Tang Jiahui, Wu Jimei, Qing Jiajuan, Kang Tuo
School of Mechanical and Precision Instrument Engineering, Xi'an University of Technology, Xi'an 710048, China.
Faculty of Printing, Packing and Digital Media Engineering, Xi'an University of Technology, Xi'an 710054, China.
Entropy (Basel). 2022 Dec 14;24(12):1822. doi: 10.3390/e24121822.
Data-driven fault diagnosis methods for rotating machinery have developed rapidly with the help of deep learning methods. However, traditional intelligent fault diagnosis methods still have some limitations in fault feature extraction and the latest object detection theory has not been applied in fault diagnosis. To this end, a fault diagnosis method based on a sparse short-term Fourier transform (SSTFT) and object detection theory is developed in this paper. First, a sparse constraint is introduced in time-frequency analysis to improve the time-frequency resolution of the model without cross-term interference and proximal gradient descent (PGD) is adopted to quickly and effectively optimize the model to obtain a high-quality time-frequency representation (TFR). Second, a fault diagnosis model based on a region-based convolutional neural network (RCNN) is built; the model can extract multiple regions that can characterize fault features from the TFR. This process avoids the interference of irrelevant vibration components and improves the interpretability of the fault diagnosis model. Finally, multicategory rolling bearing fault identification is realized. The effectiveness of the proposed method is validated by simulation signals and bearing experiments. The results indicate that the proposed method is more effective than existing methods.
在深度学习方法的帮助下,旋转机械的数据驱动故障诊断方法发展迅速。然而,传统的智能故障诊断方法在故障特征提取方面仍存在一些局限性,且最新的目标检测理论尚未应用于故障诊断。为此,本文提出了一种基于稀疏短时傅里叶变换(SSTFT)和目标检测理论的故障诊断方法。首先,在时频分析中引入稀疏约束,以提高模型的时频分辨率且无交叉项干扰,并采用近端梯度下降(PGD)快速有效地优化模型,以获得高质量的时频表示(TFR)。其次,构建基于区域卷积神经网络(RCNN)的故障诊断模型;该模型可以从TFR中提取多个能够表征故障特征的区域。这一过程避免了无关振动分量的干扰,提高了故障诊断模型的可解释性。最后,实现了多类别滚动轴承故障识别。通过仿真信号和轴承实验验证了所提方法的有效性。结果表明,所提方法比现有方法更有效。