Combination of FFT & ICA methods for faults analysis of rotating machine

Abdulbasir Shari, A. Ali, Mujtaba Almudhaffer
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引用次数: 1

Abstract

The vibration analysis using Fast Fourier Transform FFT is a common and widely used method, because of the similarity between faults signatures in this analysis a question is raised to what is the most effective ways to distinguish between different faults. In order to overcome this difficulty other method combined with the FFT was used. In this paper, a new combination will be present to overcome this situation. Independent Component Analysis (ICA) is used in combination with FFT to identify faults in rotating machines. The vibration is measured through multichannel vibration data acquisition system. The signals are then analyzed using ICA and finally, FFT is applied on ICA components. The extraction features give the best signature to identify each fault from others. This method is used for detecting more general faults occur in rotating machine (bearing fault, misalignment, unbalance, shaft fatigue), and can identify the similarity between faults. The interaction between different types of faults can be solved effectively by using ICA.
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FFT与ICA相结合的旋转机械故障分析方法
快速傅里叶变换FFT是一种常用的振动分析方法,但由于故障特征之间的相似性,提出了如何区分不同故障的最有效方法。为了克服这一困难,采用了与FFT相结合的其他方法。本文将提出一种新的组合来克服这种情况。将独立分量分析(ICA)与快速傅里叶变换(FFT)相结合用于旋转机械故障识别。通过多通道振动数据采集系统测量振动。然后使用ICA对信号进行分析,最后对ICA分量进行FFT处理。提取特征提供了最好的签名,以从其他断层中识别每个断层。该方法用于检测旋转机械中较为常见的故障(轴承故障、不对中、不平衡、轴疲劳),并能识别故障之间的相似性。利用独立分量分析可以有效地解决不同类型故障之间的相互作用。
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