School of Mechanical Engineering, Beijing Institute of Technology, Beijing 100081, China.
Changjiang Delta Institute, Beijing Institute of Technology, Jiaxing 314001, China.
Sensors (Basel). 2022 Apr 1;22(7):2720. doi: 10.3390/s22072720.
In recent years, rotating machinery fault diagnosis methods based on convolutional neural network have achieved much success. However, in real industrial environments, interfering signals are unavoidable, which may reduce the accuracy of fault diagnosis seriously. Most of the current fault diagnosis methods are of single input type, which may lead to the information contained in the vibration signal not being fully utilized. In this study, theoretical analysis and comprehensive comparative experiments are completed to investigate the time domain input, frequency domain input, and two types of time-frequency domain input. Based on this, a new fault diagnosis model, named multi-stream convolutional neural network, is developed. The model takes the time domain, frequency domain, and time-frequency domain images as input, and it automatically fuses the information contained in different inputs. The proposed model is tested based on three public datasets. The experimental results suggested that the model achieved pretty high accuracy under noise and trend items without the help of signal separation algorithms. In addition, the positive implications of multiple inputs and information fusion are analyzed through the visualization of learned features.
近年来,基于卷积神经网络的旋转机械故障诊断方法取得了很大的成功。然而,在实际的工业环境中,干扰信号是不可避免的,这可能会严重降低故障诊断的准确性。目前大多数故障诊断方法都是单输入类型的,这可能导致振动信号中包含的信息没有被充分利用。在这项研究中,通过理论分析和综合对比实验,研究了时域输入、频域输入和两种时频域输入。在此基础上,开发了一种新的故障诊断模型,称为多流卷积神经网络。该模型以时域、频域和时频域图像作为输入,并自动融合不同输入中包含的信息。该模型基于三个公共数据集进行了测试。实验结果表明,在没有信号分离算法的帮助下,该模型在噪声和趋势项下能够达到很高的精度。此外,通过学习特征的可视化分析了多输入和信息融合的积极意义。