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Study on the Influence of Measuring AE Sensor Type on the Effectiveness of OLTC Defect Classification

机译:AE传感器类型测量对OLTC缺陷分类有效性的影响研究

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摘要

The principal objective of this study is to improve the diagnostics of power transformers, which are the key element of supplying electricity to consumers. On Load Tap Changer (OLTC), which is the object of research, the results of which are presented in this article, is one of the most important elements of these devices. The applied diagnostic method is the acoustic emission (AE) method, which has the main advantage over others, that it is considered as a non-destructive testing method. At present, there are many measuring devices and sensors used in the AE method, there are also some international standards, according to which, measurements should be performed. In the presented work, AE signals were measured in laboratory conditions with various OLTC defects being simulated. Five types of sensors were used for the measurement. The recorded signals were analyzed in the time and frequency domain and using discrete wavelet transformation. Based on the results obtained, sets of indicators were determined, which were used as features for an autonomous classification of the type of defect. Several types of learning algorithms from the group of supervised machine learning were considered in the research. The performance of individual classifiers was determined by several quality evaluation measures. As a result of the analyses, the type and characteristics of the most optimal algorithm to be used in the process of classification of the OLTC fault type were indicated, depending on the type of sensor with which AE signals were recorded.
机译:这项研究的主要目的是改善电力变压器的诊断,电力变压器是向消费者供电的关键要素。作为研究对象的有载分接开关(OLTC),是本文研究的结果,是这些设备中最重要的元素之一。应用的诊断方法是声发射(AE)方法,该方法具有相对于其他方法的主要优势,被认为是一种无损检测方法。当前,AE方法中使用了许多测量设备和传感器,还存在一些国际标准,应根据这些标准进行测量。在提出的工作中,在实验室条件下测量了AE信号,并模拟了各种OLTC缺陷。测量使用了五种类型的传感器。使用离散小波变换在时域和频域分析记录的信号。根据获得的结果,确定指标集,将其用作缺陷类型的自主分类的特征。研究中考虑了有监督机器学习中的几种学习算法。各个分类器的性能由几种质量评估方法确定。作为分析的结果,根据记录AE信号的传感器的类型,指出了在OLTC故障类型的分类过程中使用的最佳算法的类型和特性。

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