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Realization of partial discharge signals in transformer oils utilizing advanced computational techniques

机译:利用先进的计算技术实现变压器油中的局部放电信号

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The measurement of acoustic and electrical signals for the partial discharge (PD) activity due to the presence of metallic particles within transformer oil are utilized for the characterization of the incipient hazards. The utilization of phase resolved, in addition, to time resolved partial discharge signals is undertaken to extract numerous features using statistical and frequency analyzers. The extracted features are down scaled to pinpoint the effective attributes that render an intelligent classification means useful for determining contaminating particle type and dimensions. This is accomplished by utilizing feature selection wrapper models undertaking the sequential floating forward selection (SFFS) and particle swarm optimization as alternative search strategies. Support vector machines (SVM) is finally used for the classification of contaminating particles identity. A comprehensive comparison between various selection techniques of the best feature vector for the most efficient classification is tackled based on size of selected feature vector, processing time and success of classification. Results of this study can be integrated into a smart automatable tool based on recent data mining techniques that would provide an efficient and prompt identification for the nature of incipient hazards due to lack in insulation integrity.
机译:由于变压器油中金属颗粒的存在,对局部放电(PD)活动的声信号和电信号的测量被用于表征初发危险。除了时间分辨的局部放电信号外,还利用相位分辨的信号来利用统计和频率分析仪提取许多特征。提取的特征按比例缩小,以查明有效属性,这些属性使智能分类方法可用于确定污染性粒子的类型和尺寸。这是通过利用特征选择包装模型来完成的,该模型采用了顺序浮动前向选择(SFFS)和粒子群优化作为替代搜索策略。最后,将支持向量机(SVM)用于污染颗粒身份的分类。根据所选特征向量的大小,处理时间和分类成功与否,对针对最有效分类的最佳特征向量的各种选择技术进行了全面比较。这项研究的结果可以集成到基于最新数据挖掘技术的智能自动化工具中,该技术可以快速有效地识别由于缺乏绝缘完整性而引起的初期危害的性质。

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