首页> 外文会议>CMD 2008;International Conference on Condition Monitoring and Diagnosis >Classification of Defects and Evaluation of Electrical Tree Degradation in Cable Insulation Using Pattern Recognition Method and Weibull Process of Partial Discharge
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Classification of Defects and Evaluation of Electrical Tree Degradation in Cable Insulation Using Pattern Recognition Method and Weibull Process of Partial Discharge

机译:利用模式识别法和局部放电的威布尔过程对电缆绝缘中的缺陷分类和电树降解的评估

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The purpose of this paper is to recognize partial discharge (PD) sources and evaluate of electrical treeing degradation for cable insulation. To acquire PD data, three defective tree models were made. And the data are shown by the phase-resolved partial discharge method (PRPD). As a result of PRPD, tree discharge sources have their own characteristics. If other defects (void, metal particle) exist at internal power cable, their characteristics are shown very differently. This result is related to the time of breakdown and this is important point of cable diagnosis. To apply PD data classification, methods of different type are selected. Those are, multi layer perceptions (MLP-BP), adaptive neuro-fuzzy inference system (ANFIS) and principle component analysis-linear inference system(PCA-LDA). As a result, ANFIS shows the highest rate which value is 100 %. Finally, we performed classification of tree progress using ANFIS and that result is 99 %. To evaluate degradation of electrical tree, weibull distribution was used. The time of each degradation stage (initiation, middle, breakdown) was measured to classify electrical tree degradation with each model by. Using the result, parameters are presumed by the each model and stage and it is possible to calculate time difference of each degradation stage and estimate the lifetime.
机译:本文的目的是识别局部放电(PD)源并评估电缆绝缘的电气树的退化。为了获取PD数据,制作了三个有缺陷的树模型。并且数据通过相分辨局部放电法(PRPD)显示。作为PRPD的结果,树木排放源具有其自身的特征。如果内部电源电缆上存在其他缺陷(空隙,金属颗粒),则它们的特性将有很大不同。该结果与故障时间有关,这是电缆诊断的重要点。为了应用PD数据分类,选择了不同类型的方法。它们是多层感知(MLP-BP),自适应神经模糊推理系统(ANFIS)和主成分分析-线性推理系统(PCA-LDA)。结果,ANFIS显示出最高的比率,其值为100%。最后,我们使用ANFIS对树的进度进行了分类,结果是99%。为了评估电树的退化,使用了威布尔分布。测量每个退化阶段(初始化,中间,击穿)的时间,以对每个模型的电气树退化进行分类。使用该结果,每个模型和每个阶段都将推定参数,并且可以计算每个降解阶段的时间差并估计寿命。

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