Rapid Multi-Sensor Feature Fusion Based on Non-Stationary Kernel JADE for the Small-Amplitude Hunting Monitoring of High-Speed Trains
Abstract
:1. Introduction
2. Theoretical Background
2.1. EEMD
- (1)
- Obtain the overall signal by adding Gaussian white noise to the original signal:
- (2)
- The overall signal is decomposed to obtain the IMF components of each order, where i represents the i-th component, r is the residual term, and n is the number of IMFs:
- (3)
- Repeat step (1) and (2), each time adding different white noise sequences of the same amplitude:In Equation (3), is the i-th IMF component of the decomposition to which white noise at for the j-th time, while is the residual value of the decomposition.
- (4)
- Using the zero-mean principle of the Gaussian white noise frequency, the effect of white noise can be eliminated, and the IMF component corresponding to the original signal can be expressed as:
2.2. IMF Energy Matrix
2.3. Proposed Non-Stationary Kernel JADE
2.4. Separability Evaluation
3. Methodology
- (1)
- The m position sensor data and l classes are selected, and a total of m sample matrices are obtained.
- (2)
- The EEMD algorithm is used to separately decompose the sample matrices of m positions, then n IMF components of each sample signal can be obtained.
- (3)
- By extracting the energy features of the n components of IMF obtained using decomposition, an IMF energy matrix is obtained from each position. In this paper, a total of m energy matrices of IMF were obtained.
- (4)
- For the obtained energy matrices of IMF of m positions, a rapid feature fusion method using NKJADE is proposed, so the dimensionality is reduced to three for a better-observed performance.
- (5)
- The LSSVM is trained on and used to test the fusion features to verify the accuracy of the method.
4. Experiment Results and Analysis
4.1. Case I—Case Western Reserve University Data
4.1.1. Data Description
4.1.2. Signal Processing Results
4.1.3. Discussion
4.2. Case II—Small Amplitude Hunting Monitoring of High-Speed Trains
4.2.1. Problem Description
4.2.2. Data Acquisition
4.2.3. Feature Fusion
4.3. Result and Discussion
4.3.1. Single Sensor Classification Using NKJADE
4.3.2. Multi-Sensor Fusion Using NKJADE
5. Conclusions
- 1.
- The fusion features can be extracted quickly and efficiently using the proposed method NKJADE compared to the SVD-LTSA and the JADEs methods with bearing fault data from Case Western Reserve University.
- 2.
- The NKJADE method can extract the fusion features from non-stationary data effectively compared to the JADE method. In case I, the accuracy rate of the three methods (SVD-LTSA, JADE, and NKJADE) was nearly the same (100%), but in case II, the accuracy rate of the three methods was very different.
- 3.
- The NKJADE method can extract the multi-sensor fusion features effectively. The data from hunting monitoring of high-speed trains were used to verify the validity of the method in multi-sensor conditions.
Author Contributions
Funding
Conflicts of Interest
References
- De Pater, A.D. The approximate determination of the hunting movement of a railway vehicle by aid of the method of krylov and bogoljubow. Appl. Sci. Res. 1961, 10, 205–228. [Google Scholar] [CrossRef]
- Yao, J.; Sun, L.; Hou, F. Study on evaluation methods for lateral stability of high-speed trains. J. China Railway Sci. 2012, 33, 132–139. [Google Scholar]
- Chu, F.; Peng, Z.; Feng, Z. Modern Signal Processing Methods in Machinery Fault Diagnosis; Science Press: Beijing, China, 2009. [Google Scholar]
- Guo, K.; Zhu, Y.; San, Y. Analog circuit fault diagnosis using LDA and OAOSVM approach. Adv. Mater. Res. 2012, 490, 1130–1134. [Google Scholar] [CrossRef]
- Park, W.; Lee, S.; Joo, W.; Song, J. A mixed algorithm of PCA and LDA for fault diagnosis of induction motor. In Advanced Intelligent Computing Theories and Applications; Springer: Berlin/Heidelberg, Germany, 2007; pp. 934–942. [Google Scholar]
- Moura, E.; Souto, C.; Silva, A.; Irmao, M. Evaluation of principal component analysis and neural network performance for bearing fault diagnosis from vibration signal processed by RS and DF analyses. Mech. Syst. Signal Process. 2011, 5, 1765–1772. [Google Scholar] [CrossRef]
- He, Q.; Ding, X.; Pan, Y. Machine fault classification based on local discriminant bases and locality preserving projections. Math. Probl. Eng. 2014, 5, 1–12. [Google Scholar] [CrossRef] [Green Version]
- He, Q. Vibration signal classification by wavelet packet energy flow manifold learning. J. Sound Vib. 2013, 7, 1881–1894. [Google Scholar] [CrossRef]
- Hettiarachchi, R.; Peters, J.F. Multi-manifold LLE learning in pattern recognition. Pattern Recognit. 2015, 48, 2947–2960. [Google Scholar] [CrossRef]
- Bu, Y.; Chen, F.; Pan, J. Stellar spectral subclasses classification based on Isomap and SVM. New Astron. 2014, 28, 35–43. [Google Scholar] [CrossRef]
- Sun, W.; Halevy, A.; Benedetto, J.J.; Czaja, W.; Li, W.; Liu, C.; Shi, B.; Wang, R. Nonlinear dimensionality reduction via the ENH-LTSA method for hyperspectral image classification. IEEE J. Sel. Top. Appl. Earth Obs. Remote Sens. 2014, 7, 375–388. [Google Scholar] [CrossRef]
- Cardoso, J. High-order contrasts for independent component analysis. Neural Comput. 1999, 1, 158–191. [Google Scholar] [CrossRef]
- Cao, S.; Ouyang, H. Multi-damage identification based on joint approximate diagonalization and robust distance measure. J. Phys. Conf. Ser. 2017, 842, 012022. [Google Scholar] [CrossRef]
- Liu, F.; Liu, Y.; Chen, F.; He, B. Residual life prediction for ball bearings based on joint approximate diagonalization of eigen-matrices and extreme learning machine. Proc. Inst. Mech. Eng. Part C J. Mech. Eng. Sci. 2017, 9, 1699–1711. [Google Scholar] [CrossRef]
- Liu, Y.; He, B.; Liu, F. Feature fusion using kernel joint approximate diagonalization of eigen-matrices for rolling bearing fault identification. J. Sound Vib. 2016, 385, 389–401. [Google Scholar] [CrossRef]
- Wu, T.; Liu, C.C.; He, C. “Fault Diagnosis of Bearings Based on KJADE and VNWOA-LSSVM Algorithm”. Math. Probl. Eng. 2019, 14, 1–19. [Google Scholar] [CrossRef] [Green Version]
- Liu, F.; Li, L.; Liu, Y.; Cao, Z.; Yang, H.; Lu, S. HKF-SVR Optimized by Krill Herd Algorithm for Coaxial Bearings Performance Degradation Prediction. Sensors 2020, 20, 660. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Ning, J.; Liu, Q.; Ouyang, H. A multi-sensor fusion framework for detecting small amplitude hunting of high-speed trains. J. Vib. Control 2018, 17, 3797–3808. [Google Scholar] [CrossRef]
- Europeenne, British Standard Norme. Testing ans Approval of Railway Vehicles from the Point of View of Their Dynamic Behavior-Safety-Track Fatigue-Ride Quality; UIC Code 518; International Union of Railways: Paris, France, 2005. [Google Scholar]
- Czech Institute for Normalisation. EN14363, B.S. Railway Applications-Testing for the Acceptance of Running Characteristics of Railway Vehicles-Testing of Running Behaviour and Stationary Tests; Czech Institute for Normalisation: London, UK, 2016. [Google Scholar]
- TSI; HSRST. Technical Specification for Interoperability Relating to the ‘Rolling Stock’Sub-System of the Trans-European High-Speed Rail System. Off. J. Eur. Union L 2008, 25, 22–282. [Google Scholar]
- Federal Railroad Administration. Vehicle/Track Interaction Safety Standards, High-Speed and High Cant Deficiency Operations; National Archives and Records Administration: College Park, MD, USA, 2013.
- Ning, J. Feature recognition of small amplitude hunting signals based on the MPE-LTSA in high-speed trains. Measurement 2019, 131, 452–460. [Google Scholar] [CrossRef]
- Miettinen, J.; Nordhausen, K.; Taskinen, S. Blind source separation based on joint diagonalization in R: The packages JADE and BSSasymp. J. Stat. Softw. 2017, 76, 1–31. [Google Scholar] [CrossRef] [Green Version]
- Ding, X.; He, Q.; Luo, N. A fusion feature and its improvement based on locality preserving projections for rolling element bearing fault classification. J. Sound Vib. 2015, 335, 367–383. [Google Scholar] [CrossRef]
- Ye, Y.; Ning, J. Small Amplitude Hunting Instability of High-speed Train Diagnosis Method Based on Modified Ensemble Empirical Mode Decomposition, Shannon Entropy and Least Square Support Vector Machine. In Proceedings of the 2016 4th International Conference on Mechanical Materials and Manufacturing Engineering, Wuhan, China, 15–16 October 2016; Atlantis Press: Paris, France, 2016. [Google Scholar]
- Luo, B.; Wang, H.; Liu, H.; Li, B.; Peng, F. Early fault detection of machine tools based on deep learning and dynamic identification. IEEE Trans. Ind. Electron. 2018, 66, 509–518. [Google Scholar] [CrossRef]
- Wang, J.; Gao, R. Integration of EEMD and ICA for wind turbine gearbox diagnosis. Wind Energy 2014, 5, 757–773. [Google Scholar] [CrossRef]
- Cheng, C.; Peng, Z.; Dong, X.; Zhang, W.; Meng, G. A novel damage detection approach by using Volterra kernel functions based analysis. J. Frankl. Inst. 2015, 8, 3098–3112. [Google Scholar] [CrossRef]
- Hoffmann, H. Kernel PCA for novelty detection. Pattern Recognit. 2007, 3, 863–874. [Google Scholar] [CrossRef]
- He, Q. Time-frequency manifold for nonlinear feature extraction in machinery fault diagnosis. Mech. Syst. Signal Process. 2013, 35, 200–218. [Google Scholar] [CrossRef]
- Zhang, S. Research on Methods of Machinery Condition Recognition Based on Manifold Learning; Southwest Jiaotong University: Chengdu, China, 2014. [Google Scholar]
- Dong, H. Study on Stability and Bifurcation Types of Railway Vehicles; Southwest Jiaotong University: Chengdu, China, 2014. [Google Scholar]
- TB/T3188-2007, Technical Specification for Railway Car Safety Monitor and Diagnosis; China Academy of Railway Sciences Locomotive and Car and Research Institute: Beijing, China, 2007.
- TB 10761, Ministry of Railways of the People’s Republic of China, Technical Regulations for Dynamic Acceptance for High-Speed Railways Construction; China Academy of Railway Sciences Locomotive and Car and Research Institute: Beijing, China, 2013.
- Ning, J.; Lin, J.; Zhang, B. Time-frequency processing of track irregularities in high-speed train. Mech. Syst. Signal Process. 2016, 66, 339–348. [Google Scholar] [CrossRef]
- Madiena, C. Color and vector flow imaging in Parallel Ultrasound with Sub-Nyquist sampling. IEEE Trans. Ultrason. Ferroelectr. Freq. Control 2018, 5, 795–802. [Google Scholar] [CrossRef]
- Bruni, S.; Vinolas, J.; Berg, M. Modelling of suspension components in a railvehicle dynamics context. Veh. Syst. Dyn. 2011, 49, 1021–1072. [Google Scholar] [CrossRef]
- Wen, Z.F.; Jin, X.S. Effects of lateral deformations of wheelset/track on creepforces of wheel/rail. J. Mech. Strength 2002, 24, 383–387. [Google Scholar]
Datasets | Class | Number of Training Samples | Number of Testing Samples | Label |
---|---|---|---|---|
Dataset A | Inner race, 0.07” | 70 | 30 | 1 |
Inner race, 0.14” | 70 | 30 | 2 | |
Inner race, 0.21” | 70 | 30 | 3 | |
Dataset B | Inner race, 0.07” | 70 | 30 | 1 |
Ball, 0.07” | 70 | 30 | 4 | |
Outer Race, 0.07” | 70 | 30 | 5 |
Method | EEMD-SVD-LTSA | EEMD-JADE | EEMD-NKJADE |
---|---|---|---|
Accuracy (%) | 98.33 | 98.89 | 100 |
J | 36.26 | 39.24 | 43.91 |
Time (s) | 1.7593 | 0.7820 | 1.0070 |
Method | EEMD-SVD-LTSA | EEMD-JADE | EEMD-NKJADE |
---|---|---|---|
Accuracy (%) | 100 | 98.89 | 100 |
J | 1.195 × 1024 | 47.96 | 87.96 |
Time (s) | 1.5513 | 0.7190 | 0.9650 |
Sensors | Only S1 | Only S2 | Only S3 | S1, S2 and S3 |
---|---|---|---|---|
J | 65.6 | 61.1 | 21.1 | 155.7 |
Accuracy (%) | 97.23 | 96.54 | 29.85 | 100 |
Run Time (s) | 0.0392 | 0.0415 | 0.0387 | 0.1293 |
Method | EEMD-SVD-LTSA | EEMD-JADE | EEMD-NKJADE |
---|---|---|---|
J | 52 | 26.67 | 155.7 |
Accuracy (%) | 93.75 | 30.12 | 100 |
Run time (s) | 0.9972 | 0.1216 | 0.1298 |
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Ning, J.; Fang, M.; Ran, W.; Chen, C.; Li, Y. Rapid Multi-Sensor Feature Fusion Based on Non-Stationary Kernel JADE for the Small-Amplitude Hunting Monitoring of High-Speed Trains. Sensors 2020, 20, 3457. https://doi.org/10.3390/s20123457
Ning J, Fang M, Ran W, Chen C, Li Y. Rapid Multi-Sensor Feature Fusion Based on Non-Stationary Kernel JADE for the Small-Amplitude Hunting Monitoring of High-Speed Trains. Sensors. 2020; 20(12):3457. https://doi.org/10.3390/s20123457
Chicago/Turabian StyleNing, Jing, Mingkuan Fang, Wei Ran, Chunjun Chen, and Yanping Li. 2020. "Rapid Multi-Sensor Feature Fusion Based on Non-Stationary Kernel JADE for the Small-Amplitude Hunting Monitoring of High-Speed Trains" Sensors 20, no. 12: 3457. https://doi.org/10.3390/s20123457
APA StyleNing, J., Fang, M., Ran, W., Chen, C., & Li, Y. (2020). Rapid Multi-Sensor Feature Fusion Based on Non-Stationary Kernel JADE for the Small-Amplitude Hunting Monitoring of High-Speed Trains. Sensors, 20(12), 3457. https://doi.org/10.3390/s20123457