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Analysis of artificial intelligence expert systems for power transformer condition monitoring and diagnostics

机译:用于电力变压器状态监测和诊断的人工智能专家系统分析

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A large amount of data is generated through monitoring, maintenance, repair and diagnostics of power transformer. However, all these data cannot preindicate the exact type and probability of failure. To overcome the problem this paper presents artificial intelligence based methodology for power transformers fault detection and classification. The possibility of presented monitoring methodology is to assist the operator's engineers in decision making about urgency of intervention and type of maintenance of power transformer. The article analyzes the application of Mamdani-model and Sugeno-model in fuzzy expert system for fault diagnosis based on the current state of the power transformer. Paper presents two case studies with one unique and five separate controllers. In the first case inputs of controller are results of on-line and off-line transformer tests: age, the overheating temperature of the hot spot, frequency response analysis, temperature of insulation, dissolved gas-in-oil analysis, tg delta and polarization index. Second case study in addition to the existing inputs includes previous measurements. A fuzzy controller (FC) is designed to characterize the operating condition and to determine the urgency of intervention with possibility to indicate probability of specific type of failure. Cumulative probability of occurrence of the faults is also observed in second case study. FCs are tested based on real measurements from Serbian transmission system. The results show acceptable effectiveness in detecting different faults and might serve as a good orientation in the power transformer condition monitoring. (C) 2017 Elsevier B.V. All rights reserved.
机译:通过监视,维护,维修和诊断电力变压器会生成大量数据。但是,所有这些数据都无法预示故障的确切类型和概率。为了克服这个问题,本文提出了一种基于人工智能的电力变压器故障检测和分类方法。提出监视方法的可能性是帮助操作人员的工程师做出有关干预紧急性和电力变压器维护类型的决策。本文分析了Mamdani模型和Sugeno模型在基于电力变压器电流状态的模糊专家系统故障诊断中的应用。本文介绍了两个案例研究,其中有一个独特的控制器和五个独立的控制器。在第一种情况下,控制器的输入是在线和离线变压器测试的结果:老化,热点过热温度,频率响应分析,绝缘温度,油中溶解气体分析,tg增量和极化指数。除了现有的输入外,第二个案例研究还包括以前的测量。模糊控制器(FC)旨在表征运行条件并确定干预的紧迫性,并有可能指示特定类型故障的可能性。在第二个案例研究中也观察到了故障发生的累积概率。 FC是根据来自塞尔维亚传输系统的实际测量值进行测试的。结果显示出在检测不同故障方面的可接受的有效性,并且可以作为电力变压器状态监测的良好方向。 (C)2017 Elsevier B.V.保留所有权利。

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