以波形参数和相位分辨局部放电模式为输入的局部放电源分类

Taufik Rossal Sukma, U. Khayam, Suwarno, Ryouya Sugawara, Hina Yoshikawa, M. Kozako, M. Hikita, Osamu Eda, Masanori Otsuka, Hiroshi Kaneko, Yasuharu Shiina
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引用次数: 8

摘要

局部放电(Partial discharge, PD)是高压设备中可能出现的一种电现象,可以用来诊断设备的状态。然后利用人工神经网络(ANN)对高压设备中的PD源进行分类。采用4种人工局部放电源,3种噪声源,通过3种传感器(瞬态接地电压(TEV)传感器、表面电流传感器(SCS)和高频电流互感器(HFCT))在实验室进行局部放电测量,生成波形参数。用一个PD事件的9个波形参数训练和测试人工神经网络(ANN_ WP)。为了进一步比较,还生成了相分辨局部放电(PRPD)模式,并将其作为训练和测试另一个神经网络(ANN_PR)的输入数据。结果表明,ann_wp的识别率>96%,ANN_PR的识别率>90%。在此基础上,利用新的不同的人工空洞缺陷对人工神经网络进行了测试。结果表明,ann_wp预测新PD数据为空洞缺陷的概率为92%,而ANN_PR预测新PD数据为空洞缺陷的概率为96%。这些结果表明,波形参数可以作为人工神经网络和PRPD模式的输入数据,为识别PD源提供足够的精度。结果表明,通过对现场PD数据的比较,开发的人工神经网络可以作为高压设备诊断的决策支持工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Partial Discharge Sources using Waveform Parameters and Phase-Resolved Partial Discharge Pattern as Input for the Artificial Neural Network
Partial discharge (PD) is one of electrical phenomena which might occur in high voltage (HV) equipment and can be used for diagnosing the condition of the equipment. Artificial neural network (ANN) is then utilized to classify PD source in HV equipment. PD measurements were conducted to generate waveform parameters in laboratory using four kinds of artificial PD sources, three kinds of noise sources by three kinds of sensors (transient earth voltage (TEV) sensor, surface current sensor (SCS) and high frequency current transformer (HFCT)). Nine waveform parameters from one PD event were used for training and testing the ANN (ANN_ WP). For further comparison, phase-resolved partial discharge (PRPD) pattern was also generated and used as input data for training and testing the other ANN (ANN_PR). Results reveal that ANN_ WP provides >96% of recognition rate while ANN_PR gives >90% of recognition rate. Furthermore, the ANNs are then tested using new different artificial void defect. The results show that the ANN_ WP predicted new PD data as void defect with 92 % probability while the ANN_PR prediction probability was found 96%. These results indicate that the waveform parameters can be used as an input data for ANN as well as PRPD pattern to provide sufficient accuracy for identifying the PD source. The results suggest a possibility that developed ANNs can be used as a decision-support tool in HV equipment diagnosis by comparing PD data obtained in the field.
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