计算机科学
融合
传感器融合
图形
断层(地质)
信息融合
卷积神经网络
人工智能
理论计算机科学
语言学
地质学
哲学
地震学
作者
Siyuan Gao,Khandaker Noman,Gang Mao,Zichen Deng,Yongbo Li,Wenqing Ge
标识
DOI:10.1109/tim.2025.3579843
摘要
Achieving information fusion of multi-sensor data plays an important role in improving the performance of gearbox fault diagnosis. However, this fusion process is hindered by the heterogeneity problem caused by the different data dimensions of various sensors. In order to solve this problem, exploitation of the complementary nature of multi-source heterogeneous data to provide more accurate fault information is necessary. Thus, a multi-source heterogeneous information fusion method based graph convolutional network (MHIF-GCN) is proposed in this paper. In this framework, a convolutional autoencoder is used to extract deep features corresponding to different types of sensors as graph node features for solving data heterogeneity problem. Secondly, graph convolutional network (GCN) model based on K-nearest neighbor graph (KNNGraph) are introduced to establish the connection between different sensor data in the graph structure for realizing the feature-level fusion of sensor data and mining deeper fault data features. The results of two gearbox experiments validate the excellent fault diagnosis performance of the proposed MHIF-GCN. In Experiment I, the MHIF-GCN is able to accurately recognize six structural and nonstructural fault types. With the support of the complementary fusion mechanism, the proposed MHIF-GCN has the highest average diagnostic accuracy of 99.00% when compared with the other six methods. Even with a small number of training samples, MHIF-GCN still performs very favorably compared to other methods with an accuracy of 88.87%. In Experiment II, the MHIF-GCN has the highest diagnostic accuracy of 94.00% and the recall, precision, and f-score for each fault state remain above 85%, and the proposed MHIF-GCN maintains a stable diagnostic performance.
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