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First Order Statistical Features Thermal Images for Surge Arrester Fault Classification

机译:一阶统计特征浪涌避雷器故障分类的热图像

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Thermal imaging technique is a very convenient, versatile and non-contact method which has been used for fault condition diagnosis of electrical equipment. The fault condition diagnosis is composed with data acquisition, data pre-processing, data analysis and decision making. Some important features contain in thermal image can be extracted for equipment condition monitoring and fault diagnosis. This paper attempts to extract some important features from the zinc oxide (ZnO) surge arrester using first order statistical histogram extraction to classify the fault condition using neural network. The experimental work was carried out to capture thermal image of 120 kV rated ZnO surge arrester. The thermal images were segmented and plotted histogram using dedicated software. Some features such as the maximum, minimum, mean, standard deviation, and variance were extracted using the extraction method, classification of aging was carried out using the neural network based on the leakage current values. The health states consist of normal, defection and faulty. The results show that the thermal image features extracted using the extraction method can be used to classify the fault condition of the ZnO surge arresters.
机译:热成像技术是一种非常方便,多功能和非接触式方法,已被用于电气设备的故障条件诊断。故障条件诊断由数据采集,数据预处理,数据分析和决策组成。可以提取在热图像中包含的一些重要功能以用于设备状态监测和故障诊断。本文试图利用一阶统计直方图提取从氧化锌(ZnO)浪涌避雷器中提取一些重要特征,以使用神经网络对故障状况进行分类。进行实验工作以捕获120 kV额定ZnO电涌避雷器的热图像。使用专用软件分段和绘制直方图的热图像。使用提取方法提取诸如最大,最小,平均值,标准偏差和方差的一些特征,基于漏电流值使用神经网络进行老化的分类。健康状态包括正常,叛逃和错误。结果表明,使用提取方法提取的热图像特征可用于对Zno浪涌避雷器的故障状况进行分类。

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