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A Classification Method for Select Defects in Power Transformers Based on the Acoustic Signals

机译:基于声信号的电力变压器缺陷选择分类方法

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摘要

Effective, accurate and adequately early detection of any potential defects in power transformers is still a challenging issue. As the acoustic method is known as one of the noninvasive and nondestructive testing methods, this paper proposes a new approach of the classification method for defect identification in power transformers based on the acoustic measurements. Typical application of acoustic emission (AE) method is the detection of partial discharges (PD); however, during PD measurements other defects may also be identified in the transformer. In this research, a database of various signal sources recorded during acoustic PD measurements in real-life power transformers over several years was gathered. Furthermore, all of the signals are divided into two groups (PD/other) and in the second step into eight classes of various defects. Based on these, selected classification models including machine learning algorithms were applied to training and validation. Energy patterns based on the discrete wavelet transform (DWT) were used as model inputs. As a result, the presented method allows one to identify with high accuracy, not only the selected kind of PD (1st step), but other kinds of faults or anomalies within the transformer being tested (2nd step). The proposed two-step classification method may be applied as a supplementary part of a technical condition assessment system or decision support system for management of power transformers.
机译:有效,准确和足够早地检测电力变压器中的任何潜在缺陷仍然是一个具有挑战性的问题。由于声学方法被认为是非侵入性和非破坏性测试方法之一,因此本文提出了一种基于声学测量结果的电力变压器缺陷分类方法。声发射(AE)方法的典型应用是局部放电(PD)的检测。但是,在PD测量期间,变压器中可能还会发现其他缺陷。在这项研究中,收集了在过去几年中在实际电力变压器中进行声学PD测量时记录的各种信号源的数据库。此外,所有信号都分为两组(PD /其他),第二步分为八类各种缺陷。基于这些,选择的分类模型(包括机器学习算法)被应用于训练和验证。基于离散小波变换(DWT)的能量模式被用作模型输入。结果,所提出的方法不仅可以选择一种PD(第一步),而且可以在被测变压器内的其他类型的故障或异常(第二步)进行高精度识别。提出的两步分类方法可以用作电力变压器管理的技术条件评估系统或决策支持系统的补充部分。

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