School of Computer Engineering and Information Technology, University of Ulsan, Ulsan 44610, Korea.
Department of Computer Science, Lahore Garrison University, Lahore 54000, Pakistan.
Sensors (Basel). 2020 Dec 16;20(24):7205. doi: 10.3390/s20247205.
Rolling element bearings are a vital part of rotating machines and their sudden failure can result in huge economic losses as well as physical causalities. Popular bearing fault diagnosis techniques include statistical feature analysis of time, frequency, or time-frequency domain data. These engineered features are susceptible to variations under inconsistent machine operation due to the non-stationary, non-linear, and complex nature of the recorded vibration signals. To address these issues, numerous deep learning-based frameworks have been proposed in the literature. However, the logical reasoning behind crack severities and the longer training times needed to identify multiple health characteristics at the same time still pose challenges. Therefore, in this work, a diagnosis framework is proposed that uses higher-order spectral analysis and multitask learning (MTL), while also incorporating transfer learning (TL). The idea is to first preprocess the vibration signals recorded from a bearing to look for distinct patterns for a given fault type under inconsistent working conditions, e.g., variable motor speeds and loads, multiple crack severities, compound faults, and ample noise. Later, these bispectra are provided as an input to the proposed MTL-based convolutional neural network (CNN) to identify the speed and the health conditions, simultaneously. Finally, the TL-based approach is adopted to identify bearing faults in the presence of multiple crack severities. The proposed diagnostic framework is evaluated on several datasets and the experimental results are compared with several state-of-the-art diagnostic techniques to validate the superiority of the proposed model under inconsistent working conditions.
滚动轴承是旋转机械的重要组成部分,其突然失效会导致巨大的经济损失和人身伤害。流行的轴承故障诊断技术包括对时间、频率或时频域数据的统计特征分析。由于记录的振动信号具有非平稳、非线性和复杂性,这些工程特征容易受到机器运行不一致的影响。为了解决这些问题,文献中提出了许多基于深度学习的框架。然而,裂缝严重程度的逻辑推理以及同时识别多种健康特征所需的更长的训练时间仍然是挑战。因此,在这项工作中,提出了一种诊断框架,该框架使用高阶谱分析和多任务学习(MTL),同时结合迁移学习(TL)。其思想是首先对从轴承记录的振动信号进行预处理,以寻找给定故障类型在不一致工作条件下的明显模式,例如,变化的电机速度和负载、多个裂缝严重程度、复合故障和大量噪声。然后,将这些双谱作为输入提供给基于 MTL 的卷积神经网络(CNN),以同时识别速度和健康状况。最后,采用基于 TL 的方法在存在多种裂缝严重程度的情况下识别轴承故障。在所提出的诊断框架上评估了多个数据集,并将实验结果与几种最先进的诊断技术进行了比较,以验证在不一致工作条件下所提出模型的优越性。