DFA and DWT based severity detection and discrimination of induction motor stator winding short circuit fault from incipient insulation failure

D. Barman, S. Sarkar, G. Das, S. Das, P. Purkait
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引用次数: 2

Abstract

Modern research surveys emphasize that stator winding fault holds a significant percentage in induction motor failures. In Motor Current Signature Analysis (MCSA) based stator winding fault diagnosis, it has been found to be a challenging task to discriminate inter turn short circuit faults from inter-turn incipient insulation failures providing unbalances in three phase motor currents identical to short circuit faults. This paper proposes an approach to achieve this objective by applying Discrete Wavelet Transform (DWT) as signal decomposition tool on the faulty phase motor current captured through CRIO-9075 integrated controller and chassis system having 400MHz power PC controller, LX 25 Gate FPGA with NI 9227. Inverse Discrete Wavelet Transform (IDWT) as signal reconstruction tool has been employed to extract relevant frequency band which is sensitive to stator winding faults. Reconstructed or filtered currents under different fault cases containing specific band of frequency signals are then fed to Detrended Fluctuation Analysis (DFA) algorithm which has the competency to assess trend of fluctuations present in signals under consideration. Results of DFA in the form of short term fluctuation coefficient (αs) and long term fluctuation coefficient (αl) are found to be capable in discriminating the inter-turn short circuit fault from incipient insulation failure. Proposed method is also capable in detecting the severity levels of two different types of fault cases. Entire analysis reported in this work is based on experimentally obtained motor current signals.
基于DFA和DWT的异步电动机定子绕组早期绝缘故障的严重程度检测与判别
现代研究表明,定子绕组故障在异步电动机故障中占很大比例。在基于电机电流特征分析(MCSA)的定子绕组故障诊断中,区分匝间短路故障和匝间初期绝缘故障是一项具有挑战性的任务,匝间初期绝缘故障提供了与短路故障相同的三相电机电流不平衡。本文提出了一种实现这一目标的方法,将离散小波变换(DWT)作为信号分解工具,对通过CRIO-9075集成控制器和具有400MHz功率PC控制器的机箱系统、NI 9227的lx25门FPGA捕获的故障相电机电流进行分解。采用逆离散小波变换作为信号重构工具,提取出对定子绕组故障敏感的相关频段。然后将含有特定频带的不同故障情况下的重构或滤波电流输入到去趋势波动分析(DFA)算法中,该算法具有评估所考虑信号中波动趋势的能力。结果表明,短期波动系数(αs)和长期波动系数(αl)能够区分匝间短路故障和早期绝缘故障。该方法还能够检测两种不同类型故障的严重程度。在这项工作中报告的整个分析是基于实验获得的电机电流信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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