基于经验模态分解的概率神经网络故障分类

M. Manjula, S. Mishra, A. Sarma
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引用次数: 9

摘要

提出了一种基于经验模态分解(EMD)的电力系统电压跌落故障检测与分类新方法。需要一种根据电压跌落分析电力系统故障数据的技术。此外,还提供有关底层事件(即故障类型)的信息。EMD是一种将非平稳信号分解为单分量和对称分量信号的方法,称为内禀模态函数(IMFs)。此外,IMF的希尔伯特变换(HT)提供了幅值和相角信息。每个阶段的前三个imf的特征特征被用作分类器概率神经网络(PNN)的输入,用于故障类型识别。将并联故障分为四类。并与小波变换(WT)进行了比较。仿真结果表明,EMD的分类精度较高,证明了该方法对故障进行分类的有效性。
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Empirical mode decomposition based probabilistic neural network for faults classification
This paper presents a novel method of detecting and classifying the power system faults of voltage sags based on Empirical Mode Decomposition (EMD). A technique employed for analyzing power system fault data in terms of voltage sags is required. Also, provides information about the underlying event i.e. the fault type. EMD is to method which decomposes a non stationary signal into mono component and symmetric component signals called Intrinsic Mode Functions (IMFs). Further the Hilbert Transform (HT) of IMF provides magnitude and phase angle information. The characteristic features of the first three IMFs of each phase are used as inputs to the classifier Probabilistic Neural Network (PNN) for identification of fault type. Four types of shunt faults are taken for classification. A comparison is also made with wavelet Transform (WT). Simulation results show that the classification accuracy is better for EMD, which proves that the method is efficient in classifying the faults.
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