Partial discharge analysis using PCA and ANN for the estimation of size and position of metallic particle adhering to spacer in Gas-Insulated System

F. N. Budiman, Y. Khan
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引用次数: 1

Abstract

The presence of metallic particles can adversely affect the reliability of Gas-Insulated Substation (GIS) by initiating partial discharges (PDs). Therefore, the investigation of PD characteristics and particle size and position on the spacer surface are the significant steps toward the reliability improvement of the GIS equipments. This paper presents the use of Back-Propagation Artificial Neural Network (BP-ANN) technique supplemented with Principal Component Analysis (PCA) as the PD pattern recognition tools for the estimation of the particle size (length) and position on the spacer surface in a simulated GIS. PD features acquisition was performed by collecting their fingerprints from the measurements carried out using IEC 60270 method. The role of PCA is to reduce the dimension of the collected PD fingerprint data. The obtained results show that PCA can significantly improve the BP-ANN performance in terms of execution time. Without PCA, 88% and 92% accuracies can be achieved when BP-ANN was implemented with 1 and 2 hidden layers, respectively. With the integration of PCA, execution times were greatly reduced while retaining fairly high accuracy, i.e. 88% and 88%. Thus the proposed method is a contribution in development of the tool for improving the reliability of GIS.
用主成分分析和神经网络分析气体绝缘系统中金属颗粒附着在隔离片上的大小和位置
金属颗粒的存在会引发局部放电,从而对气体绝缘变电站(GIS)的可靠性产生不利影响。因此,研究局部放电特性和间隔表面的颗粒大小和位置是提高GIS设备可靠性的重要步骤。本文介绍了利用反向传播人工神经网络(BP-ANN)技术和主成分分析(PCA)作为PD模式识别工具,在模拟GIS中估计间隔表面上的颗粒大小(长度)和位置。PD特征采集是通过使用IEC 60270方法从测量中收集指纹来完成的。PCA的作用是对采集到的PD指纹数据进行降维。结果表明,PCA在执行时间上显著提高了BP-ANN的性能。在不使用PCA的情况下,BP-ANN分别使用1层和2层隐藏层时,准确率分别达到88%和92%。通过与PCA的集成,大大减少了执行时间,同时保持了较高的准确率,分别为88%和88%。因此,所提出的方法为开发提高GIS可靠性的工具做出了贡献。
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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