A New Variable Conditions Intelligent Fault Diagnosis Method for Rotor-bearing Based on Vibration Image Dataset

Xiaoyue Liu, Cong Peng
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Abstract

Modern industrial equipment is developing in the direction of automation and intelligence, and intelligent fault diagnosis based on deep learning (DL) has become a hot topic. Traditional fault diagnosis of rotating machinery is mostly based on the fault data obtained by the accelerometer, which has the problems of sparse vibration information and insignificant vibration characteristics. At the same time, the diagnosis algorithm is mostly based on the assumption that a large amount of labeled samples is available, the training and testing dataset are independent and identically distributed. When the mechanical equipment operates under complex and variable working conditions, the performance of traditional fault diagnosis algorithms will be degenerated. Visual vibration measurement has been gradually applied to the field of mechanical fault diagnosis because it can obtain the full-field vibration information with rich texture characteristics and does not produce mass load effect on the measured object. On this basis, this research proposes a new variable-condition fault diagnosis method based on image dataset, which encodes the full-field time-domain vibration information collected by vision into a gray-scale image sequence to enrich the texture to characterize the fault characteristics, instead of traditional accelerometer data for transfer fault diagnosis. The experimental results show that this method can achieve higher classification and recognition results in the task of fault diagnosis of rotor bearing variable working conditions.
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基于振动图像数据集的转子轴承变条件智能故障诊断新方法
现代工业设备正朝着自动化、智能化的方向发展,基于深度学习的智能故障诊断已成为研究的热点。传统的旋转机械故障诊断多基于加速度计获取的故障数据,存在振动信息稀疏、振动特性不显著的问题。同时,诊断算法大多基于有大量标记样本可用,训练和测试数据集独立且分布相同的假设。当机械设备在复杂多变的工况下运行时,传统的故障诊断算法的性能会下降。视觉振动测量因能获得具有丰富纹理特征的全场振动信息,且不会对被测物体产生质量载荷效应,已逐渐应用于机械故障诊断领域。在此基础上,本研究提出了一种新的基于图像数据集的变条件故障诊断方法,将视觉采集到的全场时域振动信息编码成灰度图像序列,丰富纹理来表征故障特征,代替传统的加速度计数据进行传递故障诊断。实验结果表明,该方法在转子轴承变工况故障诊断任务中能够取得较高的分类和识别效果。
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