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A methodology for fault detection in rolling element bearings using singular spectrum analysis

机译:基于奇异频谱分析的滚动轴承故障检测方法

摘要

This paper proposes a vibration-based methodology for fault detection in rolling element bearings, which is based on pure data analysis via singular spectrum method. The method suggests building a baseline space from feature vectors made of the signals measured in the healthy/baseline bearing condition. The feature vectors are made using the Euclidean norms of the first three principal components found for the signals measured. Then, the lagged version of any new signal corresponding to a new (possibly faulty) condition is projected onto this baseline feature space in order to assess its similarity to the baseline condition. The category of a new signal vector is determined based on the Mahalanobis distance (MD) of its feature vector to the baseline space. A validation of the methodology is suggested based on the results from an experimental test rig. The results obtained confirm the effective performance of the suggested methodology. It is made of simple steps and is easy to apply with a perspective to make it automatic and suitable for commercial applications.
机译:本文提出了一种基于振动的滚动轴承故障检测方法,该方法基于奇异谱方法的纯数据分析。该方法建议根据特征向量构建基线空间,该特征向量由在健康/基线承载条件下测得的信号构成。使用针对所测信号找到的前三个主成分的欧几里得范数来生成特征向量。然后,将与新的(可能有故障的)条件相对应的任何新信号的滞后版本投影到该基线特征空间上,以评估其与基线条件的相似性。基于新信号向量的特征向量到基线空间的马氏距离(MD)确定其类别。建议根据实验测试装置的结果对方法进行验证。获得的结果证实了所建议方法的有效性能。它由简单的步骤组成,并且易于应用以使其自动化并适合商业应用。

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