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An Application of Nonlinear Feature Extraction - A Case Study for Low Speed Slewing Bearing Condition Monitoring and Prognosis

机译:非线性特征提取的应用 - 一种低速回转轴承状态监测和预后的案例研究

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This paper presents the application of four nonlinear methods of feature extraction in slewing bearing condition monitoring and prognosis: these are largest Lyapunov exponent, fractal dimension, correlation dimension, and approximate entropy methods. Although correlation dimension and approximate entropy methods have been used previously, the largest Lyapunov exponent and fractal dimension methods have not been used in vibration condition monitoring to date. The vibration data of the laboratory slewing bearing test-rig run at 1 rpm was acquired daily from February to August 2007 (138 days). As time progressed, a more accurate observation of the alteration of bearing condition from normal to faulty was obtained using nonlinear features extraction. These findings suggest that these methods provide superior descriptive information about bearing condition than time-domain features extraction, such as root mean square (RMS), variance, skewness and kurtosis.
机译:本文介绍了四种非线性方法的施工方法提取在回转轴承状态监测和预后:这些是最大的Lyapunov指数,分形尺寸,相关尺寸和近似熵方法。虽然先前已经使用了相关尺寸和近似熵方法,但是迄今为止,较大的Lyapunov指数和分形维数方法尚未用于振动条件监测。从2月至2007年2月至8月(138天),每日收购实验室回转轴承试验台的振动数据。随着时间的推移,使用非线性特征提取获得了对轴承条件的改变的更准确观察。这些发现表明,这些方法提供了关于轴承条件的卓越的描述性信息,而不是时域特征提取,例如均方根(RMS),方差,偏光和峰氏症。

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