A new multi-modal time series transformation method and multi-scale convolutional attention network for railway wagon bearing fault diagnosis

IF 2.3 3区 工程技术 Q2 ACOUSTICS
Zhihui Men, Yonghua Li, Wuchu Tang, Denglong Wang, Jiahong Cao
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引用次数: 0

Abstract

To align with the evolving trends in intelligent railway wagon operation and maintenance and to enhance the precision of railway wagon bearing fault diagnosis, this paper introduces a novel method for bearing fault diagnosis. The method comprises two key innovations. Firstly, a multi-modal time series transformation method is proposed. This method extracts time series data from the original time domain signals via self-adaptive ensemble empirical mode decomposition with adaptive noise, transforms them into 2D matrices, and captures inter- and intra-period information relationships through convolution. Secondly, a multi-scale convolutional attention network is introduced, enriching fault information by utilizing parallel multi-scale convolution for down-sampling. To prevent feature loss, sliding convolution is adopted instead of pooling. Additionally, the model incorporates the convolutional block attention module to focus on critical information. Experimental validation conducted in a laboratory using a self-developed railway wagon bearing dynamic performance tester demonstrates high diagnostic accuracy and strong overall performance. The method’s generalizability is further confirmed through validation using publicly available datasets. This method could find practical use in railway maintenance, improving the accuracy of bearing fault diagnosis, and making operations more efficient.
用于铁路货车轴承故障诊断的新型多模态时间序列变换方法和多尺度卷积注意力网络
为顺应铁路货车智能化运营和维护的发展趋势,提高铁路货车轴承故障诊断的精度,本文介绍了一种轴承故障诊断的新方法。该方法有两大创新点。首先,提出了一种多模态时间序列转换方法。该方法通过具有自适应噪声的自适应集合经验模态分解从原始时域信号中提取时间序列数据,将其转换为二维矩阵,并通过卷积捕捉周期间和周期内的信息关系。其次,引入多尺度卷积注意力网络,利用并行多尺度卷积进行下采样,丰富故障信息。为防止特征丢失,采用了滑动卷积而不是池化。此外,该模型还加入了卷积块关注模块,以关注关键信息。利用自主研发的铁路货车轴承动态性能测试仪在实验室进行的实验验证表明,该方法诊断准确率高,整体性能优越。通过使用公开数据集进行验证,进一步证实了该方法的通用性。该方法可在铁路维护中得到实际应用,提高轴承故障诊断的准确性,并提高运营效率。
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来源期刊
Journal of Vibration and Control
Journal of Vibration and Control 工程技术-工程:机械
CiteScore
5.20
自引率
17.90%
发文量
336
审稿时长
6 months
期刊介绍: The Journal of Vibration and Control is a peer-reviewed journal of analytical, computational and experimental studies of vibration phenomena and their control. The scope encompasses all linear and nonlinear vibration phenomena and covers topics such as: vibration and control of structures and machinery, signal analysis, aeroelasticity, neural networks, structural control and acoustics, noise and noise control, waves in solids and fluids and shock waves.
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