(ANN)的自适应保护方案。采用基于Levenberg-Marquardt网络拓扑结构的人工神经网络前馈非线性监督反向传播算法,提出了一种基于MATLAB的自适应距离中继方案。使用PSCAD /EMTDC软件生成指定传输线的电流和电压信号,这些信号用于随后的人工神经网络训练和所提出算法的测试。利用该模型对一组新的高故障电阻数据进行了验证。结果表明,在不同的故障电阻下,人工神经网络能够正确地检测、分类和定位故障。
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