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A Method for Rolling Bearing Fault Diagnosis Based on Sensitive Feature Selection and Nonlinear Feature Fusion

机译:一种基于敏感特征选择和非线性特征融合的滚动轴承故障诊断方法

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To solve the problem that there were non-sensitive features and over-high dimensions in the feature set of fault diagnosis, a new feature extraction method based on sensitive feature selection and nonlinear feature fusion for rolling element bearing fault diagnosis was proposed. CDET was utilized to choose features sensitive to fault severity from the high dimensional feature set, and weighted the selected sensitive features by their sensitive degree. The weighted sensitive feature subset was compressed with LPP to reduce its dimensions and get the compressed more sensitive feature subset, which can enhance the discrimination between all classes by improving the between-class scatter and within-class scatter for fault classification. Compared with the classification result of the original high dimensional feature set based on direct LPP without feature selection, the classification result of the proposed method has the advantages of higher compactness and higher computational efficiency.
机译:为了解决故障诊断特征集中存在非敏感特征和超高尺寸的问题,提出了一种基于敏感特征选择和用于滚动元件轴承故障诊断的敏感特征选择和非线性特征融合的新特征提取方法。 CDET用于从高维特征集中选择对故障严重程度敏感的特征,并通过敏感度加权所选的敏感功能。加权敏感特征子集用LPP压缩,以减少其尺寸并获得压缩的更敏感的特征子集,可以通过改善级别的散射和级别散射进行故障分类来增强所有类之间的判别。与基于直接LPP的原始高维特征集的分类结果相比,没有特征选择,所提出的方法的分类结果具有更高的紧凑性和更高的计算效率的优点。

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