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Comparison of IEC 60599 gas ratios and an integrated fuzzy-evidential reasoning approach in fault identification using dissolved gas analysis

机译:IEC 60599气体比的比较和溶解气体分析故障识别中的综合模糊证据推理方法

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Fault identification in oil-filled electrical equipment is a task that requires accurate methods of data collection and analysis. When the oil-paper insulation system in an electrical equipment is subjected to excessive operating stresses various gases are formed which are characteristic of the stresses generating them. The most reliable method of detecting incipient faults due to these stresses in such equipment is the dissolved gas analysis (DGA). Various DGA tools are available for fault identification and they mainly fall into two categories, numerical and artificial intelligence methods. This paper presents the comparison of a numerical method; IEC 60599 gas ratios and an artificial intelligence method; fuzzy-evidential reasoning in fault identification. After careful analysis of various faults documented in IEC and IEEE literature, and classifying them into five categories based on IEC 60599 standards, it is possible to describe them using fuzzy trapezoidal membership functions. By aggregating the resultant partial membership outputs using fuzzy logic or evidential reasoning, faults can be identified. One hundred and seventeen faults cases documented in IEC TC 10 databases are used to compare the effectiveness of the fault identification using these techniques. The fuzzy logic and fuzzy-evidential reasoning techniques appear to yield more accurate results than IEC 60599 gas ratio method. This work also evaluates the degree of normalcy for an equipment considered fault free.
机译:充油电气设备故障识别是需要收集和分析数据的准确方法的任务。当在电气设备的油纸绝缘系统遭受过量的操作应力的各种气体,形成它们的应力生成它们的特性。由于在这样的设备的这些应力检测初期故障的最可靠的方法是将溶解的气体分析(DGA)。各种DGA工具可用于故障识别,他们主要分为两类,数值模拟和人工智能的方法。本文介绍了一种数值方法的比较; IEC 60599气体比和人工智能方法;模糊证据推理在故障识别。经过IEC和IEEE文献中记载的各种故障进行认真分析,并基于IEC 60599个标准进行分类分为五大类,可以用模糊梯形隶属函数来描述它们。通过使用模糊逻辑或证据推理聚集所述所得的部分成员资格的输出,故障可以被识别。在IEC TC 10个数据库记录一百一十七故障的情况下被用来比较的使用这些技术的故障识别的有效性。模糊逻辑和模糊证据推理技术似乎产生比IEC 60599气体比方法更精确的结果。这项工作还评估正常的用于设备故障考虑自由程度。

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