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A Rotor Fault Diagnosis Method Depending on Local Mean Decomposition and Singular Value Entropy

机译:取决于局部平均分解和奇异价值熵的转子故障诊断方法

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摘要

The accuracy and efficiency of rotor fault diagnosis can be improved by using the local mean decomposition (LMD) in rotor fault features extraction. In this paper, a rotor fault features extraction technique depending on LMD and singular value entropy is proposed. In the first place, the local mean decomposition is implemented to attain multiple amplitude-modulation product (PF) components by decomposing the original vibration signal of the rotor. Then, the PF components are decomposed by singular value decomposition to obtain singular values and the singular value entropy. Finally, input the singular value entropy into the support vector machine (SVM) to identify and classify rotor faults. The results of experiment reveal that this method can extract the characteristics of rotor faults effectively, and identify different rotor typical faults accurately.
机译:通过使用转子故障特征提取中的局部平均分解(LMD),可以提高转子故障诊断的准确性和效率。本文提出了一种转子故障特征提取技术,其取决于LMD和奇异值熵。首先,实现局部平均分解以通过分解转子的原始振动信号来实现多个幅度调制产品(PF)分量。然后,通过奇异值分解分解PF组分以获得奇异值和奇异值熵。最后,将奇异值熵输入到支持向量机(SVM)中以识别和分类转子故障。实验结果表明,该方法可以有效地提取转子故障的特性,并准确地识别不同的转子典型故障。

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