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Electrical motor current signal analysis using a modified bispectrum for fault diagnosis of downstream mechanical equipment

机译:使用改进的双谱对电动机电流信号进行分析,以诊断下游机械设备

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This paper presents the use of the induction motor current to identify and quantify common faults within a two-stage reciprocating compressor based on bispectrum analysis. The theoretical basis is developed to understand the nonlinear characteristics of current signals when the motor undertakes a varying load under different faulty conditions. Although conventional bispectrum representation of current signal allows the inclusion of phase information and the elimination of Gaussian noise, it produces unstable results due to random phase variation of the sideband components in the current signal. A modified bispectrum based on the amplitude modulation feature of the current signal is then adopted to combine both lower sidebands and higher sidebands simultaneously and hence characterise the current signal more accurately. Based on this new bispectrum analysis a more effective diagnostic feature, namely normalised bispectral peak, is developed for fault classification. In association with the kurtosis value of the raw current signal, the bispectrum feature gives rise to reliable fault classification results. In particular, the low feature values can differentiate the belt looseness from the other fault cases and different degrees of discharge valve leakage and inter-cooler leakage can be separated easily using two linear classifiers. This work provides a novel approach to the analysis of stator current for the diagnosis of motor drive faults from downstream driving equipment.
机译:本文介绍了基于双谱分析,利用感应电动机电流来识别和量化两级往复式压缩机内的常见故障。为理解电动机在不同故障条件下承受变化的负载时电流信号的非线性特性奠定了理论基础。尽管电流信号的常规双频谱表示允许包含相位信息并消除高斯噪声,但由于电流信号中边带分量的随机相位变化,它会产生不稳定的结果。然后采用基于电流信号的幅度调制特征的修改后的双频谱来同时组合较低边带和较高边带,从而更准确地表征电流信号。基于这种新的双谱分析,可以开发出更有效的诊断功能,即归一化双谱峰,用于故障分类。与原始电流信号的峰度值相关联,双频谱特征可提供可靠的故障分类结果。特别是,较低的特征值可以将皮带松动与其他故障情况区分开,并且可以使用两个线性分类器轻松区分不同程度的排放阀泄漏和冷却器内部泄漏。这项工作为定子电流的分析提供了一种新颖的方法,用于诊断下游驱动设备的电动机驱动器故障。

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