Chen Jintao, Yan Baokang, Dong Mengya, Ning Bowen
School of Information Science and Engineering, Wuhan University of Science and Technology, Wuhan 430081, China.
Sensors (Basel). 2024 Feb 26;24(5):1497. doi: 10.3390/s24051497.
To address the challenges faced in the prediction of rolling bearing life, where temporal signals are affected by noise, making fault feature extraction difficult and resulting in low prediction accuracy, a method based on optimal time-frequency spectra and the DenseNet-ALSTM network is proposed. Firstly, a signal reconstruction method is introduced to enhance vibration signals. This involves using the CEEMDAN deconvolution method combined with the Teager energy operator for signal reconstruction, aiming to denoise the signals and highlight fault impacts. Subsequently, a method based on the snake optimizer (SO) is proposed to optimize the generalized S-transform (GST) time-frequency spectra of the enhanced signals, obtaining the optimal time-frequency spectra. Finally, all sample data are transformed into the optimal time-frequency spectrum set and input into the DenseNet-ALSTM network for life prediction. The comparison experiment and ablation experiment show that the proposed method has high prediction accuracy and ideal prediction performance. The optimization terms used in different contexts in this paper are due to different optimization methods, specifically the CEEMDAN method.
为应对滚动轴承寿命预测中面临的挑战,其时域信号受噪声影响,使得故障特征提取困难并导致预测精度低,提出了一种基于最优时频谱和DenseNet-ALSTM网络的方法。首先,引入一种信号重构方法来增强振动信号。这包括使用结合了Teager能量算子的CEEMDAN反卷积方法进行信号重构,旨在对信号进行去噪并突出故障影响。随后,提出一种基于蛇优化器(SO)的方法来优化增强信号的广义S变换(GST)时频谱,获得最优时频谱。最后,将所有样本数据转换为最优时频谱集并输入到DenseNet-ALSTM网络中进行寿命预测。对比实验和消融实验表明,所提方法具有较高的预测精度和理想的预测性能。本文在不同上下文中使用的优化术语是由于不同的优化方法,具体而言是CEEMDAN方法。