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Intelligent cross-condition fault recognition of rolling bearings based on normalized resampled characteristic power and self-organizing map

机译:基于归一化重采采样特性功率和自组织地图的滚动轴承智能交叉条件故障识别

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摘要

Intelligent bearing fault recognition under nonstationary conditions is still a challenge. This paper presents a novel intelligent cross-condition bearing fault recognition scheme. In this scheme, we propose a normalized resampled characteristic power (NRCP) feature, which is constructed based on the pulse-based order spectrums. Based on NRCP feature, the whole fault recognition strategy is developed. First, the resampled signals are obtained by pulse-based order tracking technique, and the order spectrums are produced by the joint application of Hilbert transform and fast Fourier transform. Second, the NRCP feature space is constructed based on the order spectrums. Then, the Laplacian score (LS) algorithm is applied to refine the NRCP features. Finally, the new features are fed into self-organizing map (SOM) to identify the health conditions of rolling bearings. The proposed method is experimentally validated to be able to differentiate health, outer race fault, inner race fault, and multiple fault bearings.
机译:非间断条件下的智能轴承故障识别仍然是一项挑战。本文提出了一种新颖的智能交叉条件轴承故障识别方案。在该方案中,我们提出了一种标准化的重采样特征功率(NRCP)特征,其基于基于脉冲的顺序谱构造。基于NRCP功能,开发了整个故障识别策略。首先,通过基于脉冲的顺序跟踪技术获得重采样的信号,并且通过Hilbert变换和快速傅里叶变换的联合应用来产生订单频谱。其次,基于订单频谱构建NRCP特征空间。然后,应用拉普拉斯评分(LS)算法来完善NRCP功能。最后,将新功能送入自组织地图(SOM),以识别滚动轴承的健康状况。所提出的方法是通过实验验证的,以便能够区分健康,外部竞争故障,内部竞争故障和多个故障轴承。

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