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Application of support vector machine based on pattern spectrum entropy in fault diagnostics of bearings

机译:基于模式谱熵的支持向量机在轴承故障诊断中的应用

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The fault diagnostics and identification of rolling element bearings have been the subject of extensive research. This paper presents a novel pattern classification approach for the fault diagnostics, which combines the morphological multi-scale analysis and the ¿one to others¿ support vector machine (SVM) classifiers. Morphological pattern spectrum describes the shape characteristics of the inspected signal based on the morphological opening operation with multi-scale structuring elements. The pattern spectrum entropy and the barycenter scale location of the spectrum curve are extracted as the feature vectors presenting different faults of the bearings. The ¿one to others¿ SVM algorithm is adopted to distinguish six kinds of fault bearing signals which were measured in the experimental test rig running under eight different working conditions. The recognition results of the SVM are ideal even though the training sample is few. The combination of the morphological pattern spectrum parameter analysis and the ¿one to others¿ multi-class SVM algorithm is suitable for the on-line automated fault diagnosis of the rolling element bearings. This application is promising and worth well exploiting.
机译:滚动轴承的故障诊断和识别已成为广泛研究的主题。本文提出了一种用于故障诊断的新型模式分类方法,该方法结合了形态学多尺度分析和“一个到其他”支持向量机(SVM)分类器。形态图谱基于具有多尺度结构元素的形态学开放操作,描述了被检信号的形状特征。提取谱图谱的熵和谱曲线的重心刻度位置作为表示轴承不同故障的特征向量。采用“一个到另一个”的SVM算法来区分六种故障信号,这些信号是在八种不同工作条件下运行的实验测试台中测得的。即使训练样本很少,SVM的识别结果也是理想的。形态学模式频谱参数分析和一个到另一个的多类SVM算法的组合适用于滚动轴承的在线自动故障诊断。此应用程序是有前途的,值得充分利用。

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