基于机器学习算法的XLPE电力电缆绝缘缺陷检测与分类

M. Saleh, S. Refaat, S. Khatri, A. Ghrayeb
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引用次数: 1

摘要

由于电力设备中的高电应力,由于PD暴露增加,绝缘退化已经普遍存在。在本文中,我们研究了不同的机器学习(ML)方法来检测和分类局部放电(pd),以评估绝缘系统的可靠性。我们使用选择的基于机器学习的算法介绍和检查一组特征。目的是检测和分类在绝缘系统内发生的pd。因此,本文提出了使用合适的PD传感器和机器学习算法来检测缺陷的工具,以促进诊断和增强隔离系统设计。正在对绝缘体中不同形状和大小的几个空隙进行实验。PD传感器用于检测PD的发生。由于存在噪声和其他外部干扰,采用了适当的滤波和去噪方法。然后提取相关的PD特征,如PD幅度、PD重复率、统计特征、小波特征等。本研究试图强调对缺陷类型进行分类的重要性,因为这将使工程师能够确定发生故障的严重程度,并采取适当的对策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Classification of Defects in XLPE Power Cable Insulation via Machine Learning Algorithms
Due to high electric stresses in power equipment, insulation degradation has been prevalent as a result of increased PD exposure. In this paper, we study different machine learning (ML) methods for the detection and classification of partial discharges (PDs) for assessing the reliability of insulation systems. We introduce and examine a set of features using selected machine learning-based algorithms. The aim is to detect and classify PDs transpiring within insulation systems. Therefore, this paper presents tools to detect defects using suitable PD sensors and Machine Learning algorithms to facilitate diagnostics and enhance isolation system design. Experiments are being conducted on several voids in the insulator with varying shapes and sizes. A PD sensor is used for detecting the PDs taking place. Due to the presence of noise and other external interferences, appropriate filters and denoising methods are implemented. After that, the relevant PD features, such as the PD magnitude, PD repetition rate, statistical features, wavelet features, etc., are extracted. This study attempts to emphasize the importance of classifying the type of defect, as this will allow engineers to determine the severity of the fault taking place, and take the proper countermeasures.
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