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Application of Multiscale Learning Neural Network Based on CNN in Bearing Fault Diagnosis

机译:基于CNN的多尺度学习神经网络在轴承故障诊断中的应用

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摘要

With the application of intelligent manufacturing becoming more and more widely, the losses caused by mechanical faults of equipment increase. Identifying and troubleshooting faults in an early stage are important. The process of traditional data-driven fault diagnosis method includes data acquisition, fault classification, and feature extraction, in which classification accuracy is directly affected by the result of feature extraction. As a common deep learning method in image recognition, the convolutional neural network (CNN) demonstrates good performance in fault diagnosis. CNN can adaptively extract features from original signals and eliminate the effect of conventional handcrafted features. In this study, a multiscale learning neural network that contains one-dimension (1D) and two-dimension (2D) convolution channels is proposed. The network can learn the local correlation of adjacent and nonadjacent intervals in periodic signals, such as vibration data. The Paderborn data set is came into use to demonstrate the classification accuracy of the method which is brought forward, which includes three conditions of healthy, outer ring (OR) damage and inner ring (IR) damage. The classification accuracy of the method which is put forward is up to 98.58%. The same dataset was applied to test the classification accuracy of support vector machine (SVM) for comparison. And the proposed multiscale learning neural network demonstrates considerable improvements.
机译:随着智能制造的应用越来越广泛,设备机械故障所造成的损失越来越大。尽早识别和排除故障很重要。传统的数据驱动故障诊断方法的过程包括数据采集,故障分类和特征提取,其中分类精度直接受到特征提取结果的影响。卷积神经网络(CNN)作为图像识别中常用的深度学习方法,在故障诊断中表现出良好的性能。 CNN可以从原始信号中自适应提取特征,并消除传统手工特征的影响。在这项研究中,提出了一种包含一维(1D)和二维(2D)卷积通道的多尺度学习神经网络。网络可以学习周期性信号(例如振动数据)中相邻间隔和不相邻间隔的局部相关性。帕德博恩(Paderborn)数据集用于证明所提出方法的分类准确性,该方法包括健康,外环(OR)损坏和内环(IR)损坏三个条件。提出的方法的分类准确率高达98.58%。使用相同的数据集测试支持向量机(SVM)的分类准确性以进行比较。所提出的多尺度学习神经网络证明了相当大的改进。

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