基于轴承退化状态估计与1DCNN-BiGRU-SA的轴承寿命预测方法

Bearing life prediction method based on bearing degradation state estimation and 1DCNN-BiGRU-SA

  • 摘要: 针对滚动轴承运行工况恶劣、有效特征难以提取,且轴承寿命预测存在初始预测时间(first prediction time,FPT)难确定、单一模型精度低的问题,提出一种联合轴承退化状态估计与一维卷积神经网络-双向门控循环单元-自注意力机制(1DCNN-BiGRU-SA)的轴承寿命预测方法。首先,利用经过三角拓扑聚合优化算法(triangulation topology aggregation optimizer,TTAO)优化的变分模态分解(variational mode decomposition,VMD)并结合皮尔逊相关系数对信号进行降噪重构;其次,对重构信号的时域退化特征进行提取,通过构建退化特征融合机制实现轴承FPT的高精度确定,进而更精准地表征轴承全生命周期内的退化状态演化规律;最后,构建嵌入自注意力机制(self-attention,SA)的1DCNN-BiGRU模型,将多时域特征构成的时间序列作为输入,进行轴承寿命预测。利用XJTU-SY滚动轴承加速寿命试验数据集验证文章所提方法的有效性。研究结果表明,所提出的寿命预测方法具有更高的预测精度。

     

    Abstract: In view of the harsh operating conditions of rolling bearings, the difficulty in extracting effective features, as well as the fact that the first prediction time (FPT) in bearing life prediction is difficult to determine and the accuracy of a single model is low. A bearing life prediction method combining bearing degradation state estimation and 1DCNN-BiGRU-SA is proposed. Firstly, the variational mode decomposition (VMD) optimized by the triangulation topology aggregation optimizer (TTAO) is utilized, combined with the Pearson correlation coefficients to perform noise reduction and reconstruction on the signal. Secondly, the time-domain degradation features of the reconstructed signal are extracted. The precision determination of bearing FPT is realized by constructing a degradation feature fusion mechanism, and then the evolution law of the degradation state of the bearing throughout its entire life cycle is characterized more accurately. Finally, a 1DCNN-BiGRU model embedded in the self-attention (SA) mechanism is constructed, and a time series composed of multiple time-domain features is used as input to predict bearing life. The XJTU-SY rolling bearing accelerated life test data set is used to verify the effectiveness of the proposed method. The research results show that the proposed life prediction method has higher prediction accuracy.

     

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