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Interpretable Convolutional Neural Network Through Layer-wise Relevance Propagation for Machine Fault Diagnosis

机译:通过用于机器故障诊断的层面相关传播的可解释的卷积神经网络

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As a state-of-the-art pattern recognition technique, convolutional neural networks (CNNs) have been increasingly investigated for machine fault diagnosis, due to their ability in analyzing nonlinear and nonstationary high-dimensional data that are typically associated with the performance degradation process of machines. A key issue of interest is how the inputs to CNNs that contain fault-related patterns are learned by CNNs to recognize discriminatory information for fault diagnosis. Understanding this link will help establish connection to the physical meaning of the diagnosis, contributing to the broad acceptance of CNNs as a trustworthy complement to physics-based reasoning by human experts. Using Layer-wise Relevance Propagation (LRP) as an indicator, this paper investigates the performance of a CNN trained by time-frequency spectra images of vibration signals measured on an induction motor. The LRP provides pixel-level representation of which values in the input signal contribute the most to the diagnosis results, thereby providing an improved understanding of how the CNN learns to distinguish between fault types from these inputs. Results have shown that the patterns learned by CNNs in the time-frequency spectra images are intuitive and consistent with respect to network re-training. Comparison with using raw time series and discrete Fourier transform coefficients as inputs reveals that time-frequency images allow for more consistent pattern recognition by CNNs.
机译:作为一种最先进的模式识别技术,由于它们在分析通常与性能下降过程相关联的非平稳高维数据的能力,因此卷积神经网络(CNNS)越来越多地研究了机器故障诊断机器。感兴趣的关键问题是CNN学习了包含与相关模式的CNN的输入,以识别故障诊断的歧视信息。了解这一链接将有助于建立与诊断的物理意义的关系,有助于对人类专家的基于物理学推理的广泛接受CNNS的广泛接受。使用层面相关性传播(LRP)作为指示器,本文研究了在感应电动机上测量的振动信号的时频谱图像训练的CNN的性能。 LRP提供了像素级表示,输入信号中的值对诊断结果产生最大贡献,从而提供了改进的了解CNN如何学习如何区分来自这些输入的故障类型。结果表明,CNN在时频谱图像中学到的模式是直观的,并且对于网络重新训练而一致。与使用原始时间序列和离散傅里叶变换系数的比较,因为输入显示时频图像允许CNN的更一致的模式识别。

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