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A novel feature extraction and optimisation method for neural network-based fault classification in TCSC-compensated lines

机译:TCSC补偿线中神经网络的故障分类的新特征提取与优化方法

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The suitability of fault classifiers introduced hitherto to operate correctly under a real TCSC transmission system remains a challenge since the computations are determined based on a number of postulations. This paper describes an alternative approach to fault classification in TCSC lines using artificial neural networks (ANNs). Special emphasis is placed on illustrating a combined wavelet transform and self-organising map (SOM) methodology to extract, validate and optimise the key characteristics of the fault transient phenomena in a TCSC line such that the input features to the ANNs are near optimal. As a result, it is shown that the fault classification proposed provides the ability to accurately classify the fault type, obviating the need for any predefined assumptions. Extensive simulation studies have been made to verify that the proposed method is both powerful and appropriate for fault classification.
机译:由于基于许多假设确定的计算,因此在真实的TCSC传输系统下引入的故障分类器的适用性仍然是挑战。本文介绍了使用人工神经网络(ANN)的TCSC线路故障分类的替代方法。特别强调说明了解组合的小波变换和自组织地图(SOM)方法,以提取,验证和优化TCSC线中故障瞬态现象的关键特性,使得ANNS的输入特征在最佳状态附近。结果,表明,建议的故障分类提供了准确分类故障类型的能力,避免了对任何预定义假设的需求。已经进行了广泛的仿真研究,以验证所提出的方法是否强大且适合故障分类。

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