Intelligent judgment of rotating machinery based on multi-scale parallel network and attention mechanism

Zhixiang Fan, Pengjiang Qian
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Abstract

The primary problem solved in rotating machinery fault diagnosis is how to effectively extract fault features from the vibration signals with noise. To extract fault features accurately, this study proposes a multi-scale parallel convolutional neural network fault recognition algorithm, which can carry out feature fusion. The above method combines empirical feature extraction (e.g., fast Fourier transform) to enrich feature information, which can effectively implement deep learning. The effectiveness and reliability of the method are verified through example studies on JNU, SEU and PU rolling bearing experimental data sets. The algorithm has the higher classification capability and diagnostic accuracy compared with four common deep learning algorithms.
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基于多尺度并行网络和注意机制的旋转机械智能判断
如何从含噪声的振动信号中有效提取故障特征是旋转机械故障诊断中要解决的首要问题。为了准确提取故障特征,本研究提出了一种多尺度并行卷积神经网络故障识别算法,该算法可以进行特征融合。上述方法结合经验特征提取(如快速傅立叶变换)丰富特征信息,可以有效实现深度学习。通过JNU、SEU和PU滚动轴承实验数据集的算例研究,验证了该方法的有效性和可靠性。与四种常用的深度学习算法相比,该算法具有更高的分类能力和诊断准确率。
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