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Implementation of ANFIS and FIS-ID3 in Transformer Oil-Paper Assessment

机译:ANFIS和FIS-ID3在变压器油纸评估中的实现

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Power transformers play vital role in electrical power system, that makes it crucial to monitor its current condition. Measurements of oil-paper insulation health index through parameters like Furfural (2FAL) and Degree of Polymerization are keys to assess life of power transformer, despite the fact that those measurements are not included in routine test. This paper presents the use of Artificial Intelligence to do condition assessment of oil-paper insulation of power transformer through its dissolved gases and dielectric characteristics. As much as 182 in-service transformers are observed and were used as training set of the ANFIS and FIS-ID3 model, while 69 other transformers were used as testing dataset. Acidity, Interfacial tension, CO, and CO2 are potential to become input parameters of the health index. The result shows that FIS-ID3 have some advantages over ANFIS that is worthily noted for the next development.
机译:电力变压器在电力系统中起着至关重要的作用,因此监视其电流状态至关重要。通过糠醛(2FAL)和聚合度等参数测量油纸绝缘健康指数是评估电力变压器寿命的关键,尽管常规测试中并未包括这些测量。本文介绍了利用人工智能通过其溶解气体和介电特性对电力变压器油纸绝缘进行状态评估的方法。观察到多达182台在役变压器,并被用作ANFIS和FIS-ID3模型的训练集,而其他69台变压器被用作测试数据集。酸度,界面张力,CO和CO \ n 2 \ n可能会成为健康指标的输入参数。结果表明,与ANFIS相比,FIS-ID3具有一些优势,值得进一步开发。

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