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Deep Learning Enabled Fault Diagnosis Using Time-Frequency Image Analysis of Rolling Element Bearings

机译:使用滚动元件轴承的时频图像分析,实现了深度学习的故障诊断

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摘要

Traditional feature extraction and selection is a labor-intensive process requiring expert knowledge of the relevant features pertinent to the system. This knowledge is sometimes a luxury and could introduce added uncertainty and bias to the results. To address this problem a deep learning enabled featureless methodology is proposed to automatically learn the features of the data. Time-frequency representations of the raw data are used to generate image representations of the raw signal, which are then fed into a deep convolutional neural network (CNN) architecture for classification and fault diagnosis. This methodology was applied to two public data sets of rolling element bearing vibration signals. Three time-frequency analysis methods (short-time Fourier transform, wavelet transform, and Hilbert-Huang transform) were explored for their representation effectiveness. The proposed CNN architecture achieves better results with less learnable parameters than similar architectures used for fault detection, including cases with experimental noise.
机译:传统的特色提取和选择是一种劳动密集型过程,需要专家了解与系统相关的相关功能。这种知识有时是一种奢侈,可以向结果增加不确定性和偏见。为了解决这个问题,建议启用深度学习的无味方法,以自动学习数据的功能。原始数据的时频表示用于生成原始信号的图像表示,然后将其馈入到深度卷积神经网络(CNN)架构中进行分类和故障诊断。该方法应用于滚动元件轴承振动信号的两个公共数据组。探讨了三个时频分析方法(短时傅里叶变换,小波变换和希尔伯特变换)的代表性效率。该建议的CNN架构通过用于故障检测的类似架构实现更好的参数,包括具有实验噪声的案例。

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