Condition Monitoring of Power Insulators Using Intelligent Techniques–A Survey

I. Silva, D. Spatti, Victor Yoshizumi, S. Lopes, R. Flauzino, Beatriz De Lima Tavares, Ana Cláudia Barquete, Wallace Honorato
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Abstract

Studies that evaluate the monitoring of the condition of power insulators and the malfunction of these devices are especially focused on the main variables involved with their aging process. The early degradation of power insulators, which is more common in highly polluted locations, results in risks to the operation of the electrical system and can financially impact power utilities due to unplanned service interruptions and premature maintenance. Many techniques have been proposed in the literature to evaluate the condition of power insulators. Among these techniques, intelligent systems or machine learning techniques stand out, being pointed out as one of the most promising tools for the early detection of malfunctions in such equipment. However, there is a lack of studies that address this problem more broadly, using the full capacity of intelligent techniques to compile a complete and expert monitoring system that can make automatic decisions or provide subsidies to the operator for more assertive maintenance actions. Based on the studies found in the literature and on the shortcomings identified on the subject, this work presents an investigation into the use of intelligent techniques for monitoring the condition of power insulators in transmission lines, mainly focusing on the early detection of malfunctions of these devices.
基于智能技术的电力绝缘子状态监测研究综述
评估电力绝缘子状态监测和这些设备故障的研究特别集中在涉及其老化过程的主要变量上。电力绝缘体的早期退化在高污染地区更为常见,这给电力系统的运行带来了风险,并可能由于计划外的服务中断和过早的维护而对电力公司产生财务影响。文献中提出了许多技术来评估电力绝缘子的状况。在这些技术中,智能系统或机器学习技术脱颖而出,被认为是早期检测此类设备故障的最有前途的工具之一。然而,缺乏更广泛地解决这一问题的研究,利用智能技术的全部能力来编制一个完整的专家监测系统,该系统可以自动做出决策或为作业者提供补贴,以采取更果断的维护行动。基于在文献中发现的研究和在该主题上发现的缺点,本工作提出了对使用智能技术监测输电线路中电力绝缘子状况的调查,主要集中在这些设备故障的早期检测上。
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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