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Intelligent fault diagnosis for rolling bearings based on graph shift regularization with directed graphs

机译:基于图形换档规范化的滚动轴承智能故障诊断

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摘要

Graph shift regularization is a new and effective graph-based semi-supervised classification method, but its performance is closely related to the representation graphs. Since directed graphs can convey more information about the relationship between vertices than undirected graphs, an intelligent method called graph shift regularization with directed graphs (GSR-D) is presented for fault diagnosis of rolling bearings. For greatly improving the diagnosis performance of GSR-D, a directed and weighted fc-nearest neighbor graph is first constructed by treating each sample (i.e., each vibration signal segment) as a vertex, in which the similarity between samples is measured by cosine distance instead of the commonly used Euclidean distance, and the edge weights are also defined by cosine distance instead of the commonly used heat kernel. Then, the labels of samples are considered as the graph signals indexed by the vertices of the representation graph. Finally, the states of unlabeled samples are predicted by rinding a graph signal that has minimal total variation and satisfies the constraint given by labeled samples as much as possible. Experimental results indicate that GSR-D is better and more stable than the standard convolutional neural network and support vector machine in rolling bearing fault diagnosis, and GSR-D only has two tuning parameters with certain robustness.
机译:图形换档正规化是一种新的基于图形的半监督分类方法,但其性能与表示图密切相关。由于定向图可以传送关于顶点之间的关系的更多信息,而不是无向图形,因此提出了一种称为图形换档正则化的智能方法,用于滚动轴承的故障诊断。为了大大提高GSR-D的诊断性能,首先通过将每个样品(即,每个振动信号段)作为顶点来构造定向和加权的FC最近邻图,其中通过余弦距离测量样品之间的相似性代替常用的欧几里德距离,并且边缘重量也由余弦距离而不是常用的热核来定义。然后,将样本标记被认为是由表示图的顶点索引的曲线图。最后,通过将具有最小变化最小的曲线信号提出具有最小变化的曲线信号,并满足由标记的样品尽可能多的约束来预测未标记的样本的状态。实验结果表明,GSR-D比标准卷积神经网络更好,更稳定,支持滚动轴承故障诊断中的支持向量机,GSR-D只有两个具有一定稳健性的调谐参数。

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