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Accurate fault classification in series compensated multi-terminal extra high voltage transmission line using Probabilistic Neural Network

机译:使用概率神经网络的串联补偿多端超高压输电线路的精确故障分类

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摘要

This paper presents a novel method proposed for protection of multi-bus EHV transmission system which is employed with a series capacitor bank. It has been shown that for a wide range of operating conditions and fault scenarios arising in a series compensated transmission line poses great difficulty with conventional relaying scheme to correctly identify and classify faults. A Multi-resolution wavelet transform based approach is used to decompose the signals derived from CT in to low and high frequency components accompanied by a Neural Network scheme to classify the faults. The Probabilistic Neural Network (PNN) based scheme associated with a novel feature extraction methodology has been shown to classify the faults on the transmission line. Detailed and extensive simulation studies illustrates that the fault pattern classification approach presented here is effective and robust to handle wide range of operating conditions of Transmission line to which may undergo variety of fault conditions.
机译:本文提出了一种新的方法,用于保护与串联电容器组一起使用的多总线超高压输电系统。已经表明,对于一系列的工作条件和故障情况,在串联补偿的传输线中产生的故障对于传统的中继方案来说很难正确地识别和分类故障。基于多分辨率小波变换的方法用于将CT in的信号分解为低频分量和高频分量,并伴有神经网络方案以对故障进行分类。与新的特征提取方法相关的基于概率神经网络(PNN)的方案已被证明可以对传输线上的故障进行分类。详细而广泛的仿真研究表明,此处介绍的故障模式分类方法对于处理可能经历各种故障情况的输电线路的广泛运行条件而言,是有效且强大的。

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