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Application of the Hilbert??Huang transform with fractal feature enhancement on partial discharge recognition of power cable joints

机译:分形特征增强的希尔伯特?? Huang变换在电力电缆接头局部放电识别中的应用

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摘要

This study proposes a novel method of partial discharge (PD) pattern recognition based on the Hilbert??Huang transform (HHT) with fractal feature enhancement. First, this study establishes three common defect types with one blank sample of 25 kV cross-linked polyethylene (XLPE) power cable joints and uses a commercial acoustic emission sensor to measure the acoustic signals caused by the PD phenomenon. The HHT can represent instantaneous frequency components through empirical mode decomposition, and then transform to a 3D Hilbert energy spectrum. Finally, this study extracts the fractal theory feature parameters from the 3D energy spectrum by using a neural network for PD recognition. To demonstrate the effectiveness of the proposed method, this study investigates its identification ability using 120 sets of field-tested PD patterns generated by XLPE power cable joints. Unlike the fractal features extracted from traditional 3D PD images, the proposed method can separate different defect types easily and shows good tolerance to random noise.
机译:这项研究提出了一种新的基于Hilbert ?? Huang变换(HHT)的具有分形特征增强的局部放电(PD)模式识别方法。首先,本研究使用一个25 kV交联聚乙烯(XLPE)电力电缆接头的空白样本来确定三种常见缺陷类型,并使用商用声发射传感器来测量由PD现象引起的声信号。 HHT可以通过经验模式分解表示瞬时频率分量,然后转换为3D Hilbert能谱。最后,本研究通过使用神经网络进行局部放电识别从3D能谱中提取分形理论特征参数。为了证明该方法的有效性,本研究使用XLPE电力电缆接头产生的120组经过现场测试的PD图案,研究了其识别能力。与从传统的3D PD图像中提取的分形特征不同,该方法可以轻松地分离不同的缺陷类型,并表现出对随机噪声的良好耐受性。

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