Empirical Mode Decomposition of Motor Current Signatures for Centrifugal Pump Diagnostics

Samir Alabied, Usama Haba, Alsadak Daraz, F. Gu, A. Ball
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引用次数: 7

Abstract

Motor current signature analysis (MCSA) is an important, reliable and non-invasive technique for monitoring rotation machines. Spectrum analysis is a common way to implement MCSA, which allows large faults such as severe mechanical imbalance to be extracted successfully, but is often ineffective in the detection of incipient faults such as supporting bearings from motor drive systems because of noise and nonlinear interferences. To improve the performance of MSCA, this paper exploits the use of Empirical Mode Decomposition (EMD) method as an advanced tool to process motor current signals for noise reduction and nonlinear signature enhancement. The nonlinear demodulation property of EMD is firstly reviewed in association with the motor current signal models with fault cases. Then EMD is applied to signals from different fault cases from a centrifuge pump system to verify its performances in extracting the fault signatures for separating different faults. In conjunction with the envelope spectrum of separated intrinsic mode function (IMF), it shows that the proposed EMD based approach produces a better result in diagnosing common pump faults: small defects on impeller and bearings, which cannot be separated based on spectrum analysis.
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离心泵诊断中电机电流特征的经验模态分解
电机电流特征分析(MCSA)是一种重要的、可靠的、无创的旋转机械监测技术。频谱分析是实现MCSA的一种常用方法,它可以成功地提取出严重机械不平衡等大故障,但由于噪声和非线性干扰,在检测电机驱动系统的支承轴承等早期故障时往往无效。为了提高MSCA的性能,本文利用经验模态分解(EMD)方法作为一种先进的工具来处理电机电流信号,以降低噪声和增强非线性特征。首先结合故障情况下的电机电流信号模型,综述了EMD的非线性解调特性。然后将EMD应用于离心泵系统不同故障情况的信号中,验证其提取故障特征以分离不同故障的性能。结合分离固有模态函数(IMF)的包络谱,表明基于EMD的方法在诊断常见的泵故障(叶轮和轴承上的小缺陷)方面取得了更好的结果,这些缺陷是基于谱分析无法分离的。
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