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Recognition of partial discharge using wavelet entropy and neural network for TEV measurement

机译:基于小波熵和神经网络的TEV测量识别局部放电

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摘要

Partial discharge (PD) is caused by the deterioration of insulation materials. Its detection and accurate measurement are very important to prevent insulation breakdown and catastrophic failures. Detection of PDs in metal-clad apparatus via TEV method is a promising approach in non-intrusive on-line tests. However, the electrical interference from background environment is the major barrier of improving its measuring accuracy. The combination of wavelet analysis that reveals local features and entropy that measures disorder can just fulfill the requirements of PD signal analysis and is thus investigated in this paper. Then a wavelet-entropy based PD recognition method is proposed. The pulse features that are characterized by wavelet entropy are employed as the input pattern of a classifier constructed with feed-forward back-propagation neural network. Finally, some PD groups with noisy interferences are tested by trained network. The recognition rate of real PD pulses demonstrates the proposed wavelet-entropy based method is effective in PD signal de-noising.
机译:局部放电(PD)是由绝缘材料的劣化引起的。它的检测和准确测量对于防止绝缘击穿和灾难性故障非常重要。在非侵入式在线测试中,通过TEV方法检测金属包覆设备中的PD是一种很有前途的方法。然而,来自背景环境的电干扰是提高其测量精度的主要障碍。揭示局部特征的小波分析和测量疾病的熵恰好可以满足PD信号分析的要求,因此本文进行了研究。然后提出了一种基于小波熵的局部放电识别方法。以小波熵为特征的脉冲特征被用作由前馈反向传播神经网络构造的分类器的输入模式。最后,通过训练有素的网络测试了一些带有干扰的PD组。实际PD脉冲的识别率表明,所提出的基于小波熵的方法在PD信号降噪中是有效的。

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