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A New Approach to EHV Transmission Line Fault Classification and Fault Detection Based on the Wavelet Transform and Artificial Intelligence

机译:基于小波变换和人工智能的EHV传输线故障分类和故障检测的一种新方法

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This paper describes a novel fault classification and fault detection scheme using current signal data from only one end of a transmission system. Firstly, the measured current signals are decomposed using the wavelet transform to obtain the necessary frequency details and then the spectral energy for a chosen number of wavelet coefficients are calculated using a moving short time window; this forms the feature extraction stage, which in turn, defines the inputs for the neural network which is used for classifying the types of fault. After the fault type is identified, the proposed scheme selects the specific neural network of the fault type to distinguish between internal and external faults by utilizing the same patterns features extracted from the previous stage. The input features comprise both the high and low frequency components to enhance performance of the scheme. An extensive series of studies for a whole variety of different system and fault conditions clearly show that the performance of the scheme both for fault classification and detection is accurate and robust.
机译:本文介绍了一种新颖的故障分类和故障检测方案,使用来自传输系统的一端的电流信号数据。首先,使用小波变换分解测量的电流信号以获得必要的频率细节,然后使用移动的短时间窗口计算所选择的小波系数数量的光谱能量;这形成了特征提取阶段,这又定义了用于对故障类型进行分类的神经网络的输入。在识别出故障类型之后,所提出的方案选择故障类型的特定神经网络来区分内部和外部故障,通过利用从前一个阶段提取的相同模式特征。输入特征包括高频和低频分量,以增强方案性能。对于各种不同系统和故障条件的广泛的一系列研究清楚地表明,该方案的性能对于故障分类和检测都是准确和稳健的。

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