Xie Fengyun, Fan Qiuyang, Li Gang, Wang Yang, Sun Enguang, Zhou Shengtong
School of Mechanical Electrical and Vehicle Engineering, East China Jiaotong University, Nanchang 330013, China.
State Key Laboratory of Performance Monitoring Protecting of Rail Transit Infrastructure, East China Jiaotong University, Nanchang 330013, China.
Entropy (Basel). 2024 Sep 23;26(9):810. doi: 10.3390/e26090810.
Electric motors play a crucial role in self-driving vehicles. Therefore, fault diagnosis in motors is important for ensuring the safety and reliability of vehicles. In order to improve fault detection performance, this paper proposes a motor fault diagnosis method based on vibration signals. Firstly, the vibration signals of each operating state of the motor at different frequencies are measured with vibration sensors. Secondly, the characteristic of Gram image coding is used to realize the coding of time domain information, and the one-dimensional vibration signals are transformed into grayscale diagrams to highlight their features. Finally, the lightweight neural network Xception is chosen as the main tool, and the attention mechanism Convolutional Block Attention Module (CBAM) is introduced into the model to enforce the importance of the characteristic information of the motor faults and realize their accurate identification. Xception is a type of convolutional neural network; its lightweight design maintains excellent performance while significantly reducing the model's order of magnitude. Without affecting the computational complexity and accuracy of the network, the CBAM attention mechanism is added, and Gram's corner field is combined with the improved lightweight neural network. The experimental results show that this model achieves a better recognition effect and faster iteration speed compared with the traditional Convolutional Neural Network (CNN), ResNet, and Xception networks.
电动机在自动驾驶车辆中起着至关重要的作用。因此,电机故障诊断对于确保车辆的安全性和可靠性至关重要。为了提高故障检测性能,本文提出了一种基于振动信号的电机故障诊断方法。首先,使用振动传感器测量电机在不同频率下各运行状态的振动信号。其次,利用Gram图像编码的特性实现时域信息的编码,将一维振动信号转换为灰度图以突出其特征。最后,选择轻量级神经网络Xception作为主要工具,并将注意力机制卷积块注意力模块(CBAM)引入模型,以强化电机故障特征信息的重要性并实现其准确识别。Xception是一种卷积神经网络;其轻量级设计在显著降低模型量级的同时保持了优异的性能。在不影响网络计算复杂度和准确性的情况下,添加了CBAM注意力机制,并将Gram角场与改进的轻量级神经网络相结合。实验结果表明,与传统卷积神经网络(CNN)、ResNet和Xception网络相比,该模型具有更好的识别效果和更快的迭代速度。