可调q因子小波变换在电力变压器机械变形分类中的应用

Sachin Doshi, Malvi Shrimali, S. K. Rajendra, M. Sharma
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引用次数: 1

摘要

电力变压器的机械变形是由于短路力和运输过程中处理不当造成的。这种变形随着时间的推移而增加,并可能导致变压器完全故障。因此,监测变压器的状态是必不可少的。本文提出了一种分析变压器绕组终端行为的方法。为此,首先考虑了由电感、电容和电阻组成的变压器绕组高频电路模型。然后通过改变这些电路参数引入机械变形。通过频响分析(FRA)获得了电路模型在健康和非健康状态下的终端行为。利用可调q因子小波变换(TQWT)将FRA信号分解为5个子带(SBs)。然后,利用香农熵(Shannon Entropy, SE)提取出SBs的特征。然后使用k近邻(KNN)和集成Bagged算法(EB)对这些特征进行分类。p值和t检验等统计参数清楚地表明信号分为健康状态和故障状态。此外,数据被正确分类,准确率达到99.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tunable Q-Factor Wavelet Transform for Classifying Mechanical Deformations in Power Transformer
Mechanical deformations in the power transformer are the result of short circuit forces and improper handling of transformer during transportation. Such deformations grow with the time and might lead to complete breakdown of the transformer. Hence, monitoring the condition of the transformer is essential. This paper presents a technique to analyse the terminal behaviour of the transformer winding. To this end, high frequency circuit model of the transformer winding comprises of inductances, capacitances and resistances is considered initially. Mechanical deformations are then introduced by changing these circuit parameters. Frequency response analysis (FRA) is performed to obtain terminal behavior of the circuit model under both healthy and unhealthy conditions. Signals obtained from FRA are decomposed into five subbands (SBs) using tunable Q-Factor wavelet transform (TQWT). Afterwards, with the help of Shannon Entropy (SE), features of the SBs are extracted. These features are then classified using K-nearest neighbour (KNN) and Ensemble Bagged algorithm (EB). The statistical parameters like p-value and t-test clearly indicated that the signals are classified in to healthy and faulty states. Further, data have been classified properly with an accuracy of 99.2%.
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