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An intelligent fault diagnosis method of rolling bearings based on regularized kernel Marginal Fisher analysis

机译:基于正则核心边缘Fisher分析的滚动轴承智能故障诊断方法

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Generally, the vibration signals of fault bearings are non-stationary and highly nonlinear under complicated operating conditions. Thus, it's a big challenge to extract optimal features for improving classification and simultaneously decreasing feature dimension. Kernel Marginal Fisher analysis (KMFA) is a novel supervised manifold learning algorithm for feature extraction and dimensionality reduction. In order to avoid the small sample size problem in KMFA, we propose regularized KMFA (RKMFA). A simple and efficient intelligent fault diagnosis method based on RKMFA is put forward and applied to fault recognition of rolling bearings. So as to directly excavate nonlinear features from the original high-dimensional vibration signals, RKMFA constructs two graphs describing the intra-class compactness and the inter-class separability, by combining traditional manifold learning algorithm with fisher criteria. Therefore, the optimal low-dimensional features are obtained for better classification and finally fed into the simplest K-nearest neighbor (KNN) classifier to recognize different fault categories of bearings. The experimental results demonstrate that the proposed approach improves the fault classification performance and outperforms the other conventional approaches.
机译:通常,故障轴承的振动信号在复杂的操作条件下是非静止和高度的非线性。因此,提取改善分类和同时减少特征维度的最佳特征是一个很大的挑战。内核边缘Fisher分析(KIMFA)是一种新型监督歧管学习算法,用于特征提取和减少维度。为了避免KMFA的小样本大小问题,我们建议了正规化的KMFA(RKMFA)。提出了一种基于RKMFA的简单高效的智能故障诊断方法,并应用于滚动轴承的故障识别。因此,通过将传统的歧管学习算法与Fisher标准组合,RKMFA直接从原始的高维振动信号直接挖掘非线性特征,构造了描述了描述了类内紧凑性和帧间间可分离性的两个图表。因此,获得最佳的低维特征以获得更好的分类,并且最终馈入最简单的K-最近邻(KNN)分类器以识别不同的故障类别的轴承。实验结果表明,该方法提高了故障分类性能,优于其他传统方法。

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