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用于电力变压器故障分类的超高频频段评估

Assessment of UHF Frequency Range for Failure Classification in Power Transformers.

作者信息

Schiewaldt Karl, de Castro Bruno Albuquerque, Ardila-Rey Jorge Alfredo, Franchin Marcelo Nicoletti, Andreoli André Luiz, Tenbohlen Stefan

机构信息

School of Engineering, Bauru, Department of Electrical Engineering, São Paulo State University (UNESP), Bauru 17033-360, SP, Brazil.

Department of Electrical Engineering, Universidad Técnica Federico Santa María, Av. Vicuña Mackenna 3939, Santiago de Chile 8940000, Chile.

出版信息

Sensors (Basel). 2024 Aug 5;24(15):5056. doi: 10.3390/s24155056.

Abstract

Ultrahigh-frequency (UHF) sensing is one of the most promising techniques for assessing the quality of power transformer insulation systems due to its capability to identify failures like partial discharges (PDs) by detecting the emitted UHF signals. However, there are still uncertainties regarding the frequency range that should be evaluated in measurements. For example, most publications have stated that UHF emissions range up to 3 GHz. However, a Cigré brochure revealed that the optimal spectrum is between 100 MHz and 1 GHz, and more recently, a study indicated that the optimal frequency range is between 400 MHz and 900 MHz. Since different faults require different maintenance actions, both science and industry have been developing systems that allow for failure-type identification. Hence, it is important to note that bandwidth reduction may impair classification systems, especially those that are frequency-based. This article combines three operational conditions of a power transformer (healthy state, electric arc failure, and partial discharges on bushing) with three different self-organized maps to carry out failure classification: the chromatic technique (CT), principal component analysis (PCA), and the shape analysis clustering technique (SACT). For each case, the frequency content of UHF signals was selected at three frequency bands: the full spectrum, Cigré brochure range, and between 400 MHz and 900 MHz. Therefore, the contributions of this work are to assess how spectrum band limitation may alter failure classification and to evaluate the effectiveness of signal processing methodologies based on the frequency content of UHF signals. Additionally, an advantage of this work is that it does not rely on training as is the case for some machine learning-based methods. The results indicate that the reduced frequency range was not a limiting factor for classifying the state of the operation condition of the power transformer. Therefore, there is the possibility of using lower frequency ranges, such as from 400 MHz to 900 MHz, contributing to the development of less costly data acquisition systems. Additionally, PCA was found to be the most promising technique despite the reduction in frequency band information.

摘要

超高频(UHF)传感是评估电力变压器绝缘系统质量最具前景的技术之一,因为它能够通过检测发射的UHF信号来识别诸如局部放电(PD)等故障。然而,在测量中应评估的频率范围仍存在不确定性。例如,大多数文献表明UHF发射频率高达3 GHz。然而,一份国际大电网会议(Cigré)手册显示,最佳频谱在100 MHz至1 GHz之间,最近,一项研究表明最佳频率范围在400 MHz至900 MHz之间。由于不同故障需要不同的维护措施,科学界和工业界一直在开发能够识别故障类型的系统。因此,需要注意的是,带宽减小可能会损害分类系统,尤其是那些基于频率的分类系统。本文将电力变压器的三种运行状态(健康状态、电弧故障和套管局部放电)与三种不同的自组织映射相结合,以进行故障分类:色度技术(CT)、主成分分析(PCA)和形状分析聚类技术(SACT)。对于每种情况,在三个频段选择UHF信号的频率成分:全频谱、Cigré手册范围以及400 MHz至900 MHz之间。因此,这项工作的贡献在于评估频谱带限制如何改变故障分类,并基于UHF信号的频率成分评估信号处理方法的有效性。此外,这项工作的一个优点是它不像一些基于机器学习的方法那样依赖训练。结果表明,频率范围的减小并不是对电力变压器运行状态进行分类的限制因素。因此,有可能使用较低的频率范围,例如400 MHz至900 MHz,这有助于开发成本更低的数据采集系统。此外,尽管频带信息有所减少,但主成分分析被发现是最有前景的技术。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ebe4/11314831/2db09c709efb/sensors-24-05056-g001.jpg

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