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Machinery fault diagnosis via an improved multi-linear subspace and locally linear embedding

机译:通过改进的多线性子空间和局部线性嵌入机械故障诊断

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摘要

Traditional fault diagnosis methods mainly depend on the vector model to describe a signal, which will lead to information loss and the curse of dimensionality. In order to overcome these problems, in this paper an improved multi-linear subspace (MLS) method and locally linear embedding (LLE) are integrated (MLSLLE) to extract significant features. To obtain more information, first it is suggested that multiple sensors should be used to sample the vibration signal of a machine from different positions; then, these data are projected into different subspaces, where each sample is represented as a tensor form, respectively; finally, higher-order singular value decomposition and LLE are introduced to extract significant features. Thus a fault diagnosis method is proposed based on MLSLLE and support vector machines. The advantages of the proposed fault diagnosis method are validated by two real bearing data sets.
机译:传统的故障诊断方法主要取决于矢量模型来描述一个信号,这将导致信息丢失和维度的诅咒。 为了克服这些问题,在本文中,改进的多线性子空间(MLS)方法和局部线性嵌入(LLE)被集成(MLSLLE)以提取显着的特征。 为了获得更多信息,首先建议使用多个传感器来对来自不同位置的机器的振动信号进行采样; 然后,将这些数据投影到不同的子空间中,其中每个样本分别表示为张量形式; 最后,引入了高阶奇异值分解和lele以提取显着的特征。 因此,基于MLSLLE和支持向量机提出了故障诊断方法。 所提出的故障诊断方法的优点由两个真实的轴承数据集进行验证。

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