A data-driven hybrid sensor fault detection/diagnosis method with flight test data

被引:1
作者
Song, Jinsheng [1 ]
Chen, Ziqiao [1 ]
Wang, Dong [1 ]
Wen, Xin [1 ]
机构
[1] Shanghai Jiao Tong Univ, Sch Mech & Power Engn, Shanghai 200240, Peoples R China
基金
中国国家自然科学基金;
关键词
fault detection/diagnosis; dynamic mode decomposition; Kalman filter; k-nearest neighbor; KALMAN FILTER; DIAGNOSIS; MODEL; SIGNAL; STATE;
D O I
10.1088/1361-6501/ad3976
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Fault diagnosis of multi-source signal systems is critical for the safe and reliable operation of modern industrial systems, and accurate fault diagnosis of systems based on multi-source signals remains challenging. This study proposes a data-driven hybrid fault detection/diagnosis method to identify sensor faults in complex systems through interactions between multiple sensors. Dynamic mode decomposition with control is used to obtain the approximate model of the investigated system from multi-source signals, extract the underlying physical mechanisms, combined with the Kalman filter observer to generate the residual between the observed data and the predicted data. Then the residual (moving innovation covariance matrix V k ) is input into the k-nearest neighbor classification algorithm for fault detection and diagnosis. The effectiveness of the proposed method was evaluated using the flight test braking system dataset. The results showed that the accuracy of the proposed method in fault detection and diagnosis (with accuracies of 100% and 100%, respectively) was significantly improved than that of using raw signal data (76.6% and 6.38%) or raw signal data and V k (80.85% and 42.55%). The analysis of different parameters including fault severity, algorithm hyperparameter k , and sensor type showed that the proposed method has high robustness, generalization ability, and practicality.
引用
收藏
页数:15
相关论文
共 54 条
[1]   Effects of Distance Measure Choice on K-Nearest Neighbor Classifier Performance: A Review [J].
Abu Alfeilat, Haneen Arafat ;
Hassanat, Ahmad B. A. ;
Lasassmeh, Omar ;
Tarawneh, Ahmad S. ;
Alhasanat, Mahmoud Bashir ;
Salman, Hamzeh S. Eyal ;
Prasath, V. B. Surya .
BIG DATA, 2019, 7 (04) :221-248
[2]   Coupling data-driven and model-based methods to improve fault diagnosis [J].
Atoui, M. Amine ;
Cohen, Achraf .
COMPUTERS IN INDUSTRY, 2021, 128
[3]   Dynamic Mode Decomposition for Compressive System Identification [J].
Bai, Zhe ;
Kaiser, Eurika ;
Proctor, Joshua L. ;
Kutz, J. Nathan ;
Brunton, Steven L. .
AIAA JOURNAL, 2020, 58 (02) :561-574
[4]   Modeling, Detection, and Disambiguation of Sensor Faults for Aerospace Applications [J].
Balaban, Edward ;
Saxena, Abhinav ;
Bansal, Prasun ;
Goebel, Kai F. ;
Curran, Simon .
IEEE SENSORS JOURNAL, 2009, 9 (12) :1907-1917
[5]   A Review of Data-Driven Machinery Fault Diagnosis Using Machine Learning Algorithms [J].
Cen, Jian ;
Yang, Zhuohong ;
Liu, Xi ;
Xiong, Jianbin ;
Chen, Honghua .
JOURNAL OF VIBRATION ENGINEERING & TECHNOLOGIES, 2022, 10 (07) :2481-2507
[6]  
Chiang L.H., 2001, Meas. Sci. Technol., V12, P1745, DOI DOI 10.1088/0957-0233/12/10/706
[7]  
Chui CK, 2009, Kalman Filtering: With Real-Time Applications, DOI DOI 10.1007/978-3-540-87849-0
[8]   Triplet attention-enhanced residual tree-inspired decision network: A hierarchical fault diagnosis model for unbalanced bearing datasets [J].
Cui, Lingli ;
Dong, Zhilin ;
Xu, Hai ;
Zhao, Dezun .
ADVANCED ENGINEERING INFORMATICS, 2024, 59
[9]   From Model, Signal to Knowledge: A Data-Driven Perspective of Fault Detection and Diagnosis [J].
Dai, Xuewu ;
Gao, Zhiwei .
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2013, 9 (04) :2226-2238
[10]   Hybrid Learning Approach to Sensor Fault Detection with Flight Test Data [J].
de Silva, Brian M. ;
Callaham, Jared ;
Jonker, Jonathan ;
Goebel, Nicholas ;
Klemisch, Jennifer ;
McDonald, Darren ;
Hicks, Nathan ;
Kutz, J. Nathan ;
Brunton, Steven L. ;
Aravkin, Aleksandr Y. .
AIAA JOURNAL, 2021, 59 (09) :3490-3503