Advantages of Using Diagnostic and Monitoring Data for Intelligent Condition Monitoring of Power Network Equipment

B. Jurišić, T. Zupan, Marin Schönberger, Ljupko Teklic, Goran Levačić
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Abstract

Every transmission system operator needs to be able to provide its services reliably and cost-effectively. In order to determine the state of the vital electrical equipment in service, two main approaches are nowadays being used: periodic data provided through a set of defined diagnostic measurements and online data that originates from modern monitoring systems. Modern guidelines suggest combining these two datasets in order to have a more economic and technically more detailed insight into the behavior of equipment, as well as providing a number of additional benefits, such as increasing the reliability of the power supply, detailed planning and efficient upgrade of the power network. This paper presents guidelines on how to implement such a solution and shows the advantages of using this type of intelligent condition monitoring for transmission system operators' fleet asset management.
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诊断监测数据用于电网设备智能状态监测的优势
每个输电系统运营商都需要能够提供可靠且经济有效的服务。为了确定正在使用的重要电气设备的状态,目前主要使用两种方法:通过一组定义的诊断测量提供的定期数据和源自现代监测系统的在线数据。现代指南建议将这两个数据集结合起来,以便对设备的行为有更经济和技术上更详细的了解,以及提供一些额外的好处,例如提高供电的可靠性,详细规划和有效升级电网。本文介绍了如何实施这种解决方案的指导方针,并展示了将这种智能状态监测用于输电系统运营商车队资产管理的优势。
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