引脚型绝缘子局部放电的指纹和神经网络分类

M. Quizhpi-Cuesta, F. Gómez-Juca, W. Orozco-Tupacyupanqui, F. Quizhpi-Palomeque
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引用次数: 5

摘要

局部放电(PD)或局部击穿(PB)的分类是一个重要的问题,有助于确定引脚型绝缘子中这种电气现象的原因。本文提出了一种基于神经网络的PD分类方法。这种分类技术由三部分组成。首先,局部放电的检测和测量是通过使用数字有限脉冲响应(FIR)滤波器实现的,其主要目的是获得具有PB显著特征的电荷。该工艺的第二部分处理部分放电的分类。通过统计分析获得PD模式或指纹,并通过神经网络进行分类。最后,该方法的第三部分侧重于解释从神经网络获得的信息并确定引脚隔离器中的PD电流。结果表明,所提出的引脚型隔离器局部放电分析与检测技术能够有效地优化PB的分析与分类时间。
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 in pin type insulators using fingerprints and neural networks
The classification of partial discharge (PD) or partial breakdown (PB) is an important issue that helps to identify the cause of this electrical phenomenon in pin type insulators. In this work, a PD classification method based on neural networks (NN) is proposed. This sorting technique consists of three parts. First, the detection and measurement of partial discharge are achieved by using a digital finite impulse response (FIR) filter, whose main objective is to obtain electrical charges with significant characteristics of the PB. The second part of the process deals with the classification of partial discharge. A statistical analysis is implemented to obtain PD patterns or fingerprints which are classified by a neural network. Finally, the third part of the proposed method focuses on interpreting the information obtained from the NN and determining the PD current in the pin isolator. The results show that this proposed technique of analysis and detection of partial discharge in pin type isolators is successful in optimizing the time of analysis and classification of PB.
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