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Identification of Partial Discharge Location in a Power Cable Using Fuzzy Inference System and Probabilistic Neural Networks

机译:基于模糊推理系统和概率神经网络的电力电缆局部放电位置识别

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摘要

This article proposes an approach for identification of partial discharge location in a power cable using a fuzzy inference system and probabilistic neural networks. For accurate determination of the partial discharge source, feature extraction of the measured signals is used in the proposed method. White Gaussian noise, which simulates the high noise environment, is added to the partial discharge signals when making measurements. The accurate ratios of the partial discharge occurrence prediction using conventional observations of partial discharge signals via oscilloscopes are much improved by the proposed method. According to the concept of power delivery, both the peak absolute value and average power of partial discharge signals are adopted as input variables of the fuzzy inference system and probabilistic neural networks. Finally, experimental results validate that the proposed approach can effectively determine the location of partial discharge sources in practical partial discharge measurement.
机译:本文提出了一种使用模糊推理系统和概率神经网络来识别电力电缆中局部放电位置的方法。为了精确确定局部放电源,在建议的方法中使用了测量信号的特征提取。模拟高噪声环境的白高斯噪声在进行测量时会添加到局部放电信号中。所提出的方法大大提高了使用传统的通过示波器观察局部放电信号的预测局部放电发生率的准确率。根据功率传递的概念,局部放电信号的峰值绝对值和平均功率均被用作模糊推理系统和概率神经网络的输入变量。最后,实验结果验证了该方法能够在实际局部放电测量中有效地确定局部放电源的位置。

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