Yang Lei, Jiang Yibo, Zeng Kang, Peng Tao
The ZJU-Hangzhou Global Scientific and Technological Innovation Center, Zhejiang University, Hangzhou 311215, China.
The Jiaxing Shutuo Technology Co., Ltd., Jiaxing 314031, China.
Sensors (Basel). 2024 May 8;24(10):2992. doi: 10.3390/s24102992.
Ensuring precise prediction of the remaining useful life (RUL) for bearings in rolling machinery is crucial for preventing sudden machine failures and optimizing equipment maintenance strategies. Since the significant interference encountered in real industrial environments and the high complexity of the machining process, accurate and robust RUL prediction of rolling bearings is of tremendous research importance. Hence, a novel RUL prediction model called CNN-VAE-MBiLSTM is proposed in this paper by integrating advantages of convolutional neural network (CNN), variational autoencoder (VAE), and multiple bi-directional long short-term memory (MBiLSTM). The proposed approach includes a CNN-VAE model and a MBiLSTM model. The CNN-VAE model performs well for automatically extracting low-dimensional features from time-frequency spectrum of multi-axis signals, which simplifies the construction of features and minimizes the subjective bias of designers. Based on these features, the MBiLSTM model achieves a commendable performance in the prediction of RUL for bearings, which independently captures sequential characteristics of features in each axis and further obtains differences among multi-axis features. The performance of the proposed approach is validated through an industrial case, and the result indicates that it exhibits a higher accuracy and a better anti-noise capacity in RUL predictions than comparable methods.
确保对滚动机械中轴承的剩余使用寿命(RUL)进行精确预测对于防止机器突然故障和优化设备维护策略至关重要。由于在实际工业环境中会遇到重大干扰以及加工过程的高度复杂性,对滚动轴承进行准确且稳健的RUL预测具有巨大的研究意义。因此,本文通过整合卷积神经网络(CNN)、变分自编码器(VAE)和多重双向长短期记忆网络(MBiLSTM)的优势,提出了一种名为CNN-VAE-MBiLSTM的新型RUL预测模型。所提出的方法包括一个CNN-VAE模型和一个MBiLSTM模型。CNN-VAE模型在从多轴信号的时频谱中自动提取低维特征方面表现出色,这简化了特征构建并最大限度地减少了设计人员的主观偏差。基于这些特征,MBiLSTM模型在轴承RUL预测中取得了值得称赞的性能,它独立捕获每个轴上特征的序列特征,并进一步获取多轴特征之间的差异。通过一个工业案例验证了所提出方法的性能,结果表明,与同类方法相比,它在RUL预测中表现出更高的准确性和更好的抗噪声能力。