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Classification of simultaneous multiple partial discharge sources based on probabilistic interpretation using a two-step logistic regression algorithm

机译:基于两步逻辑回归算法的概率解释对同时多个局部放电源进行分类

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摘要

In online condition assessment monitoring of high voltage (HV) insulators, it is often required to identify multiple, simultaneously activated partial discharge (PD) sources that happen in the insulation of the HV apparatus. Phased resolved partial discharge (PRPD) patterns are commonly used to identify PD sources. However, multiple, concurrent PD sources sometimes result in partially overlapped patterns, which make them hard to be identified. In this paper, we develop an accurate, reliable algorithm by constructing a novel two-step logistic regression (LR) model to conduct probabilistic identification of multi-source PDs. To this end, principal component analysis is applied on a database to construct a low dimensional space associated with single-source PDs. Samples of multi-source PDs are then projected onto this space and one-class kernel support vector machine is adopted to distinguish multi-source PDs from single-source ones. Finally, classification is performed by estimating the probability (degree of membership) of each PRPD pattern arising from different multi-source PDs following two rounds of LR modeling. To evaluate the performance of our proposed method, we study a number of multi-source PD models to simulate common defects of Gas-Insulated Switchgear (GIS) in small-scale laboratory test cells with realistic SF6 gas condition. Observations are obtained using fingerprints generated by a novel approach from recorded PRPD patterns. Comprehensive performance evaluation of the proposed algorithm and its advantages are conducted and the development of analytical equations is presented. The results of this paper can be used to design a solid basis for an automated multi-source classification system, which facilitates multi-source PD identification in early stages and safe operation of HV apparatus.
机译:在对高压(HV)绝缘子进行在线状态评估监视时,通常需要识别在HV设备绝缘中同时发生的多个同时激活的局部放电(PD)源。分相分辨局部放电(PRPD)模式通常用于识别PD源。但是,多个并发的PD源有时会导致部分重叠的模式,这使得它们很难被识别。在本文中,我们通过构建新颖的两步逻辑回归(LR)模型来进行多源PD的概率识别,从而开发出一种准确,可靠的算法。为此,将主成分分析应用于数据库以构建与单源PD关联的低维空间。然后将多源PD的样本投影到此空间上,并采用一类内核支持向量机来区分多源PD和单源PD。最后,通过评估经过两轮LR建模的不同多源PD产生的每个PRPD模式的概率(隶属度)来执行分类。为了评估我们提出的方法的性能,我们研究了多种多源PD模型,以模拟具有实际SF6气体条件的小型实验室测试单元中气体绝缘开关设备(GIS)的常见缺陷。使用通过新颖方法从记录的PRPD模式生成的指纹获得观察结果。对该算法进行了综合性能评估,并提出了其优势,并提出了解析方程的发展。本文的结果可为自动多源分类系统的设计打下坚实的基础,该系统有助于早期的多源PD识别和高压设备的安全运行。

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