Bearing Fault Diagnosis based on Convolutional Neural Network learning of time-domain vibration signal imaging

Liuhao Ma, Jian Xu, Qiang Yang, Xun Li, Qishen Lv
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引用次数: 1

Abstract

Mechanical fault diagnosis and analysis is of paramount importance to ensure reliable and safe operation of various industrial systems. As the massive field data becomes more available, data-driven fault diagnosis becomes feasible and prevalent. But the traditional methods have its limitations in feature extraction and most related research focus on improving the classification method for higher precision. However the feature information of the time signals is still an important part of the diagnosis which has been neglected. This paper proposed a novel method which makes use of the message in the raw time signals. Firstly, a conversion method is used to convert time signals into two-dimensional images. Then the convolutional neural network (CNN) is proposed to extract the features of the 2-D images. Finally, the problem of signal processing is transformed into the problem of image processing. Five typical faults are examined in the experiment using the Case Western Reserve University bearing dataset. The numerical result clearly confirms the effectiveness of the proposed solution.
基于时域振动信号成像卷积神经网络学习的轴承故障诊断
机械故障诊断与分析对于保证各种工业系统的安全可靠运行至关重要。随着大量现场数据的可用性越来越高,数据驱动的故障诊断变得可行和普遍。但传统的分类方法在特征提取方面存在局限性,目前的研究主要集中在对分类方法进行改进,以提高分类精度。然而,时间信号的特征信息仍然是诊断的重要组成部分,但一直被忽视。本文提出了一种利用原始时间信号中信息的新方法。首先,采用转换方法将时间信号转换为二维图像。然后提出了卷积神经网络(CNN)来提取二维图像的特征。最后,将信号处理问题转化为图像处理问题。利用凯斯西储大学轴承数据集对5个典型断层进行了实验研究。数值结果清楚地证实了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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