Busbar protection using a wavelet based ANN

Ahmad Abdullah
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引用次数: 5

Abstract

This paper presents a new application of wavelet based artificial neural networks to the field of high voltage busbar protection. Any transient event type-whether fault or not-causes high frequency components to be generated and imposed on the fundamental frequency current. Those components propagate from the line causing them passing through the protected bus bar to the other lines connected to the same bus. In this paper, it is shown that those components captured at any line connected to the bus can be used not only to detect internal and external bus faults but also to identify the faulted line in case of external faults. A scheme will be presented that uses the current from any of the lines connected to the bus to detect internal and external bus faults, classify transients on adjacent lines and identify the line that is causing the transient disturbance. Modal transformation is used to transform phase quantities to modal quantities. Discrete Wavelet Transform (DWT) is used to extract high frequency components of the two aerial modes of the current measured. A feature vector consisting of level 3 details coefficients of the two aerial mode currents is used to train a feedforward neural network with one hidden layer. Results show that very accurate classification can be made using one eighth of a cycle of post event data.
基于小波神经网络的母线保护
提出了一种基于小波的人工神经网络在高压母线保护领域的新应用。任何暂态事件类型——无论是故障还是非故障——都会产生高频分量,并施加于基频电流上。这些组件从线路传播,导致它们通过受保护的汇流排到连接到同一总线的其他线路。本文表明,在与母线相连的任何线路上捕获的这些分量不仅可以用于检测母线内部和外部故障,而且在发生外部故障时也可以用于识别故障线路。本文将提出一种方案,利用与母线相连的任何线路的电流来检测母线内部和外部故障,对相邻线路上的暂态进行分类,并识别引起暂态干扰的线路。模态变换用于将相位量转换为模态量。采用离散小波变换(DWT)提取被测电流两种航模的高频分量。利用由两个航模电流的3级细节系数组成的特征向量来训练具有一个隐藏层的前馈神经网络。结果表明,使用八分之一周期的事件后数据可以进行非常准确的分类。
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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