Li Yasong, Zhou Zheng, Sun Chuang, Chen Xuefeng, Yan Ruqiang
IEEE Trans Neural Netw Learn Syst. 2024 May;35(5):6180-6193. doi: 10.1109/TNNLS.2022.3202234. Epub 2024 May 2.
Deep learning technology provides a promising approach for rotary machine fault diagnosis (RMFD), where vibration signals are commonly utilized as input of a deep network model to reveal the internal state of machinery. However, most existing methods fail to mine association relationships within signals. Unlike deep neural networks, transformer networks are capable of capturing association relationships through the global self-attention mechanism to enhance feature representations from vibration signals. Despite this, transformer networks cannot explicitly establish the causal association between signal patterns and fault types, resulting in poor interpretability. To tackle these problems, an interpretable deep learning model named the variational attention-based transformer network (VATN) is proposed for RMFD. VATN is improved from transformer encoder to mine the association relationships within signals. To embed the prior knowledge of the fault type, which can be recognized based on several key features of vibration signals, a sparse constraint is designed for attention weights. Variational inference is employed to force attention weights to samples from Dirichlet distributions, and Laplace approximation is applied to realize reparameterization. Finally, two experimental studies conducted on bevel gear and bearing datasets demonstrate the effectiveness of VATN to other comparison methods, and the heat map of attention weights illustrates the causal association between fault types and signal patterns.
深度学习技术为旋转机械故障诊断(RMFD)提供了一种很有前景的方法,其中振动信号通常被用作深度网络模型的输入,以揭示机械的内部状态。然而,大多数现有方法未能挖掘信号中的关联关系。与深度神经网络不同,变压器网络能够通过全局自注意力机制捕捉关联关系,以增强来自振动信号的特征表示。尽管如此,变压器网络无法明确建立信号模式与故障类型之间的因果关联,导致可解释性较差。为了解决这些问题,本文提出了一种名为基于变分注意力的变压器网络(VATN)的可解释深度学习模型用于RMFD。VATN是从变压器编码器改进而来,以挖掘信号中的关联关系。为了嵌入故障类型的先验知识(可以基于振动信号的几个关键特征来识别),为注意力权重设计了一个稀疏约束。采用变分推理迫使注意力权重从狄利克雷分布中采样,并应用拉普拉斯近似来实现重参数化。最后,在锥齿轮和轴承数据集上进行的两项实验研究证明了VATN相对于其他比较方法的有效性,并且注意力权重的热图说明了故障类型与信号模式之间的因果关联。