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Bearing Fault Diagnosis Based on Convolutional Neural Networks with Kurtogram Representation of Acoustic Emission Signals

机译:基于卷积神经网络与声发射信号的Kurtogram表示的轴承故障诊断

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Early detection of rolling-element bearings faults is essential, and acoustic emission (AE) signals are actively utilized for monitoring bearing health condition. Most existing methods for fault diagnosis comprise two steps: feature extraction and fault classification. The convolutional neural network (CNN) is a powerful deep learning technique that can perform both feature extraction and classification procedures without the need to separate these tasks into different algorithms. However, most of the known CNN architectures are used for image recognition and require a 2-D image as an input parameter. To employ CNN to resolve the problem of rolling-element bearings fault diagnosis, in the present work, the raw 1-D AE signal is transformed into a 2-D kurtogram representation. Experimental results using eight types of various bearing conditions indicate that the proposed fault diagnosis approach utilizing the kurtogram representation of the original AE signal and CNN extracts discriminative features and achieve high classification accuracy.
机译:早期检测滚动元件轴承故障是必不可少的,并且声发射(AE)信号被积极用于监测轴承健康状况。最现有的故障诊断方法包括两个步骤:特征提取和故障分类。卷积神经网络(CNN)是一种强大的深度学习技术,可以执行功能提取和分类过程,而无需将这些任务分为不同的算法。然而,大多数已知的CNN架构用于图像识别,并且需要将2-D图像作为输入参数。为了采用CNN来解决滚动元件轴承故障诊断的问题,在本作工作中,原始的1-D AE信号被转换为2-D Kurtogram表示。使用八种各种轴承条件的实验结果表明,利用原始AE信号的Kurtogram表示的建议的故障诊断方法和CNN提取辨别特征并实现高分类精度。

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