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Transformer failure diagnosis by means of fuzzy rules extracted from Kohonen Self-Organizing Map

机译:利用Kohonen自组织图提取的模糊规则进行变压器故障诊断

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摘要

This paper presents a transformer failure diagnosis system based on Dissolved Gases Analysis that was developed by using a new methodology for extracting fuzzy rules from Kohonen Self-Organizing Map. Firstly, the Kohonen net was trained in order to capture the knowledge from a database of faulty transformers inspected in service. Once the knowledge was captured during the learning stage, it was transformed into the form of Zero-order Takagi-Sugeno fuzzy rules. In the form of fuzzy rules, the relationship between the variables of the system became explicit which have led to a more reliable diagnosis system. Additionally to the extraction of the fuzzy system, a fuzzyfication process was applied in the fuzzy system output. Experimental results demonstrated the efficiency of the diagnosis system proposed that had superior results as compared with other conventional and intelligent methods.
机译:本文提出了一种基于溶解气体分析的变压器故障诊断系统,该系统是使用一种从Kohonen自组织映射中提取模糊规则的新方法开发的。首先,对Kohonen网络进行了培训,目的是从使用中的故障变压器数据库中获取知识。一旦在学习阶段捕获了知识,就将其转换为零阶高木-Sugeno模糊规则的形式。以模糊规则的形式,系统变量之间的关系变得明确,从而导致诊断系统更加可靠。除了模糊系统的提取之外,在模糊系统的输出中还应用了模糊化过程。实验结果证明了所提出的诊断系统的效率,与其他常规和智能方法相比,它具有更好的结果。

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