基于深度学习的轴承故障分类新方法*

Junjie Deng, Gege Luo, Caidan Zhao
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引用次数: 1

摘要

轴承故障信号检测在工业领域中起着至关重要的作用,它直接影响到机械设备的性能和安全。将CNN(卷积神经网络)应用于故障信号检测是一种新兴的方法,但该方法在轴承故障信号等一维数据上效果不佳,主要原因是一维信号与图像信号相比特征不明显。其次,由于特殊情况的限制,轴承信号的数据较少,使得深度学习模型难以很好地拟合和收敛。为了解决上述问题,本文提出了一种基于改进软最大损失的CNN (ISM-CNN)。构建的CNN可以从轴承信号中学习到更多细微的特征,从而提高了轴承信号分类的精度。此外,本文提出的算法在一定程度上扩展了训练数据集,从而可以更好地拟合ISM-CNN的参数。在CWRU开放数据集上验证了该算法的有效性,并进行了烧蚀实验。在97类复杂轴承信号生成场景中,算法准确率达到95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Bearing-Fault Classification Method Based on Deep Learning*
Bearing fault signal detection plays a vital role in the industrial field, which directly affects the performance and safety of mechanical equipment. The application of CNN (convolutional neural network) for fault signal detection is an emerging method, but this method does not work well on one-dimensional data such as bearing fault signals, mainly because the features of the one-dimensional signal are not distinct compared to the image signal. Secondly, due to the limitation of the special situation, the data of the bearing signal is less, which makes it hard for the deep learning model to fit and converge well. To solve the above problems, this paper proposes a CNN based on improved softmax-loss (ISM-CNN). The constructed CNN can learn more subtle features from the bearing signals, thereby improving the accuracy of bearing signal classification. Besides, the algorithm proposed in this paper expands the training data set to a certain extent, so that the parameters of the ISM-CNN can be better fitted. We validate the effectiveness of the proposed algorithm on the CWRU open dataset and give ablation experiments to prove it. In the 97-category complex bearing signal generation scenario, the proposed algorithm achieves 95% accuracy.
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