Mao Gang, Zhang Zhongzheng, Qiao Bin, Li Yongbo
MIIT Key Laboratory of Dynamics and Control of Complex System, School of Aeronautics, Northwestern Polytechnical University, Xi'an 710072, China.
Entropy (Basel). 2022 Jan 13;24(1):119. doi: 10.3390/e24010119.
The vibration signal of gearboxes contains abundant fault information, which can be used for condition monitoring. However, vibration signal is ineffective for some non-structural failures. In order to resolve this dilemma, infrared thermal images are introduced to combine with vibration signals via fusion domain-adaptation convolutional neural network (FDACNN), which can diagnose both structural and non-structural failures under various working conditions. First, the measured raw signals are converted into frequency and squared envelope spectrum to characterize the health states of the gearbox. Second, the sequences of the frequency and squared envelope spectrum are arranged into two-dimensional format, which are combined with infrared thermal images to form fusion data. Finally, the adversarial network is introduced to realize the state recognition of structural and non-structural faults in the unlabeled target domain. An experiment of gearbox test rigs was used for effectiveness validation by measuring both vibration and infrared thermal images. The results suggest that the proposed FDACNN method performs best in cross-domain fault diagnosis of gearboxes via multi-source heterogeneous data compared with the other four methods.
变速箱的振动信号包含丰富的故障信息,可用于状态监测。然而,振动信号对于一些非结构性故障是无效的。为了解决这一困境,引入红外热图像,通过融合域自适应卷积神经网络(FDACNN)与振动信号相结合,该方法能够在各种工作条件下诊断结构性和非结构性故障。首先,将测量得到的原始信号转换为频率和平方包络谱,以表征变速箱的健康状态。其次,将频率和平方包络谱序列排列成二维格式,与红外热图像相结合形成融合数据。最后,引入对抗网络实现对未标记目标域中结构性和非结构性故障的状态识别。通过测量振动和红外热图像,利用变速箱试验台进行了有效性验证实验。结果表明,与其他四种方法相比,所提出的FDACNN方法在通过多源异构数据进行变速箱跨域故障诊断方面表现最佳。