1.太原科技大学 电子信息工程学院,太原 030024
2.先进控制与工业智能山西省重点实验室,太原 030024
孙元帅,男,1998年生,山东潍坊人,在读硕士研究生;主要研究方向为故障诊断;E-mail:810591471@qq.com。
谢刚(通信作者),男,1972年生,山西太原人,博士,教授;主要研究方向为机器视觉与图像处理、物联网安全与隐私、大数据驱动的智能故障诊断等;E-mail:xiegang@tyust.edu.cn。
收稿:2024-05-05,
纸质出版:2026-02-15
移动端阅览
孙元帅,孔繁钦,聂晓音,等. 基于图卷积和多传感融合的跨设备故障诊断方法[J]. 机械强度,2026,48(2):21-30.
SUN Yuanshuai,KONG Fanqin,NIE Xiaoyin,et al. Cross-device fault diagnosis method based on graph convolution and multi-sensor fusion[J]. Journal of Mechanical Strength,2026,48(2):21-30.
孙元帅,孔繁钦,聂晓音,等. 基于图卷积和多传感融合的跨设备故障诊断方法[J]. 机械强度,2026,48(2):21-30. DOI: 10.16579/j.issn.1001.9669.2026.02.003.
SUN Yuanshuai,KONG Fanqin,NIE Xiaoyin,et al. Cross-device fault diagnosis method based on graph convolution and multi-sensor fusion[J]. Journal of Mechanical Strength,2026,48(2):21-30. DOI: 10.16579/j.issn.1001.9669.2026.02.003.
目的
2
针对实际生产中机械设备的标记故障数据获取困难、跨设备数据概率分布不同导致诊断准确率低的问题,提出一种基于图卷积和多传感融合的跨设备故障诊断方法——卷积域图卷积网络(Convolutional Domain Graph Convolution Network
CDGCN),实现对类标签、域标签和数据特征结构的统一建模。
方法
2
首先,利用卷积神经网络从原始信号中提取初步特征;其次,通过图生成层挖掘样本间的特征结构关系,构建实例图,并利用多感受野图卷积网络(Multi-Receptive Field Graph Convolutional Network
MRF-GCN)进行建模,提取更具表达力的节点特征;同时,提出一种高层特征融合方式实现多传感器信息集成;最后,令最大均值差异度量、分类器与域判别器协同工作,通过极小极大博弈实现域自适应(Domain Adaptation
DA)。
结果
2
试验结果表明,CDGCN的平均准确率达到75.33%,相较于域对抗迁移网络(Domain-Adversarial Neural Network
DANN)、条件对抗域自适应网络(Conditional Domain Adversarial Network
CDAN)、联合自适应网络(Joint Adaptation Network
JAN)、深度自适应网络(Deep Adaptation Network
DAN)方法分别提升了29.23、30.35、15.20、12.70百分点。消融试验证明了多感受野特征提取、数据特征结构建模以及多传感器信息融合对提升迁移诊断精度的有效性。
Objective
2
To address the problems of difficulty in obtaining labeled fault data for mechanical equipment and low diagnosis accuracy caused by different probability distributions of cross-device data in actual production
a cross-device fault diagnosis method based on graph convolution and multi-sensor fusion
named convolutional domain graph convolution network (CDGCN)
is proposed
realizing the unified modeling of class labels
domain labels
and data feature structures.
Methods
2
Firstly
a convolutional neural network (CNN) was utilized to extract preliminary features from raw signals. Secondly
an instance graph was constructed by mining the feature structural relations among samples through a graph generation layer
and a multi-receptive field graph convolutional network (MRF-GCN) was employed for modeling to extract more expressive node features. Meanwhile
a high-level feature fusion method was proposed to achieve multi-sensor information integration. Finally
let the maximum mean discrepancy (MMD) metric
the classifier and the domain discriminator work synergistically to achieve domain adaptation (DA) through a minimax game.
Results
2
Test results show that the average accuracy of CDGCN reaches 75.33%
which is improved by 29.23
30.35
15.20 and 12.70 percentage points compared with the domain-adversarial neural network (DANN)
conditional domain adversarial network (CDAN)
joint adaptation network (JAN)
and deep adaptation network (DAN) method
respectively. Ablation test verifies the effectiveness of multi-receptive field feature extraction
data feature structure modeling
and multi-sensor information fusion in improving transfer diagnosis accuracy.
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