电气绝缘系统中无监督局部放电推断的研究

R. Ghosh, P. Seri, G. Montanari
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引用次数: 5

摘要

测量电气绝缘系统的局部放电正在成为电气设备质量控制、鉴定和调试的标准程序。更重要的是,局部放电是评估任何有机绝缘系统健康状况需要监测的主要特性。然而,部分放电测量提供的大部分潜力受到专家记录、处理和解释数据的需要的阻碍,这延迟甚至阻止了这种诊断特性的传播。本文提出了一种新的算法,该算法似乎非常有效地提供了部分放电与噪声的自动分离,这是开发全自动无监督诊断方法的第一步。通过对记录的脉冲进行变换,包括时域、频域和熵,实现了多维信号分解。这样得到的聚类通过统计和人工智能算法进行分离。文中还介绍了该方法在交流正弦电压电源中的应用,并强调了该方法在直流电源和电力电子电源中也是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Track Towards Unsupervised Partial Discharge Inference in Electrical Insulation Systems
Measuring partial discharges in electrical insulation systems is becoming a standard procedure for quality control, qualification and commissioning of electrical apparatus. Even more important, partial discharges are the main property to be monitored to assess the health conditions of any organic insulation system. However, large part of the potentiality offered by partial discharge measurements is hindered by the need of experts to record, process and interpret data, which delays and even prevent from the diffusion of this diagnostic property. This paper presents a new algorithm which seems to be very effective in providing automatic separation of partial discharges from noise, which is the first step to develop a fully automatic and unsupervised diagnostic approach. Multi-dimensional signal decomposition is achieved resorting to various transformation applied to recorded pulses, including time and frequency domains, and entropy. Clusters thus obtained are separated by statistical and artificial intelligence algorithms. Applications to AC sinusoidal voltage supply are presented, highlighting that the proposed approach is valid also under DC and power electronics supply.
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