TY - JOUR
T1 - Attention-aware temporal–spatial graph neural network with multi-sensor information fusion for fault diagnosis
AU - Wang, Zhe
AU - Wu, Zhiying
AU - Li, Xingqiu
AU - Shao, Haidong
AU - Han, Te
AU - Xie, Min
N1 - Publisher Copyright:
© 2023 Elsevier B.V.
PY - 2023/10/25
Y1 - 2023/10/25
N2 - Intelligent fault diagnosis has attracted intensive efforts in machine predictive maintenance. However, the structural information from multi-sensor signals has not been fully investigated. In this study, a novel temporal–spatial graph neural network with an attention-aware module (A-TSGNN) is proposed to accomplish multi-source information fusion. First, the graph structure naturally organizes the diverse sensors. The graph convolution model realizes the feature representation in the spatial dimension. Then, time-dependent learning is applied in the temporal dimension, and a temporal–spatial learning framework is built. An additional attention module is designed to learn the flexible weights and model the importance of individual sensors and their correlations. Experiments on a wind turbine dataset achieves an accuracy of 0.9669 and an F1-score of 0.9649. For the gearbox dataset, the values are 0.9927 and 0.9920, respectively. The overall macro-average area under the curve metrics reach a perfect score of 1.00 for both datasets, indicating exceptional performance. The adaptive attention mechanism is also discussed to verify the superiority of the A-TSGNN. Furthermore, comparisons with the single-sensor scheme and other fusion models demonstrate the stable performance of the proposed method. The A-TSGNN provides a potential model for comprehensively utilizing multi-sensor data, showing a promising prospect.
AB - Intelligent fault diagnosis has attracted intensive efforts in machine predictive maintenance. However, the structural information from multi-sensor signals has not been fully investigated. In this study, a novel temporal–spatial graph neural network with an attention-aware module (A-TSGNN) is proposed to accomplish multi-source information fusion. First, the graph structure naturally organizes the diverse sensors. The graph convolution model realizes the feature representation in the spatial dimension. Then, time-dependent learning is applied in the temporal dimension, and a temporal–spatial learning framework is built. An additional attention module is designed to learn the flexible weights and model the importance of individual sensors and their correlations. Experiments on a wind turbine dataset achieves an accuracy of 0.9669 and an F1-score of 0.9649. For the gearbox dataset, the values are 0.9927 and 0.9920, respectively. The overall macro-average area under the curve metrics reach a perfect score of 1.00 for both datasets, indicating exceptional performance. The adaptive attention mechanism is also discussed to verify the superiority of the A-TSGNN. Furthermore, comparisons with the single-sensor scheme and other fusion models demonstrate the stable performance of the proposed method. The A-TSGNN provides a potential model for comprehensively utilizing multi-sensor data, showing a promising prospect.
KW - Attention mechanism
KW - Deep learning
KW - Fault diagnosis
KW - Graph neural network
KW - Information fusion
UR - http://www.scopus.com/inward/record.url?scp=85168424229&partnerID=8YFLogxK
U2 - 10.1016/j.knosys.2023.110891
DO - 10.1016/j.knosys.2023.110891
M3 - Article
AN - SCOPUS:85168424229
SN - 0950-7051
VL - 278
JO - Knowledge-Based Systems
JF - Knowledge-Based Systems
M1 - 110891
ER -