Investigation of bearing faults in three phase induction motor using wavelet de-noising with improved Wiener filtering

K. Kompella, S. Rayapudi, Naga Sreenivasu Rongala
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引用次数: 1

Abstract

Bearing fault diagnosis in an induction motor, especially at nascent stage has become inevitable and captious to avoid unexpected shut down of the industrial process. Many researchers have concentrated on various monitoring techniques including vibration, temperature, chemical and current monitoring. In this paper, an improved bearing fault detection using motor current signature analysis (MCSA) has been presented. In the proposed work, the bearing fault signature is extracted from stator current using improved Wiener filter cancellation. Performance of Wiener filter is improved using two stage process. The side band effects of filter is removed using Kaiser window and the higher order noise due to filtering process is removed with wavelet de-noising technique. Different categories of bearing failures are examined with and without de-nosing using pre-fault component cancellation (noise cancellation). Moreover, fault indexing based on standard deviation (SD) and energy (E) value of noise canceled stator current is proposed. The proposed bearing fault detection topology is examined using simulations and experiments on a 2HP induction motor under different load condition.
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基于改进维纳滤波的小波降噪方法研究三相异步电动机轴承故障
为了避免工业生产过程中的意外停机,对异步电动机轴承故障进行诊断,特别是在初级阶段,已成为一种不可避免的、细致的问题。许多研究者集中研究各种监测技术,包括振动、温度、化学和电流监测。本文提出了一种改进的基于电机电流特征分析的轴承故障检测方法。采用改进的维纳滤波对消方法从定子电流中提取轴承故障特征。采用两级法提高了维纳滤波器的性能。利用Kaiser窗去除滤波器的边带效应,并利用小波去噪技术去除滤波过程中产生的高阶噪声。使用故障前分量对消(噪声消除)对不同类别的轴承故障进行了检查,并对其进行了去噪处理。此外,提出了基于噪声消去的定子电流的标准差(SD)和能量(E)值的故障索引方法。通过不同负载条件下2HP异步电动机的仿真和实验,对所提出的轴承故障检测拓扑进行了验证。
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来源期刊
International Journal of Power and Energy Conversion
International Journal of Power and Energy Conversion Energy-Energy Engineering and Power Technology
CiteScore
1.60
自引率
0.00%
发文量
8
期刊介绍: IJPEC highlights the latest trends in research in the field of power generation, transmission and distribution. Currently there exist significant challenges in the power sector, particularly in deregulated/restructured power markets. A key challenge to the operation, control and protection of the power system is the proliferation of power electronic devices within power systems. The main thrust of IJPEC is to disseminate the latest research trends in the power sector as well as in energy conversion technologies. Topics covered include: -Power system modelling and analysis -Computing and economics -FACTS and HVDC -Challenges in restructured energy systems -Power system control, operation, communications, SCADA -Power system relaying/protection -Energy management systems/distribution automation -Applications of power electronics to power systems -Power quality -Distributed generation and renewable energy sources -Electrical machines and drives -Utilisation of electrical energy -Modelling and control of machines -Fault diagnosis in machines and drives -Special machines
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