An Improved Fault Diagnosis Method for Rolling Bearings Based on 1D_CNN Considering Noise and Working Condition Interference

Machines Pub Date : 2024-06-03 DOI:10.3390/machines12060383
Kai Huang, Linbo Zhu, Zhijun Ren, Tantao Lin, Li Zeng, Jin Wan, Yongsheng Zhu
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Abstract

Rolling bearings are prone to failure due to the complexity and serious operational environment of rotating equipment. Intelligent fault diagnosis based on convolutional neural networks (CNNs) has become an effective tool to ensure the reliable operation of rolling bearings. However, interference caused by environmental noise and variable working conditions can affect the data. To solve this problem, we propose an improved fault diagnosis method called deep convolutional neural network based on multi-scale features and mutual information (MMDCNN). In our approach, a multi-scale convolutional layer is placed at the front end of a 1D_CNN to maximize the retention of the multi-scale initial features. Meanwhile, the key fault features are further enhanced adaptively by introducing a self-attention mechanism. Then, the composite loss function is constructed by maximizing mutual information as an auxiliary loss based on cross-entropy loss; thus, the proposed method can extract robust fault features with high generalization performance. To demonstrate the superiority of MMDCNN, we compared the performance of our scheme with several existing deep learning models on two datasets. The results show that the proposed model successfully achieves bearing fault diagnosis with interference from noise and variable working conditions, possessing a powerful fault feature extraction capability.
基于 1D_CNN 的改进型滚动轴承故障诊断方法(考虑噪声和工况干扰
由于旋转设备的复杂性和严峻的运行环境,滚动轴承很容易出现故障。基于卷积神经网络(CNN)的智能故障诊断已成为确保滚动轴承可靠运行的有效工具。然而,环境噪声和多变的工作条件会对数据造成干扰。为解决这一问题,我们提出了一种改进的故障诊断方法,即基于多尺度特征和互信息的深度卷积神经网络(MMDCNN)。在我们的方法中,多尺度卷积层被置于一维卷积神经网络的前端,以最大限度地保留多尺度初始特征。同时,通过引入自注意机制,进一步自适应地增强关键故障特征。然后,在交叉熵损失的基础上,通过最大化互信息作为辅助损失来构建复合损失函数;因此,所提出的方法可以提取具有高泛化性能的鲁棒故障特征。为了证明 MMDCNN 的优越性,我们在两个数据集上比较了我们的方案和现有的几个深度学习模型的性能。结果表明,所提出的模型成功实现了在噪声干扰和多变工况下的轴承故障诊断,具有强大的故障特征提取能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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