Xu Yanlong, Zhang Liming, Chen Ling, Tan Tian, Wang Xiaolong, Xiao Hongguang
School of Nuclear Science and Technology, Naval University of Engineering, Wuhan 430033, China.
Chongqing Pump Industry Co., Ltd., Chongqing 400030, China.
Sensors (Basel). 2025 Aug 3;25(15):4772. doi: 10.3390/s25154772.
Fault diagnosis is of great significance for the maintenance of rotating machinery. Deep learning is an intelligent diagnostic technique that is receiving increasing attention. To address the issues of industrial data with small samples and varying working conditions, a residual convolutional neural network based on the attention mechanism is put forward for the fault diagnosis of rotating machinery. The method incorporates channel attention and spatial attention simultaneously, implementing channel-wise recalibration for frequency-dependent feature adjustment and performing spatial context aggregation across receptive fields. Subsequently, a residual module is introduced to address the vanishing gradient problem of the model in deep network structures. In addition, LSTM is used to realize spatiotemporal feature fusion. Finally, label smoothing regularization (LSR) is proposed to balance the distributional disparities among labeled samples. The effectiveness of the method is evaluated by its application to the vibration signal data from the safe injection pump and the Case Western Reserve University (CWRU). The results show that the method has superb diagnostic accuracy and strong robustness.
故障诊断对于旋转机械的维护具有重要意义。深度学习是一种日益受到关注的智能诊断技术。为了解决工业数据样本少和工作条件多变的问题,提出了一种基于注意力机制的残差卷积神经网络用于旋转机械的故障诊断。该方法同时结合了通道注意力和空间注意力,对频率相关特征调整进行通道级重新校准,并在感受野上进行空间上下文聚合。随后,引入残差模块来解决深度网络结构中模型的梯度消失问题。此外,使用长短期记忆网络(LSTM)实现时空特征融合。最后,提出标签平滑正则化(LSR)来平衡标记样本之间的分布差异。通过将该方法应用于安全注射泵和美国凯斯西储大学(CWRU)的振动信号数据来评估其有效性。结果表明,该方法具有卓越的诊断精度和强大的鲁棒性。