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Bayesian large-kernel attention network for bearing remaining useful life prediction and uncertainty quantification

机译:用于轴承剩余使用寿命预测和不确定性量化的贝叶斯大核注意力网络

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摘要

? 2023Attention network-based remaining useful life (RUL) prediction methods have achieved distinguished performance due to the ability of adaptive feature selection. However, existing attention networks fail to balance between the computational efficiency and the long-range correlations as well as channel adaptability. Moreover, these attention networks are unable to reason about the uncertainty in RUL prediction. To tackle these issues, a Bayesian large-kernel attention network (BLKAN) is proposed for bearing RUL prediction and uncertainty quantification. BLKAN enables uncertainty quantification, long-range correlations and channel adaptability in attention mechanism to effectively extract degradation features to facilitate RUL prediction accuracy. Thereafter, large kernel Bayesian convolutions, that are used to generate attention weights in BLKAN, are decomposed into three simple components to reduce the parameters and computational cost. At last, variational inference is introduced to inference probability distributions of the parameters of BLKAN and learn uncertainty-aware attention. Experimental results on two bearing datasets show that BLKAN not only achieves uncertainty quantification in RUL prediction but also consistently outperforms the baseline comparison methods. Visualization of attention weights reveals the causal correlations between the degradation patterns and the features emphasized by attention. The proposed method provides a novel uncertainty-aware attention network-based framework for trustworthy RUL prediction.
机译:?2023基于注意力网络的剩余使用寿命(RUL)预测方法由于具有自适应特征选择能力而取得了显著的性能。然而,现有的注意力网络未能在计算效率、长程相关性和信道适应性之间取得平衡。此外,这些注意力网络无法推理RUL预测的不确定性。针对这些问题,该文提出一种用于承载RUL预测和不确定性量化的贝叶斯大核注意力网络(BLKAN)。BLKAN在注意力机制中实现了不确定性量化、长程相关性和通道适应性,从而有效地提取退化特征,提高RUL预测的准确性。此后,用于在BLKAN中生成注意力权重的大核贝叶斯卷积被分解为三个简单的分量,以降低参数和计算成本。最后,引入变分推理对BLKAN参数的概率分布进行推理,学习不确定性感知注意力。在两个轴承数据集上的实验结果表明,BLKAN不仅在RUL预测中实现了不确定性量化,而且性能始终优于基线比较方法。注意力权重的可视化揭示了退化模式与注意力强调的特征之间的因果关系。该方法为可信RUL预测提供了一种基于不确定性感知注意力网络的框架。

著录项

  • 来源
    《Reliability engineering & system safety》 |2023年第10期|1.1-1.16|共16页
  • 作者

    Wang L.; Cao H.; Ye Z.Xu H.;

  • 作者单位

    National Key Lab of Aerospace Power System and Plasma Technology Xi'an Jiaotong University||Department of Industrial Systems Engineering and Management National University of Singapore;

    National Key Lab of Aerospace Power System and Plasma Technology Xi'an Jiaotong UniversityNational Key Lab of Aerospace Power System and Plasma Technology Xi'an Jiaotong University||School of Mechanical Engineering Xi'an Jiaotong University;

    ||Department of Industrial Systems Engineering and Management National University of SingaporeCRRC Shandong Wind Power Co. Ltd;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 英语
  • 中图分类
  • 关键词

    Bayesian large-kernel attention network; Bearings; RUL prediction; Uncertainty quantification;

    机译:贝叶斯大核注意力网络;轴承;RUL 预测;不确定度量化;
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