Cross domain fault diagnosis method based on MLP-mixer network

IF 0.6 Q4 ENGINEERING, MECHANICAL Journal of Measurements in Engineering Pub Date : 2023-10-30 DOI:10.21595/jme.2023.23460
Xiaodong Mao
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引用次数: 0

Abstract

The quality of rolling bearings determines the safety of mechanical equipment operation, and bearings with more precise structures are prone to damage due to excessive operation. Therefore, cross domain fault diagnosis of bearings has become a research hotspot. To better improve the accuracy of bearing cross domain fault diagnosis, this study proposes two models. One is a cross domain feature extraction model constructed using a mixed attention mechanism, which recognizes and extracts high-level features of bearing faults through channel attention and spatial attention mechanisms. The other is a bearing cross domain fault diagnosis model based on multi-layer perception mechanism. This model takes the feature signals collected by the attention mechanism model as input to identify and align the differences between the source and target domain features, facilitating cross domain transfer of features. The experimental results show that the mixed attention mechanism model has a maximum accuracy of 97.3 % for feature recognition of different faults, and can successfully recognize corresponding signal values. The multi-layer perception model can achieve the highest recognition accuracy of 99.5 % in bearing fault diagnosis, and it can reach a stable state when it iterates to 26, and the final stable loss value is 0.28. Therefore, the two models proposed in this study have good application value.
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基于mlp -混频器网络的跨域故障诊断方法
滚动轴承的质量决定了机械设备运行的安全性,结构更精密的轴承容易因过度运行而损坏。因此,轴承的跨域故障诊断已成为一个研究热点。为了更好地提高轴承跨域故障诊断的准确性,本研究提出了两种模型。一是利用混合注意机制构建的跨域特征提取模型,通过通道注意和空间注意机制识别和提取轴承故障的高级特征;二是基于多层感知机制的轴承跨域故障诊断模型。该模型以注意机制模型采集的特征信号为输入,识别和对齐源域和目标域特征的差异,促进特征的跨域迁移。实验结果表明,混合注意机制模型对不同故障的特征识别准确率最高可达97.3%,能够成功识别出相应的信号值。多层感知模型在轴承故障诊断中可达到99.5%的最高识别准确率,迭代到26时可达到稳定状态,最终稳定损失值为0.28。因此,本研究提出的两种模型具有较好的应用价值。
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来源期刊
Journal of Measurements in Engineering
Journal of Measurements in Engineering ENGINEERING, MECHANICAL-
CiteScore
2.00
自引率
6.20%
发文量
16
审稿时长
16 weeks
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