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Identification of Partial Discharge Source in Power Apparatus in Practical Substation Utilizing Artificial Neural Network

机译:基于人工神经网络的实用变电站电力设备局部放电源识别

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In the previous report, two types of artificial neural network (ANN) were constructed based on waveform data and phase-resolved partial discharge (PRPD) patterns obtained from simulated defect samples in the laboratory. In this report, the two types of ANN were used to discriminate between PD and noise for signals acquired from a 72 kV tank type gas insulated switchgear (GIS) installed at a substation. The signals obtained from the GIS also include those caused by abnormalities due to floating electrodes that were confirmed by internal inspection after the measurement. It was found that the signals caused by the abnormality were mainly judged as noise and PD by ANN_WP and ANNJPR, respectively. The disagreement by ANN_WP is attributed to the waveform information change due to signal propagation and attenuation, while ANN_PR provides better judgement owing to keeping the phase information at which PD occur. As a result, ANN_PR is found to be more effective means to judge the PD source in the field.
机译:在先前的报告中,根据波形数据和从实验室中的模拟缺陷样品获得的相分辨局部放电(PRPD)模式,构造了两种类型的人工神经网络(ANN)。在此报告中,使用两种类型的ANN来区分从安装在变电站的72 kV储罐式气体绝缘开关设备(GIS)获得的信号的PD和噪声。从GIS获得的信号还包括由浮动电极引起的异常所引起的信号,这些信号是在测量后通过内部检查确认的。发现由异常引起的信号主要由ANN_WP和ANNJPR分别判断为噪声和PD。 ANN_WP的分歧归因于由于信号传播和衰减引起的波形信息变化,而ANN_PR由于保留了发生PD的相位信息而提供了更好的判断。结果,发现ANN_PR是在现场判断PD源的更有效手段。

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