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Intelligent fault diagnosis of rolling bearing using one-dimensional multi-scale deep convolutional neural network based health state classification

机译:基于一维多尺度深度卷积神经网络的健康状态分类的滚动轴承智能故障诊断

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Fault diagnosis of rolling element bearings based on vibration signal is the most popular way to avoid underlying damage for any unexpected fault. In recent years, intelligent fault diagnosis algorithms using machine learning technique have achieved much success, and many deep learning techniques have also found their way into fault diagnosis of rotating machines. Considering that convolution is the most important method to analyze signals in digital signal processing, a novel deep convolutional neural networks is developed to operate directly on the raw vibration signal. The proposed MS-DCNN model could broaden and deepen the neural networks to learn better and more robust feature representations owing to multi-scale convolution layer, meanwhile, reduce the network parameters and the training time. Fault classification experiments of rolling element bearings have been undertaken to indicate the effectiveness of the MS-DCNN model. Compared with 1d-DCNN and 2d-DCNN, MS-DCNN can not only achieve higher accuracy rate in the testing set, but also run more smoothly in the training process.
机译:基于振动信号的滚动轴承故障诊断是避免任何意外故障造成潜在损坏的最常用方法。近年来,利用机器学习技术的智能故障诊断算法取得了很大的成功,并且许多深度学习技术也已发现它们在旋转机械故障诊断中的应用。考虑到卷积是在数字信号处理中分析信号的最重要方法,因此开发了一种新颖的深度卷积神经网络以直接对原始振动信号进行操作。提出的MS-DCNN模型可以扩展和加深神经网络,以通过多尺度卷积层学习更好和更鲁棒的特征表示,同时减少网络参数和训练时间。已经进行了滚动轴承的故障分类实验,以表明MS-DCNN模型的有效性。与1d-DCNN和2d-DCNN相比,MS-DCNN不仅可以在测试集中获得更高的准确率,而且在训练过程中也可以更加流畅地运行。

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