PD pattern recognition in oil-paper insulation based on discharge time interval

Quan Zhou, Yun Zhang, Wen-dou An, Fan Liu, R. Liao, Xin Zhang
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引用次数: 1

Abstract

Partial discharge (PD) inside insulation is considered as one major cause of insulation degradation in electrical equipment and attached importance to the safety and reliability of running electrical equipment. Time intervals between consecutive discharges ( Δt ) may even be more efficient to characterize a defect or to differentiate between different defects. Oil-paper insulation is the most important part in transformer. In this paper, five kinds of typical artificial defect models of oil-paper insulation were designed. The time interval distributions of PD pulse were introduced in PD pattern recognition, the 3-D pattern Hn (Δt, ϕ) of discharge phase, time interval and discharge number ϕ-Δt-n distribution was constructed, and the box dimension and information dimension of gray intensity images which are transferred by 3-D pattern were analyzed and extracted. In this scheme, PD fractal dimensions were used as inputs, radial basis function neural network (RBFNN) was used as classifier, five kinds of artificial oil-paper insulation defects were distinguished, recognition rates are all over 90%, and it shows well in noise interference suppression.
基于放电时间间隔的油纸绝缘放电模式识别
绝缘内部局部放电(Partial discharge, PD)被认为是电气设备绝缘劣化的主要原因之一,对电气设备运行的安全性和可靠性至关重要。连续放电之间的时间间隔(Δt)甚至可以更有效地描述缺陷或区分不同的缺陷。油纸绝缘是变压器中最重要的部分。设计了五种典型的油纸绝缘人为缺陷模型。在PD模式识别中引入PD脉冲的时间间隔分布,构建放电相位、时间间隔和放电数ϕ-Δt-n分布的三维模式Hn (Δt, ϕ),并对三维模式传递的灰度图像的盒维数和信息维数进行分析提取。该方案以PD分形维数为输入,采用径向基函数神经网络(RBFNN)作为分类器,对5种人工油纸绝缘缺陷进行了识别,识别率均在90%以上,并对噪声干扰有较好的抑制效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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