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Performance analysis of wavelet based techniques for electrical faults signature extraction for squirrel cage induction motor

机译:基于小波的鼠笼式异步电动机电气故障特征提取技术性能分析

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Induction motors share a domineering role in engineering applications in industries. Even though they are highly reliable, they are prone to assorted faults. Electrical faults such as unbalanced supply and rotor bar breakage contribute significantly to these faults and imperfections. Detection of the faults in embryonic stages is key to timely scheduled maintenance. Motor Current Signature Analysis (MCSA) is a typical tool for fault detection in motors at constant torque loads. But pulsating load and variable load torque operations put down arduous and tough constraints on part of resolution. Multi Resolution Analysis (MRA) is an approach to trounce the impediments of frequency resolution. Discrete Wavelet Transform (DWT) and Wavelet Packet Transform (WPT) are two contemporary techniques in time-space domain. This paper presents comparative analysis of these two techniques for feature extraction of electrical faults in Induction motors. Instead of analysing the three phase currents of the motor independently, the direct (id) current component is made use of. The experimentation has been performed on a 3-phase, 1.5kW, 4P, 1440 RPM squirrel cage induction motor. Fault Signature Extraction (FSE) is carried out by applying signal energy difference evaluation algorithm on DWT and WPT coefficients for various many cases of unbalanced supply and rotor bar breakage faults. Analysis begets to establish that both the above mentioned techniques attest to be significant for the purpose of fault detection. To classify the fault types, other high-ended techniques need to be associated and analysed.
机译:感应电动机在工业工程应用中起着主导作用。即使它们高度可靠,也容易出现各种故障。电气故障(例如电源不平衡和转子条断裂)是造成这些故障和缺陷的重要原因。在胚胎阶段发现故障是及时进行定期维护的关键。电动机电流签名分析(MCSA)是在恒定转矩负载下检测电动机故障的典型工具。但是脉动负载和可变负载扭矩操作在部分分辨率上降低了艰巨而艰巨的约束。多分辨率分析(MRA)是一种消除频率分辨率障碍的方法。离散小波变换(DWT)和小波包变换(WPT)是时空领域中的两种当代技术。本文对这两种用于感应电动机电气故障特征提取的技术进行了比较分析。代替独立地分析电动机的三相电流,而是利用直流(id)电流分量。实验是在三相1.5kW,4P,1440 RPM鼠笼式感应电动机上进行的。通过对DWT和WPT系数应用信号能量差异评估算法来进行故障特征提取(FSE),以解决许多不平衡的电源和转子棒断裂故障的各种情况。分析得出结论,上述两种技术证明对故障检测很重要。为了对故障类型进行分类,还需要关联和分析其他高端技术。

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