Power System Fault Detection Automation Based on Fuzzy Logic

Ivica Petrović, S. Nikolovski, H. Glavaš, Filip Relić
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Abstract

Fuzzy logic provides an appropriate way to incorporate an individual's knowledge into expert systems using descriptive language expressions. A large number of commercially successful applications in power energy systems show that fuzzy logic can be used very successfully, especially during disturbances. During a disturbance, automation of system fault analysis and information processing becomes desirable and necessary, due to the large increase in data collected from the system. The paper analyzes the possibilities for implementing automated fault analysis systems based on digital fault recorders, digital protection relays, sequence of events recorders, intelligent alarm processors and lightning location systems. These systems are interconnected with Intelligent Electronic Devices, supervisory control and data acquisition systems, remote terminal units or protection devices which are combined with different intelligent electronic devices in the system. For large number of devices and data, fuzzy systems have proven to be effective in detecting and classifying power system failures.
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基于模糊逻辑的电力系统故障检测自动化
模糊逻辑提供了一种适当的方法,将个人的知识结合到使用描述性语言表达的专家系统中。在电力能源系统中大量成功的商业应用表明,模糊逻辑可以非常成功地应用,特别是在干扰情况下。在发生干扰时,由于从系统中收集的数据大量增加,系统故障分析和信息处理的自动化变得非常必要。本文分析了实现基于数字故障记录仪、数字保护继电器、事件顺序记录仪、智能报警处理器和闪电定位系统的自动故障分析系统的可能性。这些系统与智能电子设备、监控和数据采集系统、远程终端单元或与系统中不同智能电子设备相结合的保护装置相互连接。对于大量的设备和数据,模糊系统已被证明是有效的检测和分类电力系统的故障。
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[Blank page] On the Benefits of Deep Convolutional Neural Networks on Animal Activity Recognition Message from the SST 2020 General Chair and Program Co-Chairs Smart Energy III Power System Fault Detection Automation Based on Fuzzy Logic
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