School of Mechanical Engineering, Nanjing University of Science and Technology, Nanjing 210094, China.
State Key Laboratory of Fluid Power and Mechatronic Systems, Zhejiang University, Hangzhou 310027, China.
Sensors (Basel). 2023 Apr 28;23(9):4379. doi: 10.3390/s23094379.
As a critical support and fixed component of aero engines, electro-hydrostatic actuators, and other equipment, the operation of aviation bearings is often subject to high speed, high-temperature rise, large load, and other continuous complex fluctuation conditions, which makes their health assessment tasks more difficult. To solve this problem, an intelligent health assessment method based on a new Deep Transfer Graph Convolutional Network (DTGCN) is proposed for aviation bearings under large speed fluctuation conditions. First, a new DTGCN algorithm is designed, which mainly uses the domain adaptation mechanism to enhance the performance of Graph Convolutional Network (GCN) and the generalization performance of transfer properties. Specifically, order spectrum analysis is employed to resample the vibration signals of aviation bearings and transform them into order spectral signals. Then, the trained 1dGCN is used as the feature extractor, and the designed Dynamic Multiple Kernel Maximum Mean Discrepancy (DMKMMD) is calculated to match the difference in edge distribution. Finally, the aligned features are fed into the softmax classifier for intelligent health assessment. The effectiveness of the proposed diagnostic algorithm and method are validated by using aviation bearing fault data set under large speed fluctuation conditions.
作为航空发动机、电液执行器和其他设备的关键支撑和固定部件,航空轴承的运行经常受到高速、高温上升、大负载和其他连续复杂波动条件的影响,这使得它们的健康评估任务更加困难。为了解决这个问题,提出了一种基于新的深度迁移图卷积网络(DTGCN)的航空轴承在大速度波动条件下的智能健康评估方法。首先,设计了一种新的 DTGCN 算法,主要利用域自适应机制增强图卷积网络(GCN)的性能和转移特性的泛化性能。具体来说,采用阶谱分析对航空轴承的振动信号进行重采样,并将其转换为阶谱信号。然后,将训练好的 1dGCN 作为特征提取器,计算设计的动态多核最大均值差异(DMKMMD)以匹配边缘分布的差异。最后,将对齐的特征输入到 softmax 分类器中进行智能健康评估。通过使用大速度波动条件下的航空轴承故障数据集验证了所提出的诊断算法和方法的有效性。