Non-Contact Measurement and Identification Method of Large Flexible Space Structures in Low Characteristic Scenes
Abstract
:1. Introduction
2. Structural Dynamics Modeling Analysis of Flexible Solar Wing
3. On Orbit Measurement Scheme Design and Test Process
4. Feature Point Identification and Measurement Based on the Comprehensive Matching Parameter
4.1. The Concept and Connotation of Comprehensive Matching Parameter
4.2. Feature Enhancement and Extraction for the Low Comprehensive Matching Parameter Scenes
4.2.1. Stable Extraction of Repetitive Features
4.2.2. Characteristic Enhancement
4.3. Robust Matching and Tracking Method of Feature Points
4.3.1. Relative Position Relationship Descriptors
4.3.2. Evaluation of Matching Effect
5. Modal Identification Algorithms
- 1.
- The cross-correlation analysis of the vibration response output signal is carried out to obtain the time series of cross-correlation function enhanced by modal information. The cross-correlation function of observation points and can be expressed in the form of Equation (31).
- 2.
- The generalized Hankel matrix constructed from this time series is shown in Equation (33), and the and in the generalized Hankel matrix are extracted.
- 3.
- Considering that the CVA weighted processing method is highly resistant to noise, the SVD decomposition of the matrix after weighting processing is performed to obtain the system observability matrix. The singular value decomposition of can be obtained as follows:
- 4.
- The least squares method is used to extract the system matrix of the state space model. Introducing , the system matrix of the system state space model is derived as follows:
- 5.
- The information of the modal parameters is extracted from the system matrix. Based on the solutions of vibration theory and state equation, the order modal frequency , damping ratio , mode matrix and amplitude matrix of the system are obtained based on the ERA method as follows:Based on the SSI method, the order modal frequency , damping ratio , and the vibration matrix of the system are obtained as follows:
- 6.
- The modal amplitude coherence coefficient (MAC) and modal singular value (MSV) criteria are used to distinguish the real and false modes.
6. Experimental Verification of Modal Identification of Flexible Satellite Appendages
6.1. Mathematical Simulation
6.2. Ground Test
6.2.1. Relevant Parameters of the Ground Test
6.2.2. Results of Ground Tests
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Camera Pixel Size | Camera Sensor | Spectrum | Exposure Time | Lens Focal Length | Lens Aperture |
---|---|---|---|---|---|
3.45 × 3.45 | 1.1 inches, Global Shutter | Mono | 3 | 16 | 6 |
Camera | ||||
---|---|---|---|---|
Left eye | 4703.986588930 | 4703.111975069 | 2079.232347048 | 1475.465152926 |
Right eye | 4725.708015617 | 4723.713940567 | 2052.554124594 | 1490.440881834 |
Before Enhanced Features | After Enhanced Features | |
---|---|---|
Scene characterization | 0.4665 | 0.9091 |
Total Points | Detected Points | Correct Matching Points | ||
---|---|---|---|---|
SIFT algorithm | 306 | 14 | 8 | 0.5499 |
SuperGlue algorithm | 306 | 18 | 16 | 0.8631 |
Methods in this paper | 306 | 3 | 3 | 0.8389 |
SIFT algorithm | 0.4665 | 0.5499 | 0.5048 |
SuperGlue algorithm | 0.4665 | 0.8631 | 0.6057 |
Methods in this paper | 0.9091 | 0.8389 | 0.8726 |
Order | Theoretical Value/ | Identification Value/ | Error |
---|---|---|---|
1, 2 | 0.7364 (High precision solutions) | 0.73478 (Experimental protocol of this paper) | 2.82% (Experimental protocol of this paper) |
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Cheng, T.; Jiao, X.; Zhang, Z.; Bi, Q.; Wei, C. Non-Contact Measurement and Identification Method of Large Flexible Space Structures in Low Characteristic Scenes. Sensors 2023, 23, 1878. https://doi.org/10.3390/s23041878
Cheng T, Jiao X, Zhang Z, Bi Q, Wei C. Non-Contact Measurement and Identification Method of Large Flexible Space Structures in Low Characteristic Scenes. Sensors. 2023; 23(4):1878. https://doi.org/10.3390/s23041878
Chicago/Turabian StyleCheng, Tianming, Xiaolei Jiao, Zeming Zhang, Qiang Bi, and Cheng Wei. 2023. "Non-Contact Measurement and Identification Method of Large Flexible Space Structures in Low Characteristic Scenes" Sensors 23, no. 4: 1878. https://doi.org/10.3390/s23041878
APA StyleCheng, T., Jiao, X., Zhang, Z., Bi, Q., & Wei, C. (2023). Non-Contact Measurement and Identification Method of Large Flexible Space Structures in Low Characteristic Scenes. Sensors, 23(4), 1878. https://doi.org/10.3390/s23041878