Stationarity in Partial Discharge Time Series of Electrical Trees

Pablo Donoso, R. Schurch, J. Ardila-Rey, J. Montaña
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Abstract

Electrical treeing is one of the main degradation mechanisms in high voltage polymeric insulation. These trees are hollow tubes that grow inside the insulation under the action of partial discharge (PD) activity; therefore, PD analysis is key to diagnosing polymeric insulation. Two traditional methods for PD analysis are Phase Resolved PD (PRPD) patterns and Pulse Sequence Analysis (PSA). More recently, the use of nonlinear time series analysis (NLTSA) for PD analysis was proposed. A key concept in NLTSA is stationarity; although its formal definition does not apply to experimental data, almost all methods of NLTSA require stationarity. This research uses the Cross Prediction Error (CPE) algorithm to analyze stationarity in PD time series from electrical trees. Their results are evaluated through PSA and PRPD patterns, and NLTSA. This paper shows that tools that consider the information of PD sequences, such as PSA and NLTSA, are more sensitive to stationarity. Therefore, these tools can better detect changes in PD dynamics, thus helping to improve polymeric insulation diagnosis. Furthermore, the results suggested that CPE algorithm could detect changes in PD dynamics since it allows a time-resolved evaluation of stationarity.
电树局部放电时间序列的平稳性
电树是高压聚合物绝缘的主要降解机制之一。这些树是空心管,在局部放电(PD)活动的作用下生长在绝缘体内部;因此,PD分析是诊断聚合物绝缘的关键。PD分析的两种传统方法是相分辨PD (PRPD)模式和脉冲序列分析(PSA)。最近,提出了使用非线性时间序列分析(NLTSA)进行PD分析。NLTSA的一个关键概念是平稳性;虽然它的正式定义不适用于实验数据,但几乎所有的NLTSA方法都要求平稳性。本研究利用交叉预测误差(CPE)算法分析电树PD时间序列的平稳性。他们的结果通过PSA和PRPD模式以及NLTSA进行评估。本文表明,考虑PD序列信息的工具,如PSA和NLTSA,对平稳性更敏感。因此,这些工具可以更好地检测PD动力学的变化,从而有助于提高聚合物绝缘的诊断。此外,结果表明,CPE算法可以检测PD动力学的变化,因为它允许对平稳性进行时间分辨评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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