TY - GEN
T1 - Application of the TF-ResNet-MSA Model in the Complex Fault Diagnosis of EHA System Plunger Pumps
AU - Zhang, Wenqi
AU - Liu, Zhenbao
AU - Jia, Zhen
AU - Ge, Xingchen
AU - Wang, Luyao
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - To address the challenge of accurately diagnosing complex faults in Electro-Hydrostatic Actuation (EHA) system plunger pumps, which are characterised by multimodal signals, weak fault features, and class imbalance under high-pressure and high-dynamic working conditions, this paper proposes a novel TF-ResNet-MSA model enhanced with transfer learning. The model utilises a ResNet-50 backbone, incorporates a Multi-Scale Attention (MSA) mechanism for adaptive weighting of local and global time-frequency features, and integrates a Transformer encoder to capture long-range dependencies among vibration, pressure, and acoustic modalities. Furthermore, batch-wise dynamic weighting is introduced during training to mitigate label imbalance, thereby enabling end-to-end fine-tuning with limited labelled data. The experimental findings, derived from a simulated dataset, demonstrate that the proposed model attains an accuracy of 0.982 and an F1-score of 0.977 across five distinct fault types. This outcome signifies a 6.9 percentage point enhancement over the ResNet-50 baseline. In real-world noise and varying working conditions, the model demonstrated an accuracy of 0.953 and an F1-score of 0.947, exhibiting only a 2.9-point degradation from the simulation. This performance significantly surpasses that of ablated models employing MSA (0.903) or Transformer alone (0.896). The confusion matrix analysis indicates a misclassification rate of less than 2.2%, and the model demonstrates an accuracy of over 0.918 under SNR = 10 dB. The findings demonstrate the model's superior diagnostic precision and robustness in practical EHA scenarios, offering an intelligent solution for fault detection and predictive maintenance in aerospace hydraulic actuators that are highly efficient and interpretable.
AB - To address the challenge of accurately diagnosing complex faults in Electro-Hydrostatic Actuation (EHA) system plunger pumps, which are characterised by multimodal signals, weak fault features, and class imbalance under high-pressure and high-dynamic working conditions, this paper proposes a novel TF-ResNet-MSA model enhanced with transfer learning. The model utilises a ResNet-50 backbone, incorporates a Multi-Scale Attention (MSA) mechanism for adaptive weighting of local and global time-frequency features, and integrates a Transformer encoder to capture long-range dependencies among vibration, pressure, and acoustic modalities. Furthermore, batch-wise dynamic weighting is introduced during training to mitigate label imbalance, thereby enabling end-to-end fine-tuning with limited labelled data. The experimental findings, derived from a simulated dataset, demonstrate that the proposed model attains an accuracy of 0.982 and an F1-score of 0.977 across five distinct fault types. This outcome signifies a 6.9 percentage point enhancement over the ResNet-50 baseline. In real-world noise and varying working conditions, the model demonstrated an accuracy of 0.953 and an F1-score of 0.947, exhibiting only a 2.9-point degradation from the simulation. This performance significantly surpasses that of ablated models employing MSA (0.903) or Transformer alone (0.896). The confusion matrix analysis indicates a misclassification rate of less than 2.2%, and the model demonstrates an accuracy of over 0.918 under SNR = 10 dB. The findings demonstrate the model's superior diagnostic precision and robustness in practical EHA scenarios, offering an intelligent solution for fault detection and predictive maintenance in aerospace hydraulic actuators that are highly efficient and interpretable.
KW - Complex fault diagnosis
KW - Electro-hydraulic actuation
KW - Multi-scale attention mechanism
KW - Plunger pump
KW - Transformer
UR - https://www.scopus.com/pages/publications/105037315230
U2 - 10.1109/PHM-Xian66756.2025.11427565
DO - 10.1109/PHM-Xian66756.2025.11427565
M3 - 会议稿件
AN - SCOPUS:105037315230
T3 - 2025 Global Reliability and Prognostics and Health Management Conference, PHM-Xian 2025
BT - 2025 Global Reliability and Prognostics and Health Management Conference, PHM-Xian 2025
A2 - Wang, Huimin
A2 - Li, Steven
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 16th IEEE Reliability and Prognostics and Health Management Conference, PHM-Xian 2025
Y2 - 10 October 2025 through 12 October 2025
ER -