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基于半监督多图联合嵌入的转子故障诊断

Fault diagnosis of rotor based on Semi-supervised Multi-Graph Joint Embedding.

作者信息

Yuan Jianhui, Zhao Rongzhen, He Tianjing, Chen Pengfei, Wei Kongyuan, Xing Ziyang

机构信息

School of Mechanical and Electrical Engineering, Lanzhou University of Technology, Lanzhou 730050, China.

School of Mechanical and Electrical Engineering, Lanzhou University of Technology, Lanzhou 730050, China.

出版信息

ISA Trans. 2022 Dec;131:516-532. doi: 10.1016/j.isatra.2022.05.006. Epub 2022 May 12.

Abstract

Traditional graph embedding methods only consider the pairwise relationship between fault data. But in practical applications, the relationship of high-dimensional fault data usually is multiple classes corresponding to multiple samples. Therefore, the hypergraph structure is introduced to fully portray the complex structural relationship of high-dimensional fault data. However, during the construction of the hypergraph, the hyperedge weight is usually set as the sum of the similarities between every two vertices contained within the hyperedge, and this "averaging effect" causes the relationship between data sample points with high similarity to be weakened, while the relationship between data sample points with low similarity to be strengthened. This phenomenon also leads to the hypergraph cannot accurately portray the relationship of high-dimensional data, which reduces the fault classification accuracy. To address this issue, a novel dimensionality reduction method named Semi-supervised Multi-Graph Joint Embedding (SMGJE) is proposed and applied to rotor fault diagnosis. SMGJE constructs simple graphs and hypergraphs with the same sample points and characterizes the structure of high-dimensional data in a multi-graph joint embedding. The edges of the simple graph are the direct description of the similarity between sample points so that SMGJE can overcome this "averaging effect" of the hypergraph. The effectiveness of the proposed method is verified by two different fault datasets.

摘要

传统的图嵌入方法仅考虑故障数据之间的成对关系。但在实际应用中,高维故障数据的关系通常是多个类别对应多个样本。因此,引入超图结构以充分刻画高维故障数据的复杂结构关系。然而,在超图构建过程中,超边权重通常被设置为超边内每两个顶点之间相似度的总和,这种“平均效应”导致高相似度数据样本点之间的关系被削弱,而低相似度数据样本点之间的关系被加强。这种现象也导致超图无法准确刻画高维数据的关系,从而降低了故障分类准确率。为解决这个问题,提出了一种名为半监督多图联合嵌入(SMGJE)的新型降维方法并将其应用于转子故障诊断。SMGJE 用相同的样本点构建简单图和超图,并在多图联合嵌入中刻画高维数据的结构。简单图的边是样本点之间相似度的直接描述,这样 SMGJE 就能克服超图的这种“平均效应”。通过两个不同的故障数据集验证了所提方法的有效性。

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