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Identification of PD Defect Typologies Using a Support Vector Machine

机译:使用支持向量机识别PD缺陷类型

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The Support Vector Machine (SVM) has been adopted here to identify four different Partial Discharge (PD) sources that can affect the insulation system of AC rotating machines. A number of Roebel bars were prepared to generate bar-to-finger, corona and slot PD in addition to the distributed micro-voids that are typical of this insulation type. PD measurements were performed using different set-up conditions, defect locations and voltage levels in order to produce examples of PD activity that represent the same source under a range of conditions. The SVM was trained to differentiate between the inherent features (global and derived parameters) of the phase resolved PD (PRPD) distributions produced by each discharge source. In order to achieve the optimum source classification accuracy, different combinations of distribution features were used to produce a range of SVM models to identify which parameters were influenced by the measurement conditions. A cross validation technique has been used to obtain the highest testing accuracy. Moreover, results obtained using raw data and normalized parameters, were also compared to obtain the best identification performance of the given defect typologies.
机译:这里采用了支撑载体机(SVM)来识别可能影响交流旋转机器的绝缘系统的四种不同的局部放电(PD)源。除了典型的这种绝缘型的分布式微空隙之外,还准备了许多滚杆杆以产生条形杆,电晕和插槽PD。使用不同的设置条件,缺陷位置和电压电平进行PD测量,以便在一系列条件下产生表示相同源的PD活性的示例。培训SVM以区分由每个放电源产生的相位解析的PD(PRPD)分布的固有特征(全局和导出参数)。为了实现最佳的源分类精度,使用不同的分布特征组合来产生一系列SVM模型,以识别哪些参数受测量条件的影响。交叉验证技术已被用于获得最高的测试精度。此外,还将使用原始数据和标准化参数获得的结果,以获得给定缺陷类型的最佳识别性能。

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