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The Fault Diagnosis Algorithm for Transformer Based on Extenics and Rough Set Theory

机译:基于可拓学和粗糙集理论的变压器故障诊断算法

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As one of the most important equipments to guarantee power gird operating safely and stably, the fault diagnosis of transformer has most important sense. Since the general diagnosis methods such as DGA and attributes' reduction of rough set haven't enough precision for transformer's fault diagnosis.Extenies and rough set theory are brought into diagnosing the fault of transformer. Using attribute predigesting method in rough set theory to classify the attribute term which needed by each fault diagnosis. Then building matter element model for transformer's fault diagnosis. Using DGA testing datum to be attribute set and the transformer's standard fault model to be the decision set for transformer's fault diagnosis. Utilize association function from Exterries to count each fault degree. Define the fault accepting rule to get transformer's fault. Use this method to diagnose one fault transformer and the diagnosis result matched case of fact fault.Apply this method to diagnose 76 DGA testing data and the right ratio of diagnostic result is better than IEC method.
机译:作为保证电网安全稳定运行的最重要设备之一,变压器的故障诊断具有最重要的意义。由于一般的诊断方法,如DGA和粗糙集属性的减少,对变压器的故障诊断还不够精确。将扩展性和粗糙集理论引入到变压器故障的诊断中。用粗糙集理论中的属性简化算法对每个故障诊断所需要的属性项进行分类。然后建立物元模型进行变压器故障诊断。使用DGA测试数据作为属性集,将变压器的标准故障模型作为变压器故障诊断的决策集。利用Exterries中的关联函数来计算每个故障程度。定义故障接受规则以获取变压器的故障。该方法用于诊断一台故障变压器,诊断结果与实际情况相符。该方法用于诊断76个DGA测试数据,正确的诊断结果比率优于IEC方法。

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