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A Novel Discriminative Approach Based on Hidden Markov Models and Wavelet Transform to Transformer Protection

机译:基于隐马尔可夫模型和小波变换的变压器判别新方法

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摘要

In this paper we present a combinatorial scheme based on hidden Markov models (HMM) and wavelet transform (WT) to discriminate between magnetizing inrush currents and internal faults in power transformers. HMMs are powerful tools for transient classification which compute the maximum likelihood probability between training and testing data signals for identification. The WT is employed to extract certain features which reduce the computation burden of HMMs and enhance detection accuracy. The newly extracted feature efficiently discriminates between faults by different trends. The k-means clustering technique is applied to reduce the training procedure time investment. Since the discrimination method is based on the probabilistic characteristics of the signals without application of any deterministic index, more reliable and accurate classification is achieved. This method is independent of the selection thresholds. Based on the proposed algorithm a highspeed relay response (a quarter of a cycle) can be achieved. The suitable performance of this method is demonstrated by simulation of different faults and switching conditions on a power transformer using PSCAD/EMTDC software.
机译:在本文中,我们提出了一种基于隐马尔可夫模型(HMM)和小波变换(WT)的组合方案,以区分励磁涌流和变压器内部故障。 HMM是用于瞬态分类的强大工具,可计算训练和测试数据信号之间的最大似然概率以进行识别。 WT用于提取某些特征,这些特征减少了HMM的计算负担并提高了检测精度。新提取的功能可通过不同趋势有效地区分故障。采用k均值聚类技术来减少训练过程的时间投入。由于判别方法基于信号的概率特征,而无需应用任何确定性指标,因此可以实现更可靠,更准确的分类。该方法与选择阈值无关。基于提出的算法,可以实现高速继电器响应(四分之一周期)。通过使用PSCAD / EMTDC软件在电力变压器上模拟不同的故障和开关条件,证明了该方法的适当性能。

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